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IoT innovation clusters in Europe and the case for public policy

Published online by Cambridge University Press:  11 October 2021

Luca Alessandro Remotti*
Affiliation:
IT and Digital Transformation Department, Data Power Srl, Cagliari, Italy
*
*Corresponding author. E-mail: [email protected]

Abstract

The Internet of Things (IoT) is currently developing fast and its potential as driver of innovative solutions is increasing, pushed by technologies, networks, communication, and computing power, and has the potential to drive the development of technological ecosystems, such as innovation clusters. Innovation clusters are agglomeration of enterprises and research organizations, which cooperate, interact and compete, generating innovation and driving the growth of ecosystems. The narrative around innovation clusters has been developing since many years and policy-makers seek to use such clusters as a policy instrument to support the growth of technology on the one hand and regional and sectoral development on the other hand. This policy paper expands an empirical study on IoT innovation clusters in Europe and places it within the current debate around clusters and innovation clusters to provide evidence-based advice to policy-makers on what may and may not work as public policy measures. The paper highlights the findings of the interaction with several hundred European IoT innovation clusters and points out their points of view on their own creation factors, operational characteristics, and success stories, as well as their expectations in respect to policy interventions for IoT and for clusters. Suggestions for IoT policy-making are provided. The paper has also undertaken an extensive review of up-to date research on innovation cluster creation and performance, thoroughly analyzing the real possibility to define causal relationships between clusters, productivity and economic growth, and business performance, and providing suggestions for policy-makers on the approach to cluster policy.

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2021. Published by Cambridge University Press

Policy Significance Statement

This research is significant for policy-makers since it provides a detailed insight on the ecosystem of IoT innovation clusters in Europe, on their factors of establishment, development, and success. It provides input to policy measures both for cluster support and for IoT development, basing it on extensive data collection through surveys and case study interviews. The study research was designed to capture and structure the input of cluster members and IoT players, who have clearly stated their priorities in respect to policy measures and soft policy actions. These inputs have been matched with relevant research papers analyzing the impacts of public policies on cluster formation and development and the achievable wider economic, industrial, employment, and societal impacts.

1. Introduction

This policy paper combines the findings of an extensive, multimethodology empirical policy study carried out on behalf of the European CommissionFootnote 1 and targeting European Union Internet of Things (EU IoT) innovation clusters, with the most significant outcomes of the current debate around clusters to provide a concrete assessment of ways forward in cluster-related policy-making. The study explored drivers of creation and development of IoT clusters, their processes and dynamics, patterns of operations, and technological development, the policy priorities of clusters expectations.

2. IoT, Security Challenges, and 5G Connectivity

The accelerating development of the IoT is regarded as one of the major breakthroughs in Information and Communication Technologies (ICT) and considered a key enabler for technological solutions for society, citizens, enterprises and governments, and taking advantage of Big Data and Machine Learning techniques (Pang, Reference Pang2013). It is defined as “sensors and actuators connected by networks to computing systems,” in principle excluding intentional human input (Manyika et al., Reference Manyika, Chui, Bisson, Woetzel, Dobbs, Bughin and Aharon2015). These systems can monitor or manage the status, functionality and actions of connected objects and machines and have the potential to radically change the way physical objects are embedded in and interact with their environment, taking advantage of data-driven decision making.

McKinsey Global Institute estimates a potential economic impact—including consumer surplus—of as much as $11.1 trillion per year in 2025 for IoT applications in nine settings. The value created is heavily based on the interoperability between IoT systems and business-to-business (B2B) applications that can create more value than pure consumer applications. To realize the full potential from IoT applications, technology will need to continue to evolve, providing lower costs and more robust data analytics.

Ebersold confirms that the combined capabilities of IPv6 and parallel computing support the efficient and effective connection of 50–100 trillion objects. Both technologies provide the infrastructural support to monitor and activate connected devicesmaking the IoT a powerful enabler of “a cyber-physical system that connects computational processes and the physical world.” Furthermore, uniting the physical and digital worlds has implications on organizational procedures, security and privacy of bodies and institutions that are developing IoT-based services and processes (Ebersold and Glass, Reference Ebersold and Glass2015). The increased IoT security challenges are due to the ubiquitous nature of IoT systems and to the requirements on functionalities to be put in place (Mahmoud et al., Reference Mahmoud, Yousuf, Aloul and Zualkernan2015). The physical boundaries of enterprises and systems are disappearing, creating an open environment and a potentially limitless risk landscape (He et al., Reference He, Maple, Watson, Tiwari, Mehnen, Jin and Gabrys2016).

5G is boosting the potential for IoT applications (Li et al., Reference Li, Da Xu and Zhao2018), further enabling responses to increasing numbers of connections, connected nodes, bandwidth, mass of data, security, and new standards and more complicated communication, device computational capabilities, driving the shift of IoT from infrastructure-driven to business-driven IoT applications. “The fast take up and roll-out of 5G communications represents a potentially disruptive element in such a context. The increased data rate, reduced end-to-end latency, and improved coverage hold the potential to cater for even the most demanding of IoT applications in terms of communication requirements” (Palattella et al., Reference Palattella, Dohler, Grieco, Rizzo, Torsner, Engel and Ladid2016; Akpakwu et al., Reference Akpakwu, Silva, Hancke and Abu-Mahfouz2017).

IoT systems raise questions about data security and privacy and in most organizations, taking advantage of the IoT opportunity will require leaders to truly embrace data-driven decision making. Kaska et al. (Reference Kaska, Beckvard and Minarik2019) have discussed the role of Huawei as a product of the Chinese national policy of technological superiority and as a global market leader in supplying 5G technologies. Chinese technology companies have grown to global market power and Huawei is exemplary of the country’s technology policy: it is the largest global telecoms equipment manufacturer and the only player that can supply all the elements of a 5G network. In fact there has been no public evidence of significant vulnerabilities in Huawei technology and the authors recommend a coordinated response by governments to adopt a nuanced risk awareness and risk management approach. In their discussion, Kaska et al. (Reference Kaska, Beckvard and Minarik2019) recommend a graduated approach, as the one taken in some countries, where transparent oversight was guaranteed with through the establishment of a cooperation base.

3. Innovation Clusters

With respect to clusters, scholars have early on recognized the natural tendency of enterprises to aggregate (Porter, Reference Porter1998), and how value chain integration and cooperative innovation in clusters lead to  productivity gains and individual and aggregate competitive advantage through the productivity gains achieved. In communities with strong inter-personal relationships innovative activities are particularly favored and fact that economic and innovation activities are embedded in social activities makes them more successful and sustainable. Porter (Reference Porter2000) and Porter (Reference Porter1998b) specifies that “Clusters are geographic concentrations of interconnected companies and institutions in a particular field. Clusters encompass an array of linked industries and other entities important to competition. They include, for example, suppliers of specialized inputs such as components, machinery, and services, and providers of specialized infrastructure. Clusters also often extend downstream to channels and customers and laterally to manufacturers of complementary products and to companies in industries related by skills, technologies, or common inputs. Finally, many clusters include governmental and other institutions – such as universities, standards-setting agencies, think tanks, vocational training providers, and trade associations – that provide specialized training, education, information, research, and technical support.” Clusters appear to facilitate self-reinforcing processes of innovation and growth (Capello, Reference Capello1999) and through physical proximity spur virtuous interactions and enable collective learning mechanisms (Melachroinos and Spence, Reference Melachroinos and Spence2001; Storper and Venables, Reference Storper and Venables2004). According to Krugman and Venables (Reference Krugman and Venables1996) imperfectly competitive industries need intermediates to determine the creation of cost and demand linkages between firms and are conducive to industrial agglomeration, which is strongly influenced by economies of scale, by transport costs and trade barriers. Ellison and Glaeser (Reference Ellison and Glaeser1997) confirm that firms’ location decisions are highly sensitive to cost differences and that geographic concentration may largely be due to natural advantages (Ellison and Glaeser, Reference Ellison and Glaeser1999).

Classic Marshallian districts show the tendencies to agglomerate and cooperate and compete at the same time, depending on the activity.

The motivations and factors which determine the location of innovative industries and their clusters are highly variable (Moretti, Reference Moretti2012): in specific places and thick labor markets; specialized service providers; and knowledge spill overs keep the ecosystem together. It is observed that Venture Capitalists are still very local and they only consider financing companies that are located close to monitor and track their activities closely.

Innovative companies seek knowledge spill overs and they want to be close to their competitors to generate informal learning opportunities (Moretti, Reference Moretti2012). The proximity factor is also very important for scientists and inventors, for the same knowledge-related reason.

Clusters are very effective in supporting businesses sectors and ecosystems, in particular small and medium-sized enterprises (SMEs) and start-ups. They are also considered one of the key pillars of regional competitiveness, even if the measurement of their impacts and outcomes is prone to selection biases and sensitivity of definitions (van Oort and Thissen in Huggins and Thompson, Reference Huggins and Thompson2017). Clustering is not sufficient, since “while organisations may benefit from local knowledge spill overs … they may also need to consciously build non local ‘pipelines’ to tap int knowledge from outside the region”, competing “in an environment that is simultaneously local and global.” A growing base of evidence confirms that knowledge is increasingly flowing across geographic clusters, generating heightened global knowledge connectivity, and that networks and clusters need to keep abreast of knowledge emerging outside their respective regions not to run the risk of becoming inflexible and outdated (Huggins and Thompson, Reference Huggins and Thompson2017).

This policy paper combines empirical, multimethodology research on IoT innovation clusters with the existing research on the agglomeration economy and business ecosystem studies. It presents an overview of the main IoT market trends, of the main IoT development domains, and on the location of main IoT innovation clusters in Europe (Section 1); the methods and classifications used for the research work (Section 2); the results of the analysis of IoT innovation clusters in Europe, their geographical distribution and the results of the surveying and case studies, challenges and drivers of operations, enabling factors, and success factors. The EU policy framework (Section 3); the discussion of results, including an overview and a review of cluster and cluster policy impacts (Section 5) and the conclusions of the study work (Section 6).

4. Background and Literature Review

4.1. IoT market trends

The worldwide spending on IoT is expected to reach $772 billion by end of 2018 with a compound annual growth rate (CAGR) of 14.4% through the 2017–2021 period (International Data Corporation - IDC, 2017Footnote 2).

The analysis of the Total Addressable Market database by Transforma InsightsFootnote 3 indicates that at the end of 2019 there were 7.6 billion active IoT devices, to increase to 24.1 billion in 2030, a CAGR of 11%.

The International Data Corporation (IDC) confirms that world-wide spending on IoT has been significantly impacted by the effects of the COVID-19 pandemic in 2020, although a back to double-digit growth rebound is expected. The IDC update expects IoT spending to grow 8.2% year over year to $742 billion in 2020 down from 14.9% growth forecast in November 2019 and global IoT spending is expected to return to double-digit growth rates in 2021 with a compound annual growth rate (CAGR) of 11.3% between 2020 and 2024.

In 2019, the total IoT market was worth US$465 billion, which will rise to US$1.5 trillion in 2030. Services, including connectivity, will account for 66% of investment.Footnote 4

With 41.6 billion of connected IoT devices, and 79.4 zettabytes (ZB) of data by 2025,Footnote 5 IoT systems will be a major producer and consumer of data creating complex systems and critical infrastructure (energy, communications, mobility, and healthcare), with zero network latency, location awareness, immediate real-time insights,Footnote 6 bandwidth, and lower operational costs.Footnote 7

Statista shows the distribution of software developers for IoT with the highest incidence of custom system integrators and commercial independent software vendors rather than of providers of fully integrated solutions and systems (Figure 1).

Figure 1. Software developers for connected Internet of Things (IoT) devices, by segment (2016).

4.2. Agglomeration economies and IoT innovation clusters

Industry clusters were originally discussed by Porter (Reference Porter1998a) in “The Competitive Advantage of Nations” and refer back to the underlying concept of agglomeration economies developed by Alfred Marshall in the early years of the twentieth century.

Porter affirms that cluster membership can generate individual and aggregate competitive advantage through productivity gains achieved through value chain integration and cooperative innovation. The strong inter-personal relationships are a driver of innovative activities embedding economic and innovation in social activities.

Russell and Smorodinskaya (Reference Russell and Smorodinskaya2018) consider innovation clusters as a sophisticated subvariety of innovation ecosystems, which rely on the agility of network relationships and the collaborative, nonhierarchic models of governance conducive to self-adaptability to change (Capello, Reference Capello1999). They favor the creation of technological critical mass, relationships, opportunities, and economies of scale through self-reinforcing processes of innovation and growth (Capello, Reference Capello1999) and collective learning mechanisms (Melachroinos and Spence, Reference Melachroinos and Spence2001; Storper and Venables, Reference Storper and Venables2004).

“Innovations are the output of a knowledge creation process that is derived by the exchange of tacit and explicit knowledge,” but cause–effect relationships, what determines which results and outcomes are variable (Ibrahim and Fallah, Reference Ibrahim and Fallah2005).

The location of innovative activities is a conscious strategic decision of corporate executives (Ibrahim and Fallah, Reference Ibrahim and Fallah2005). They assess the value of locating in a technological cluster and assess how these settings can be beneficial to the structuring of R&D and innovation activities impacting on competitiveness. Merely by moving into a high-tech cluster a firm in effect becomes “larger,” because it can draw on specialized local expertise of the ecosystem, business services, and venture capitalists (Moretti, Reference Moretti2012). Ferras-Hernandez and Nylund (Reference Ferras-Hernandez and Nylund2019) confirm that “innovation in innovation clusters is accelerated by the combined and multiplying action of several strengths which mutually reinforce each other.” They propose that such accelerators are based on attraction, anticipation, rivalry, information, and interaction.

However, there is no theoretical framework that explains why the inclusion of a firm in a cluster enhances its innovativeness and Ibrahim and Fallah confirm that, even if firms in clusters have a higher innovative output, not much is known about the mechanisms of this relationship, even if belonging to a cluster is beneficial for a company (Porter, Reference Porter1998b; Porter, Reference Porter2000; Moretti, Reference Moretti2012; Andrienko, Reference Andrienko2021).

4.3. EU IoT policies

The EU places the IoT among the high priorities of the digital single market. IoT is targeted by a number of horizontal policies: data protection, cybersecurity (Commission Staff Working Document, 2016a). The IoT merges physical and virtual worlds, creating smart environments and the European Commission actively cooperates with industry, organizations, and academic institutions in order to unleash the potential of the IoT technology across EU Member States and beyond (Commission Staff Working Document, 2016b). A potential obstacle for the achievement of a single market for the IoT is the capacity to handle a large diversity and very large volumes of connected devices and the need to securely identify them and be able to discover them so that they can be plugged into IoT systems (Commission Staff Working Document, 2020).

The EU appears to concentrate its efforts to support of concrete IoT Research and Innovation actions funded under Horizon 2020 or Horizon Europe.Footnote 8 The programs support the development of advanced platform architectures for smart objects, embedded intelligence, and smart networks. Projects develop and validate innovative platform technologies and foster technology adoption through community- and business-building while creating at the same time a new vibrant IoT ecosystem. The European Commission has been working intensively on developing the right European IoT ecosystem together with key stakeholders and has launched a specific cluster of specific R&D projects to tackle the issues of security and privacy and to foster trust in IoT solutions.

5. Methods, Classifications, and Taxonomies

The IoT innovation cluster study used an integrated set of qualitative and quantitative analytical approaches: (a) desk analysis of literature and databases and webscraping work providing data on scale and location of IoT innovation clusters in Europe; (b) a full-target direct survey of EU clusters; (c) a survey of businesses, research organizations, academic establishments, and public bodies engaged in IoT development; (d) 20 IoT cluster case studies, targeting each at least five of their membersFootnote 9; and (e) overall policy analysis for a synthesis and to elaborate practical recommendations for IoT development and cluster sustainability.

For the study in-depth, semi-structured interviews were conducted with managers from the six participating clusters. We also interviewed the managers of four other clusters (which did not participate in the main study) to gain a better understanding of the research context.

For the overall consistency of our approach three taxonomies used in the industry were adopted to conceptually guide the research questions: the quantitative and qualitative characterization of the IoT cluster ecosystem; drivers and enablers; critical success factors; and the contextual framework of development and operations and IoT technologies.

  1. 1. A classification of clusters:

    • - Technological communities, created around a specific technology.

    • - Research-driven clusters, which involve players around a research venture.

    • - Integration of ICT players and test-beds, originated from the need of enterprises to cooperate with user communities.

    • - Sector/industry-specific clusters, to address the needs of specific industrial areas.

    • - ICT cluster for sectoral development in a region, to boost the development and growth.

    • - Industrial districts in the classic conception of Marshall and Porter: physical places where firms and workers specialized in a main industry or value chain,Footnote 10 work and develop.

  2. 2. IoT application areas are those fields in society, economy, and technology where IoT applications are integrated and deployed:

    • - Smart Living: implementations in the close environment for operation of devices.

    • - Smart Cities, using sensors and actuators embedded in technological solutions to improve the management of the urban environment.

    • - Smart Industry, implementing a ICT-driven network-centric approach for a high degree of flexibility in production, and to fine tune to customer needsFootnote 11;

    • - Smart Environment, centered on the use of Green Computing and IT to develop intelligent systems for the optimization of natural resources and to protect the environment: Smart Forestry, Mining, Farming, and Food production.

    • - Smart Energy Systems for optimized achievable and affordable energy solutions.Footnote 12

  3. 3. IoT enabling technologies, the building blocks of internet of things implementations:

    • - Authentication and Security, for system integrity and availability.Footnote 13

    • - Artificial Intelligence and Machine Learning, for smarter actuations.Footnote 14

    • - Sensors: data gathering from the physical environment to be used to perform predefined functions upon specific input. Smart sensorsFootnote 15 enable accurate automated collection of environmental data for monitoring and control mechanisms in a wide variety of environments.Footnote 16 Wearables specifically refer to enabling human-related actions.Footnote 17

    • - IoT Platforms and Middleware: hardware and software components to support IoT systems.Footnote 18

    • - Broadband and Communications: high-capacity transmission, enabling an massive number of simultaneous messages. It represents the vital horizontal layer of the IoT implementation. The fast take up and roll-out of 5G will further boost the development of IoT.Footnote 19

5.1. The survey and the case study guidelines

The online survey was designed on the basis of the research framework and questions, which secured the consistency of the researched themes and the complementarity of the responses. The survey had the purpose to explore the following aspects of clusters and their IoT and innovation activities: basic information on the cluster; establishment of the cluster; organizational information; key IoT challenges and opportunities: 5-year forecast; application domains and enabling technologies; cluster membership and cluster association; cluster fostering and hampering factors; cluster policy needs; cluster’s development; cluster’s composition; the main fostering and hampering factors of IoT development; services and infrastructures offered within the cluster; cluster’s policy needs; and broader IoT Policy needs.

The case studies were designed using the research framework and questions to further explore and to gather additional explanatory information on survey outcomes, discussing the topics: basic information on the cluster; establishment of the cluster; cluster’s development; cluster’s composition; the main fostering and hampering factors to IoT cluster operation and development; services and infrastructures offered within the cluster; outcomes and impacts; cluster’s policy needs; IoT policy needs; and overall assessment.

5.2. Overview of results of the field research

The desk research had identified 389 EU IoT innovation clusters and, associated to them, about 12,000 cluster member companies. In fact, it is mostly impossible to separate IoT-specific data from the more general ICT data, IoT-dedicated personnel and general ICT staff, IoT-specific R&D investment, since no separate records are usually kept.

The direct survey was one of the sources of cluster data to build a large database of diversified IoT innovation clusters in the 28 European Member States. It targeted about 22 clusters, with 1169 participating IoT players, partly overlapping with those included in the desk research. Table 1 shows the stratification of respondents to the direct survey, which targeted the total universe of potential IoT industrial actors.

Table 1. Survey respondents by type declaring cluster membership

RTOs, research and technology organizations.

Source: IoT Innovation Cluster Study.Footnote 20

The overall sample of this survey was 3,686 bodies, split between businesses, research and technology organizations (RTOs), and Academia. The survey yielded a response of 1169 questionnaires, stratified as follows:

Over 40% of survey participants declared the affiliation with a cluster and confirms that businesses tend to agglomerate with other innovative firms and into dynamic and fast-developing ecosystems with thick talent markets and a rich service offering, as confirmed by Moretti (Reference Moretti2012).Footnote 21

6. The Analysis of IoT Innovation Clusters

Each section of this paragraph provides information and findings about the research undertaken, touching upon their different characteristics, behaviors, and dynamics.

6.1. The geographical distribution

The cluster landscape in Europe is constantly developing, the present mapping provides a picture at a given time and IoT cluster numbers and locations are expected to change. Figure 2 shows the distribution of clusters in 26 EU Member States that have at least one clusters. Reasons for such distribution may be relate to public policy for industry and research and innovation, regional policies, EU policies, characteristics of industry, and so on.

Figure 2. Cluster and cluster types per country.

Source: IoT Innovation Cluster Study.Footnote 22

The full list of clusters reviewed in this study is in the annex.

6.2. Drivers for the establishment of innovation clusters

The surveys identified the mainstream trends while the interviews gathered additional explanatory details defined the fundamental drivers of the set-up of innovation clusters. Often the creation IoT innovation clusters is the response to industrial and sectoral crises, of that large enterprises or in response to more general economic downturns, other clusters were launched as EU-supported Public Private Partnerships for specific purposes, such as Industry 4.0 and the Future Internet. There are several public policy initiatives for regional, industrial, and innovation support, which launched clusters, demonstrating that strong formal and informal institutions are an important constituent of innovation ecosystems. Policy-makers also put in place soft measures for trust-building and to establish informal institutions facilitating innovation (Speldekamp et al., Reference Speldekamp, Knoben and Saka-Helmhout2020). In fact, the case studies confirm that public bodies are essential stakeholders and contributors, however, they are by no means crucial for the cluster’s financial sustainability (a) because of the unpredictability of funding and (b) because of the fundamental incompatibility of the main current principles of publicly funded project-work with the core operational patterns of innovation clusters.

Clusters believe that applying for project-related funding is not appropriate for clusters because of the potential conflict between the specific objective of the project work and the objectives of the cluster, its mission and life cycle and their relatively short time-frame. Furthermore, in none of the cases studies emerged any expectation to ensure sustainability by means of public program funds.

6.3. Cluster participants and their roles

The IoT innovation cluster case studies determined type and role of actors in and interacting with IoT innovation clusters. Several clusters were initiated and promoted by large multinational companies (LMCs) or large RTOs and universities. Observation shows that the formation of clusters is essentially a “bottom up” process, with some exceptions where cluster creation was supported by national or regional government agencies, which provided resources and the mentioned framework for trust building. Some of the case studies show that large enterprises and RTOs acting as initiators of innovation clusters have in practice “faded out”. In other cases, in particular, some cluster within the Industry 4.0 strategy were merged in a hope to improve sustainability.

6.3.1. Administrations and public institutions

The contribution of public institutions to the mid-term sustainability of clusters is questioned. They are certainly effective connecting the cluster to the region and facilitate the policy discourse and relevant regulations.

These issues associated with public intervention in innovation clusters are confirmed by Duranton (Reference Duranton2011) “First, clustering is not a choice variable that policy-makers can easily manipulate. Second, this intermediate outcome is only weakly related to the final prosperity objectives that local policy-makers should be interested in.” In the same line, Martin and Mayneris (Reference Martin and Mayneris2011) have confirmed that French cluster policies have been unable to reverse the relative decline of total factor productivity in firms targeted by such policies.

6.3.2. SMEs and start-ups

Clusters are considered the natural aggregators and supporters of SMEs and start-ups. Case studies confirm that SMEs are key innovation players and cluster membership strengthens their innovative capabilities, productivity, and competitiveness (Makedos, Reference Makedos2014). There is a significant difference between the innovative capacity of SMEs and that of large enterprises, however, the former have some structural limitations related to their size, as concerns their operational critical mass and financial scale and their capability to absorb knowledge.

The participation in a cluster makes SMEs more effective and successful in fundraising, in absorbing new knowledge and create new potential for value added, leveraging their natural flexibility to be more easily integrated into cluster value chains. Accordingly, scholars emphasize that businesses can self-develop in clusters and cooperate either with one another or with university institutions and research centeres, with the objective aim to grow larger and become international (Porter, Reference Porter1998a).

Desk research of the IoT innovation clusters study delivered relatively little information about the start-ups dynamics. On the contrary, the case studies provided for the interesting experiences of the German VDC clusterFootnote 23 that includes 98 start-ups among the 250 members. The setup of this cluster provides for reduced fees and start-up dedicated programs and activities, while the Finnish FIIF clusterFootnote 24 provides start-ups services free of charge, drawing the resources from the fees of cluster members. Start-ups are particularly dynamic, active, and fragile enterprises and need cluster set-ups that are compatible with their specific structural and operational characteristics and they are normally unable to allocate significant resources to non-core expenditures such as cluster fees.

Literature confirms that start-ups are a key driver of the development of IoT technologies as flexible young companies working on breakthrough innovation and application development and constitute a key factor for accelerating value chain dynamics, as well as key accelerator of innovation, economic growth, and job creation (Calvino et al., Reference Calvino, Criscuolo and Menon2016).

According to the analysis of quantitative data sources, the countries with the highest number of start-ups active in IoT clusters are in the UK, in France, Germany, Spain, and Italy.

6.4. Dynamics of cluster membership and composition

The study has investigated how cluster characteristics changed between 2012 and 2017 and initially focused on the dynamics of cluster membership as emerging from the survey. Table 2 shows the highest increase in the category “RTOs,” enterprise members increased by average 33%, with high peaks for demand aggregators (+120%) and software developers (+48%), while component developers and producers only showed a modest increase. Public sector organizations increased significantly (+113%), as well as universities (+54%).

Table 2. Number of IoT cluster members by type (2012–2017)

Abbreviations: IoT, Internet of Things; RTOs, research and technology organizations.

Source: IoT Innovation Cluster Study.Footnote 25

These survey results show the positive attraction-effect of clusters. This may explain the relatively limited increase of cluster membership in the category “component developers and producers,” in respect to other categories of other ICT businesses.

6.5. Core cluster activities in innovation, services, and infrastructures

The survey results confirm that IoT clusters are essentially business- and technology-oriented service organizations and deliver four main types of services to their members:

  1. 1. Organizational, networking, and market services.

  2. 2. Technical and technological assessment and scouting services for knowledge sharing.

  3. 3. Application services with the specific purpose to develop and integrate and test code.

  4. 4. Other ancillary support services to the technological, innovation, and market process.

The majority of IoT innovation clusters participating in the survey provides technology development and technology integration services to enterprises (Table 3). Less than half of the clusters delivers skills-targeted training and financial services, venture capital, and private equity.

Table 3. Cluster services to IoT firms

Abbreviations: IoT, Internet of Things; VC, venture capital.

Source: IoT Innovation Cluster Study.Footnote 26

Only a limited number of clusters provides services for grant applications, services for start-up mentoring and networking and matchmaking events, confirming that IoT innovation clusters are mainly oriented toward application and development.

With respect to technological infrastructures and cooperation platforms, the majority of IoT innovation clusters have indicated that they provide facilities for technology development and for the integration of technologies, as well as testing facilities, all oriented toward application development (Table 4). Other, nontechnology support facilities are less frequently provided by IoT clusters.

Table 4. Cluster Infrastructures and platforms made available to IoT firms

Abbreviation: IoT, Internet of Things.

Source: IoT Innovation Cluster Study.Footnote 27

The survey checked the IoT technologies in the cluster service offering and its variations between 2012 and 2017 as a proxy for their weight in respect to the market (Table 5).

Table 5. Weight of IoT technologies in the organization offering

Abbreviation: IoT, Internet of Things.

Source: IoT Innovation Cluster Study.Footnote 28

The average weight of the different IoT application domain and their variation in the 5 years previous to the survey was estimated by the innovation clusters taking part in the survey (Table 6).

Table 6. Weight of IoT application domains in the organization offering

Abbreviation: IoT, Internet of Things.

Source: IoT Innovation Cluster Study.Footnote 29

6.6. IoT cluster members’ view on enabling technologies and application domains

The survey included a number of judgmental questions, based on a quantitative scale, to weigh IoT enabling technologies. Cluster members were asked to assign weights to technologies and their changes in the 5 years before 2017, as shown in Table 7 on such changes in weight of IoT enabling technologies. The tables synthesize the opinions expressed by IoT innovation cluster members on the increase of weight of specific enabling technologies in the preceding 5 years coding minuses (−) and pluses (+): the minuses range from very high decrease to decrease, the pluses from increase to very high increase.

Table 7. Change of weight of IoT enabling technologies by actor type

Abbreviations: IoT, Internet of Things; RTOs, research and technology organizations.

Source: IoT Cluster Study.Footnote 30

Following the same approach, the survey targeted the different application domains (Table 8) and inquired about the weights and variations.

Table 8. Change of weight of IoT application domains by actor type

Abbreviations: IoT, Internet of Things; RTOs, research and technology organizations.

Source: IoT Cluster Study.Footnote 31

6.7. IoT Cluster operations: challenges, drivers, and impediments

Innovation clusters and their IoT activities develop in complex environments where contradictory forces may interplay. These dynamics challenge the design of strategies and activities and how value added is created for their heterogenous set of members and stakeholders, with their different needs, and developing them as an innovation community.

One of the main tests for innovation clusters is to balance sustained information sharing with the need to safeguard intellectual property rights and guarantee competition-related confidentiality, building trust, and fostering cooperation among their members. Organizations of different size that are associated to innovation clusters likely operate according to different patterns and rules. Large enterprises leverage their critical mass of research, innovation, and implementation capacity, but require rigid procedures to operate. Small and medium enterprises, and start-ups, on the contrary, have completely different needs and approaches, much less critical mass and a more flexible approach. Cooperation between the different types may require adjustments and harmonization and organizational and strategic tuning, taking into account the even more critical position of start-ups, who often face “tightness” of human, organizational, and financial resources.

Clusters need to have shared processes in place to guarantee and regular strategic orientation performance assessment and operational readjustment.

Surveys provide the answers of respondents on the specific drivers of IoT development in innovation clusters, in (Table 9) they are ranked in decreasing order. Solving data protection and privacy issues and fostering user acceptance are considered the most important drivers, clustering research activities, clustering industrial activities and developing implementation practices are considered the least important drivers.

Table 9. The key drivers to IoT development for all respondents (n = 1,169)

Abbreviation: IoT, Internet of Things.

Source: IoT Innovation Cluster Study.Footnote 32

The balance was computed between the different cluster factors qualified as drivers or impediments, the former compensating the latter (Table 10). Clearly, negative balances show that the relevant factor is considered more a driver than an impediment. It should also be considered that unaddressed drivers are very likely to become impediments.

Table 10. The computed balance of responses on drivers and impediments to IoT development for all respondents (n = 1,169)

Abbreviation: IoT, Internet of Things.

Source: IoT Innovation Cluster Study.Footnote 33

6.8. IoT enabling factors related to the economic and societal ecosystem

The ecosystem factors were discussed in the case studies, where a strong link was established with the general economic and sectoral trends and to the ecosystem they operate in. Table 11 summarizes the inputs of innovation cluster managers and members on what the factors, which affect IoT cluster sustainability and performance.

Table 11. Framework and ecosystem factors and their impact on IoT clusters

Abbreviations: ICT, Information and Communication Technologies; IoT, Internet of Things; IT, information technology.

a The innovation pipeline is the conceptual sequence which links knowledge creation with market application and sales. The sequence is not linear and has all the necessary iterations to ensure the appropriate linking of all the stages with the knowledge transfer process.

Source: IoT Innovation Cluster Study.Footnote 34

Table 11 presents the logical connection between the enabling factors discussed, with its specification and with the assessment of the impact expected on IoT innovation clusters.

Column one describes the enabling factor, column two provides an additional specification of the factors and column three elaborates on the impacts.

6.9. Cluster-specific success factors

The IoT cluster case studies focused on specific success factors, which affect their achievements, the recognition by its users, their ability to develop and their economic sustainability: financing, funding, and economic balance; strategic best practices; operational and management best practices; and technology and application-related best practices.

The variability of innovative performance and cluster could be related to the heterogeneity of cluster life cycles, each one influenced by the triggering factors which intervene in the local system’s genesis and in its evolution-exhaustion, which refers to the factors explaining the decline and pathology of clusters (Lazzeretti et al., Reference Lazzeretti, Capone, Caloffi and Sedita2019).

The following paragraphs discuss the success factors and the associated subfactors.

6.9.1. Financing and funding

IoT innovation cluster sustainability is a core theme and affects the continuity of services, the strategic perspective and the actual ability to sustained development and operations. Some of the prevailing funding models are not conducive to stability of resources and the critical issues emerging from the case studies concern:

  1. 1. The set-up of the initial funding cluster grant, which may be sufficient for the start-up phase, after which fees and other financial resources shall become available and ensure the sustainability of the undertaking. It happens frequently that the grant is not renewed.

  2. 2. The support by regional development policies, in particular from EU, national, and regional local bodies for the start-up phase and launch period but then are reduced and halted.

  3. 3. The subscription of membership fees, be it industry-driven or developing around an open source project or platform, closely connected to the real value of member services.

  4. 4. The availability of contributions by universities and research organizations, typically not very stable and tends to be related to projects.

  5. 5. Funded project work—several clusters engage in project work to sustain their structural costs, most of all of personnel. This type of funding may be subject to major fluctuations, with impacts on stability and on resources for core strategic activities. Clusters confirm that if project funding becomes dominating, the economic risk level for the cluster organization increases and therefore several clusters do not pursue these funding sources.

6.9.2. Strategic and operational good practices

The most successful case study IoT innovation clusters have moved from a member-driven push approach to a “large clubs,” horizontal model, mainly focusing on sustained, and sustainable networking with members and stakeholders. Strategically, several clusters are becoming part of wider national and international networks, while still developing the connections to the local industry. Internationalization is often a high priority.

The IoT cluster good practices emerging from the study are market-related and include:

  1. 1. The regular revision, adjustment, and relaunch of the cluster strategy and economic and operational positioning and the monitoring of relevant ecosystem.

  2. 2. Structured cluster processes, which are seen as a positive practice and make the activities clearer and more transparent.

  3. 3. Technological assessment linked to cluster strategies and operations and supporting member and stakeholder research and innovation, focusing on short- and long-term technological developments and assessment of the cluster’s positioning in terms of offering, role, skills and competencies, and networking.

  4. 4. IoT clusters focus on concrete, close-to-the-market applications, while they tend not to be involved in technology policy research.

IoT innovation cluster case studies are interested in policies and regulations only insofar they directly affect their activities and members. Beyond this pragmatic approach, researchers affirm that it is important to strengthen cluster ecosystems, ensuring that governments establish an appropriate regulatory framework (Xie et al., Reference Xie, Wu and Ma2016).

According to Vernay et al. (2018), cluster policy may lead to paradoxical results due to the conflicting goals of developing a local economy and make the cluster economically independent over time and at the same time ensuring that policy and accountability goals are respected. Another aspect concerns government-supported top-down clusters, which may not lead to the sense of belonging to the cluster necessary to unleash its full potential and develop the social capital and the necessary shared vision. A potential negative impact of cluster policy on the performance of firms in sectors not directly and primarily addressed by public programs and targeted by subsidies (Audretsch et al., Reference Audretsch, Lehmann, Menter and Seitz2019).

6.9.3. Technology and application-related good practices

A number of cluster key issues are related to the deployment of IoT applications, within  themes such as data silos, data formats and ontologies, as well as data capture and processing and output, with the relevant nontechnical implications:

  1. 1. Data silos, in the case that data are not shared among different vertical application sectors or even within the same domain.

  2. 2. Homogenisation of data formats and semantics as well as data ontologies.

  3. 3. Management of trust and data sovereignty.

  4. 4. Technologies to process digital content.

  5. 5. IoT risk assessment and management.

  6. 6. Individual and organizational competencies, skills, and expertise.

Case studies confirm that clusters that address these issues systematically increase their potential to advance the development and adoption of IoT applications and improving the innovative performance of clusters and the players that work within them.

6.10. The EU policy framework and the measures from the perspective of clusters

The EU considers IoT a very powerful enabler of business and societal solutions and, as highlighted by the Commission Staff Working Document “Advancing the Internet of Things in Europe,”Footnote 35 it will be the next Internet-enabled economic and societal innovation, with the potential to advance:

  1. 1. Industrial innovation, in that they play a key role in digitizing European Industry, using smart systems, cyber physical systems, and so on.

  2. 2. Management of complex systems in the widest sense: from smart cities and smart mobility to environmental systems, to operating any feedback-based system, also making use of artificial intelligence and Big Data.

  3. 3. Individual systems, such as smart living, wearables, and individual devices.

To better understand the role of IoT-relevant policies, clusters and their members were presented a number of discussion points on possible policy measures, their awareness as policy stakeholders and their assessment of the ongoing relevance of these measures to IoT at regional, national and EU levels. Table 12 presents the responses provided on the relevance of specific policy measures and regulations on the IoT ecosystems.

Table 12. Relevance of policy measures—all respondents (N = 403)

Abbreviations: IoT, Internet of Things; IP, intellectual property.

Source: IoT Innovation Cluster Study,Footnote 36 direct IoT survey.

Significant percentages of respondents perceive that innovation support policies are actually not available, and in particular those focusing on EU IoT governance; on the Identification of emerging risks associated with IoT; on Standards mandates including IoT; and on IP law and data ownership.

Table 13 displays the opinions of cluster members on the availability of policy measures, that is them being in place and enforced.

Table 13. Availability of policy measures—all respondents (N = 424)

Abbreviations: IoT, Internet of Things.

Source: IoT Innovation Cluster Study,Footnote 37 direct IoT survey.

The combined analysis of relevance—the need of the IoT for such policy types—and availability of policy measures allows to draw conclusions on the need for policy-makers to take action in specific fields. Five measures concerning IoT require regulation, namely EU-level governance of IoT; action for standardisation; IoT-specific risk assessment; IPR regulations and management; and support to labs and testing facilities (Table 14).

Table 14. IoT policy measures, their availability, relevance ranking, and action priority

Abbreviation: IoT, Internet of Things.

Source: IoT Innovation Cluster Study.Footnote 38

Ketels (Reference Ketels2013) acknowledges the general consensus on the contribution of clusters to the economy, but also that the conceptual discussion has not always kept pace with the progress of policies. The author relates it to missing shared views on what cluster policy actually is. While there is a considerable amount of data on clusters, the same is not true for cluster policy evaluation. For the moment, impact assessments are “case-by-case analyses and tend to be focused on improving the specific policy program in place, not on broadly learning about better cluster policy” and a lot more has to be done to progress the cluster policy debate.

In conclusion, case studies confirm that there is no high demand by IoT clusters for concrete policy actions, such as support to innovation and pilot projects and the funding of IoT research and development. The reason for this was not indicated, but may be related to the awareness of business and innovation players of their own capabilities to address and solve operational and technical problems. Actually, the expectations of clusters seems focused on the overall regulatory and public communication framework and not for specific technological and business measures.

7. Discussion

7.1. Overview of research results

This policy study researches how innovation clusters actually enable IoT businesses and their developers, and support the development of IoT and of new innovators, such as small and medium sized enterprises and start-ups. It also provides indications on how public industrial policy, innovation policy, and development policies can be shaped to contribute to this important technology and application area.

IoT is a fast developing application area, it is horizontal across a vast set of fields of human activity and has the potential to boost the functionalities of applications in practical all areas of human activity. In this very historical moment, IoT can take advantage of a number of technological accelerations, which enable the take-up of interconnected devices triggering automated actions.

Rapid growth of IoT application builds on a set of cornerstones: the development of the internet in terms of users, infrastructures and applications; the availability of computing power; miniaturization; performance of energy and storage systems; the performance of connectivity, in particular that of wireless 5G and the availability of fast optical fibre connections; the power of artificial intelligence and machine learning, which is an enabler of decision support systems and smart automated actions.

There are innovation clusters with recognized functions and performance and they are subject to business cycles just like any other business venture. These cycles are amplified by the interactions of firms and actors in their cluster setting.

In a globalized connected society with activities, and, most of all value chains which disregard borders, scholars confirm that it is not Apple, Google, or Hewlett Packard, but Silicon Valley as a whole that competes with other innovation ecosystems in the global arena. It is not Baidu or Xiaomi who invade the global market, but the Chinese system of innovation, with its epicenter in Beijing or Shenzhen. It is not BMW, Daimler, Mercedes, or Robert Bosch who try to lead the automotive sector, but the innovative clusters of Bavaria and Baden-Württemberg in South Germany (Ferras-Hernandez and Nylund, Reference Ferras-Hernandez and Nylund2019).

Clusters have ever since been places where businesses and other actors have gathered to cooperate and to compete, sustained by the combined and multiplying action of several strengths, which mutually reinforce each other. In a global economy, the creation, operation, rise and fall of ecosystems and their innovative activities is accelerated by the combined and self-reinforcing action of five strengths: attraction, anticipation, rivalry, information, and interaction (Ferras-Hernandez and Nylund, Reference Ferras-Hernandez and Nylund2019).

As a matter of fact, out of nearly 1,200 participants in the study’s open survey, over 500 confirmed that they belonged to, or cooperated with, a cluster.

Businesses tend to agglomerate, researchers, innovators, and developers tend to agglomerate and cooperate in a dynamic and changeable process. Clusters are initiated mostly “bottom up” for the most diverse reasons, response to industrial and sectoral crises for example, and by the most diverse players, but also “top down” due to individual initiatives and policy programs.

There are cases where LMCs or large universities or research institutions successfully lead clusters, other cases, in which they are less successful. SMEs and start-ups are considered key players, because of their flexibility, adaptability, and innovative power, and, even if the innovative capacity of SMEs is strong, not all SMEs are equally able to generate innovation and value-added. They can take advantage of clusters only if these adopt rules and measures that are compatible with their specific structural and operational characteristics of dynamism, activeness and fragility. Start-ups have an even more particular standing, since they are considered a key driver of the development of technologies—and of IoT—advancing breakthrough innovation and application development and accelerating value chain dynamics in cluster ecosystems. They rely on the exchange of tacit and experiential knowledge exchange, benefitting from observation, exchange and practice: learning by doing, by using and by interacting (DUI), which leads to incremental innovation. It must be said that firm drivers of innovation are extremely heterogeneous, but that for SMEs the qualified STI interaction is essential (Parrilli and Elola, Reference Parrilli and Elola2012).

IoT innovation clusters are fundamentally market and enterprise-driven and their sustainability is based on the value creation for their members on a continuous basis. A particular challenge for clusters is the rigidity of large enterprises, which may be incompatible with the flexibility needed to cooperate with small and medium enterprises and start-ups.

Innovation clusters provide a vast range of technological, innovation, and business services, which are specific to each experience and generate diversified impacts.

The cluster-specific success factors are (a) financing and funding; (b) an appropriate strategic process, adjusting the service offering to the requirements of the environment and of the stakeholders, structured cluster processes; and (c) structured focus on technology and applications and their development and the relevant technology development good practices.

7.2. The impacts of clusters on enterprise and innovation performance and the role of public policies

There is a vast literature, which assigns great value to innovation clusters and the agglomeration economy at large. Michael Porter is the author of seminal research on clusters and agglomeration economy. In his 1998 article (Porter, Reference Porter1998b), He emphasizes the impacts of clusters on productivity and innovation performance of enterprises, which unfolds in three broad ways: increasing the productivity of their members; by driving the direction and pace of innovation, a factor of productivity increase; and by stimulating the creation of new business, which favors the expansion of and strengthening of the cluster “A vibrant cluster can help any company in any industry compete in the most sophisticated ways, using the most advanced, relevant skills and technologies.” According to Porter, and as confirmed by Moretti (Reference Moretti2012) a cluster provides its members the benefits of a greater scale without creating formal joint ventures with other members at the cost of flexibility. Cluster formation undergoes a self-reinforcing cycle: Iin respect to industrial policy, Porter supports that the main responsibility of governments and their industrial policy is to create an environment that supports rising productivity.

Turkina et al. (Reference Turkina, Oreshkin and Kali2019) recommend collaboration of firms with well-established and networked industry peers and collective actions, possibly through broad inter-firm projects and partnerships. Furthermore, strong connections between highly performing industry peers and advanced research institutions and universities helps innovation performance beyond cluster life cycles.

However, when it comes to a sound evaluation of the impacts of cluster operations and their innovative performance, the situation looks different.

Beaudry and Breschi (Reference Beaudry and Breschi2003) have more closely focused on the innovativeness of firms in clusters, using an econometric model to test whether firms in clusters are more innovative. The two authors conclude that the impact of clustering is likely to differ from cluster to cluster, depending on industry, type of firms and professional market in the region and that “it is not the size of the cluster in terms of own sector employment, but the importance of innovations by peers within the cluster that matters.” They confirm that being located in a region with a critical mass of innovative firms increases innovation dynamics, benefitting from the spill-overs from a large stock of knowledge. On the contrary, quite strong disadvantages are observed in the case of a strong presence of non-innovative companies.

Other evaluations of cluster program effects (Wise et al., Reference Wise, Wilson and Smith2017) indicate that only a limited number of studies directly address the impacts of specific cluster programs on firm-level productivity, with mixed and generally un-convincing results. That is mostly because of the unavailability of reliable and appropriate productivity data and on the various other factors that may be influencing it. The Organization for Economic Cooperation and Development (OECD) in its Innovation Strategy 2015 an Agenda for Policy Action confirms that “evaluation of cluster policies are rare and often not very robust” (OECD, 2015). Generally speaking, there is positive evidence of the capacity of the public sector to leverage private sector investment, but it is revealing that none of the examined evaluations focus on the long-term impacts on growth and employment.

As pointed out by Schmiedeberg (Reference Schmiedeberg2010) “the choice of indicators is not trivial, since all of them are criticised for having their deficiencies.

Žižka et al. (Reference Žižka, Valentová, Pelloneová and Štichhauerová2018) have studied the ability of businesses within clusters to transform resources into registered industrial property rights and furthermore, the effectiveness of these businesses to trade industrial property rights and generate profits. These researchers have measured innovation performance comparing two samples of two different sectors, that is textile and nanotechnology, and firms members and nonmembers of clusters. The study, which adopted a Data Development Approach, demonstrated that the existence of a cluster produces greater innovation effects in traditional sectors than in emerging sectors. In the established textile sector, the cluster was a key factor to strengthen innovative capability and competitiveness, not so in the nanotechnology industry, where the cluster did not show the same impact. As pointed out by the authors of the paper themselves (Žižka et al., Reference Žižka, Valentová, Pelloneová and Štichhauerová2018), however, while these results are significant for the evaluation of specific, localized interventions in countries or regions and with reference to specific sectors, it is difficult to generalize them.

The elusiveness of the cluster concept for policy purposes makes it “chaotic, vague, elusive, and even expressly generic and contains the seed of its own demise” (Iritié, Reference Iritié2018), pointing at the fact that the cluster effect on innovativeness—and the competitiveness, economic, and employment—depends on the type of clusters considered, the industry and on the way the research is conceived and setup.

Giles Duranton’s research work provides an extensive review and critical quantitative analysis of cluster policies with regards to the effects they generate and he challenges the scientific foundations of general cluster prosperity. His conclusions are that most scientific analyses of clusters rarely focus on the economic logic behind cluster policies and that most statements appear tautological, refer to “prosperous clusters such as Silicon Valley” and rarely quantify costs and benefits. Clusters, according to Duranton, exist and actually are designed to address pervasive market failures. What is unclear, he states, is what cluster policies should do to address these failures and how they should do it. In addition, benefits from clustering on local earnings and local productivity are low and that the local composition of economic activity does not drive prosperity, since creating clusters is only an intermediate outcome only weakly related to the prosperity policy-makers are interested in, making clustering not a choice variable that policy-makers can easily manipulate.

Duranton points out that most cluster models are not fully specified. To address this issue he proposes cluster models where a number of elements are specified, including (a) the spatial structure, including geographical variables (land, housing, infrastructure, and internal transport) and (b) production structure, possibly defining an aggregate production function, which directly relates primary factors to the output. In general, economies of scale are beneficial from a micro-economic and macro-economic point of view, but it must be considered that the sources of local increasing returns are also the source of inefficiencies and that more generally private and marginal returns will not in general coincide in a cluster. Cluster-related mechanisms can generate increasing returns but identifying the precise causal relationships will be difficult. Furthermore, economic agents do not receive compensation for the positive effects they generate, but they also do not have to compensate others for the positive effects they enjoy, implying a transfer of benefits. “Knowledge diffusion social returns are likely to exceed private returns because of the lack of reward associated with knowledge diffusion. It can be assumed that social marginal returns in clusters exceed private marginal returns (which means that successful individual businesses have a rather low incentive in taking part in clusters)” (Duranton, Reference Duranton2011).

Rampersad (Reference Rampersad2015) stipulates that the main reason for failure rates of innovation clusters is the lack of development of cluster relationships between members as well as the ineffective performance monitoring of outcomes of value toward stakeholders. Huber questions the benefit for firms members of clusters to access knowledge networks and technological knowledge spill overs, basing on the affirmation that there is simply no need to interact with other local companies or research institutions and that alternative sources of knowledge such as internal resources or the Internet are sufficient, or preferable, to be successful (Huber, Reference Huber2012).

Clusters may inhibit innovations in that they might bring about negative externalities (congestion, raises in estate prices, inflation, and gentrification; Fang, Reference Fang2015). Fang also acknowledges that clusters, on average, have positive effects on innovation and that there is a huge heterogeneity across studies and cases of clusters and that some variations in clusters’ effect on innovation remain unexplained.

8. Conclusions

While it can be certainly affirmed, and grounded in literature, that there are certainly successful clusters, also besides from the much-cited Silicon Valley, such as the High Tech Campus Eindhoven, the Digital Media City of Seoul, the Cambridge Cluster, Tech City London. It must be recognized that the cluster landscape is as differentiated as the world of enterprises and that therefore the cluster experience and practice appear extremely difficult to transfer.

The IoT and its complex and sophisticated setup certainly can drive the development of ICT (information and communication technologies) as a whole and therefore the development of some particularly dynamic and effective clusters.

The clusters participating in the research underlying this study acknowledge the importance of policy-making to address some of the critical success factors of IoT such as EU-level governance, standardization and mandates, IoT-specific risk assessment, support to labs and testing facilities.

Enterprises and innovation actors have the natural tendency to aggregate, possibly generating collective benefits of knowledge critical mass and productivity boost. This has the potential to lead to individual and aggregate competitive advantage through the productivity gains achieved through value chain integration and cooperative innovation. But while there is evidence that clusters may function, it is by no means guaranteed that clusters will be successful or sustainable over time.

There are no standardized patterns of cluster composition: members are enterprises of different sizes, even if it seems that SMEs are in a better position to take advantage of cluster membership Clusters are fundamentally market and enterprise-driven and their sustainability is based on the value creation for their members on a continuous basis. Considering the majority of cluster assessment studies, only a very limited number of them actually go beyond tautological statements referring to “prosperous clusters such as Silicon Valley” and rarely quantify costs and benefits. Even though policy-makers and researchers have been debating the replication of the Silicon Valley model since over a decade and even if a significant amount of data and research has been carried out, the real set of driving factors and their combination has proven quite elusive (Morse, Reference Morse2013).

The impact of clustering is likely to differ from cluster to cluster, depending on industry, type of firms and professional market in the region and positive impacts related to business agglomeration can only be generated by innovative firms. Very few studies directly address the impacts of specific cluster programs on firm-level productivity, with mixed and generally un-convincing results: studies show that benefits from clustering on local earnings and local productivity are low and that the local composition of economic activity does not drive prosperity, since creating clusters is only an intermediate outcome only weakly related to the prosperity policy-makers are interested in.

Policy implications are unclear and even more uncertain is the role and impact of cluster-oriented public policies: clustering is not a choice variable that policy-makers can easily manipulate. The authors consider the cluster approach more of a lens to examine and understand regional economies than a socioeconomic development policy instrument (Wolman and Hincapie, Reference Wolman and Hincapie2015).

In the end, clusters participating in the empirical research supporting this policy study clearly request, consistently with the conclusions of main studies, that policy-makers focus on framework conditions, both for clusters and for IoT, rather than taking an operational implementation role.

The list of IoT Innovation clusters resulting from the desk research

Acknowledgments

The Author wishes to thank Francesco Mureddu for his valuable support and advice, while he retains all responsibilities for the statements made. This research draws on the results of the Study on mapping Internet of Things innovation clusters in Europe, Contract number 30-CE-0786039/00-02, carried out on behalf of Directorate General CNECT of the European Commission, Unit SMART 2015/0012 DG Communications Networks, Content & Technology. The study was coordinated by the Joint Institute for Innovation Policy and involved its partners Joanneum Research, Tecnalia, VTT, and KPMG as a subcontractor. The views expressed in this paper are nevertheless exclusively those of the author and do not reflect the position neither of JIIP and its members nor of the European Commission.

Data Availability Statement

Unfortunately, at this point in time, it is not possible to make available clean raw data, due to inaccessibility of the original sources. The data in the tables is what is available at the moment of the paper release.

Author Contributions

Conceptualization: L.A.R.; Funding acquisition: L.A.R.; Investigation: L.A.R.; Methodology: L.A.R.; Writing – original draft: L.A.R.

Funding Statement

This research was not funded. It draws in part on the results of the Study on mapping Internet of Things innovation clusters in Europe, Contract number 30-CE-0786039/00-02, carried out on behalf of Directorate General CNECT of the European Commission, Unit SMART 2015/0012 DG Communications Networks, Content & Technology. The study was coordinated by the Joint Institute for Innovation Policy and involved its partners Joanneum Research, Tecnalia, VTT, and KPMG as a subcontractor. The funder had no role in the decision to publish, or preparation of the manuscript. The views expressed in this paper are nevertheless exclusively those of the author and do not reflect the position neither of JIIP and its members nor of the European Commission.

Competing Interests

The author declares no competing interests exist.

Footnotes

Evidence-based Strategic Advice and Policy Research.

2 IDC Worldwide IoT Semi-annual Spending Guide 2017.

4 ibidem.

5 Worldwide Global DataSphere IoT Device and Data Forecast, 2019–2023. IDC.

6 Internet of Things (IoT) Market Size, Share By Component, Platform, Solution, End-Use, and Regional Forecast, 2020–2027. Fortune Business Insights. Report ID: FBI100307.

7 Worldwide Global DataSphere IoT Device and Data Forecast, 2019–2023. IDC.

9 The case studies’ selection has followed the geographical criterion in first instance and subsequently the criterion of application area.

10 “The value chain is defined very simply as a series of production tiers, each tier producing items that are substitutable in terms of the function they assume in a final product or service. This chain culminates in a specific product or service in which all of the value of components and processes has accumulated. The units of production in each tier of our value chain formulation are firms and organizations.” https://www.oecd.org/sti/ieconomy/22572212.pdf

21 Moretti, Enrico. The New Geography of Jobs. Mariner Books 2013. Chapter “Forces of Attraction.”

27 ibidem.

28 ibidem.

29 ibidem.

30 ibidem.

31 ibidem.

32 ibidem.

33 ibidem.

34 ibidem.

35 SWD(2016) 110 final. Brussels, 19.4.2016.

37 ibidem.

38 ibidem.

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Figure 0

Figure 1. Software developers for connected Internet of Things (IoT) devices, by segment (2016).

Figure 1

Table 1. Survey respondents by type declaring cluster membership

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Figure 2. Cluster and cluster types per country.Source: IoT Innovation Cluster Study.22

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Table 2. Number of IoT cluster members by type (2012–2017)

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Table 3. Cluster services to IoT firms

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Table 4. Cluster Infrastructures and platforms made available to IoT firms

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Table 5. Weight of IoT technologies in the organization offering

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Table 6. Weight of IoT application domains in the organization offering

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Table 7. Change of weight of IoT enabling technologies by actor type

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Table 8. Change of weight of IoT application domains by actor type

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Table 9. The key drivers to IoT development for all respondents (n = 1,169)

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Table 10. The computed balance of responses on drivers and impediments to IoT development for all respondents (n = 1,169)

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Table 11. Framework and ecosystem factors and their impact on IoT clusters

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Table 12. Relevance of policy measures—all respondents (N = 403)

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Table 13. Availability of policy measures—all respondents (N = 424)

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Table 14. IoT policy measures, their availability, relevance ranking, and action priority

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