Introduction
Water erosion due to both natural and human causes drives displacement of the upper layer of the soil, which is crucial to soil fertility. Excessive agricultural activities and a failure to use agricultural areas according to their characteristics are examples of human-induced erosion (Rutebuka et al. Reference Rutebuka, Kagabo and Verdoodt2019, Seitz et al. Reference Seitz, Goebes, Puerta, Pereira, Wittwer and Six2019, Han et al. Reference Han, Ge, Hei, Cong, Ma and Xie2020). Anthropogenic erosion can have a long-term impact on agricultural land and can lead to the abandonment of unproductive land (Colombo et al. Reference Colombo, Hanley and Calatrava-Requena2005, Aytop & Şenol Reference Aytop and Şenol2022). Some past civilizations evidently declined and eventually disappeared because of soil erosion (Diamond Reference Diamond2004). However, it is still a matter of debate whether the negative impact of soil erosion on land productivity will impact modern societies (Bakker et al. Reference Bakker, Govers, Jones and Rounsevell2007).
Approximately 80% of the world’s agricultural land is subject to moderate or severe erosion (Meliho et al. Reference Meliho, Nouira, Benmansour, Boulmane, Khattabi, Mhammdi and Benkdad2019), and agricultural areas may experience a significant loss of land productivity (LLP) due to erosion. While LLP is c. 0.50% per year in continental Europe (Panagos et al. Reference Panagos, Standardi, Borrelli, Lugato, Montanarella and Bosello2018), the rate in Türkiye is c. 0.92% per year (Aytop & Pınar Reference Aytop and Pınar2024). The world population of over 8 billion people is expected to surpass 10 billion in the next 80 years (Ritchie Reference Ritchie2019). Given that hunger affects 691–783 million people, and over 99% of human food needs are met on land (FAOSTAT 2004, Pimentel & Burgess Reference Pimentel and Burgess2013), it is crucial to protect and enhance the productivity of agricultural areas to secure the food supply. Preservation of agricultural land can be achieved by using the land in an efficient and planned manner according to its capabilities, which is made possible by preparing agricultural land-use plans employing land evaluation methods (Xie et al. Reference Xie, Zhang, Zeng and He2020, Aytop & Şenol Reference Aytop and Şenol2022).
Although Türkiye has a rugged topography that is erosion-prone (Duran Reference Duran2013, Erpul et al. Reference Erpul, Sahin, Ince, Kucumen, Akdag, Demirtas and Cetin2018), an understanding of the impacts of improper agricultural practices on erosion is limited. In areas with sloping topography, it is especially vital to integrate erosion mitigation measures into land evaluation methods when preparing land-use plans. Potential impacts of different climate change or land-use planning scenarios have long been simulated (April et al. Reference April, Better, Glover, Kelly and Laguna2006, Zare et al. Reference Zare, Panagopoulos and Loures2017, Aytop & Şenol Reference Aytop and Şenol2022, Pınar & Erpul Reference Pınar and Erpul2023). These studies have evaluated the possible consequences of changes and led to improved management of natural resources, but it has been difficult to integrate environmental characteristics, economic factors, soil properties and soil conservation practices (contour farming, terracing, etc.) into these methods (Aytop & Şenol Reference Aytop and Şenol2022). Previous studies have developed land-use scenarios for protecting and increasing the area of agricultural, forest and pasture lands and have examined the soil losses caused by these scenarios (Dymond et al. Reference Dymond, Betts and Schierlitz2010, Chuenchum et al. Reference Chuenchum, Xu and Tang2020, Gong et al. Reference Gong, Liu, Duan, Sun, Zhang, Tong and Qiu2022, Nguyen et al. Reference Nguyen, Liou, Nguyen and Tran2023, Patriche Reference Patriche2023). Research that integrates soil conservation practices into land-use planning scenarios has not incorporated any land evaluation methods (Birnholz et al. Reference Birnholz, Paul, Sommer, Nijbroek, Timlin and Anapalli2022, Madenoğlu et al. Reference Madenoğlu, Pınar, Şahin and Erpul2024, Vîrghileanu et al. Reference Vîrghileanu, Săvulescu, Mihai, Bizdadea and Paraschiv2024).
In the present study, two soil conservation measures (contour farming and terracing) were integrated into a land evaluation method and erosion-reducing land-use plans for a study area in the Vezirköprü district of Samsun province (Türkiye) that has intensive agricultural activities. The ILSEN quantitative land evaluation method based on the land evaluation criteria of the Food and Agriculture Organization (FAO) was developed to be compatible with the ecological conditions of Türkiye (Şenol & Tekeş Reference Şenol and Tekeş1995). A universal empirical soil erosion prediction model that can also be applied in areas with heterogeneous slopes (Wang et al. Reference Wang, He, Zhou and Gong2019, Kumar et al. Reference Kumar, Sahu, Sahoo, Dash, Raul and Panigrahi2022) – the revised universal soil loss equation (RUSLE; Renard et al. Reference Renard, Foster, Weesies, McColl and Yoder1997) model – was used to determine the effects of these scenarios on soil erosion.
Materials and methods
Study area
The Vezirköprü district of Samsun province in the central Black Sea region of Türkiye (41°2.518′N–35°32.986′E and 41°10.234′N–35°30.087′E; WGS84, Zone-36, UTM-m) covers an area of 111 km2 ranging from 243 to 744 m above sea level (Fig. 1; Saygın et al. Reference Saygın, Aksoy, Alaboz and Dengiz2023a) and has an average annual precipitation of 527 mm (Uğurlu Reference Uğurlu2021, Saygın et al. Reference Saygın, Alaboz, Aksoy, Dengiz, Imamoğlu, Çağlar and Koç2023b). It has the humid characteristics of the transition zone between the continental climate type and the humid and temperate climate of the coastal zone; the winter months are colder (January average 2.5°C) and the summer months are hotter (August average 22.3°C) than the coastal zone. The soil moisture regime in the research region was Typic Xeric, while the soil temperature was Mesic (Saygın et al. Reference Saygın, Alaboz, Aksoy, Dengiz, Imamoğlu, Çağlar and Koç2023b).
Database
Soil properties from a digital soil map (Saygın & Dengiz Reference Saygın and Dengiz2023), digital elevation model (DEM) map (http://earthexplorer.usgs.gov) and long-term average precipitation data from the Republic of Türkiye General Directorate of Meteorology were used. Various literature sources were considered to determine the cover management factor (C) values for the scenarios created (Renard et al. Reference Renard, Foster, Weesies, McColl and Yoder1997, FAO 2000, Marker et al. Reference Marker, Angeli, Bottai, Costantini, Ferrari, Innocenti and Siciliano2008, Benzer Reference Benzer2010, Panagos et al. Reference Panagos, Borrelli, Meusburger, Alewell, Lugato and Montanarella2015b). The existing land-use cover of the study area was identified based on CORINE Land Cover 2018 (https://land.copernicus.eu/en/products/corine-land-cover). The digital soil series map of the study area (Appendix S1, Fig. S1) was used for the K-factor map, and the DEM map of the study area was used for the LS-factor map. The kriging method was also used to prepare the K-factor distribution map. All maps were converted to 10 × 10 m resolution using the ArcGIS 10.7.1 program. The methodology of the study is outlined in Appendix S1 (Figs S2 & S3).
Scenarios for land-use planning using the ILSEN model
The land evaluation of the study area was conducted using the ILSEN land evaluation model (Şenol & Tekeş Reference Şenol and Tekeş1995) based on FAO (1977) principles and compatible with the ecological conditions of Türkiye. Nineteen different land-use types (LUTs; Appendix S2, Table S1) that can be cultivated under the ecological conditions of the study area were initially identified and their soil requirements defined based on literature reviews (USDA 1979, Bayraktar Reference Bayraktar1981, Kün Reference Kün1983, Perry Reference Perry1984, Ravina & Magier Reference Ravina and Magier1984, Sys et al. Reference Sys, Von Rants and Debaveje1991, Begg et al. Reference Begg, Huntington, Wildman and DE1998, Sattell et al. Reference Sattell, Dick, Luna, McGrath and Peachey1998, Alonso Reference Alonso2017, Pan et al. Reference Pan, Baquy, Guan, Yan, Wang, Xu and Xie2020, Solaimalai et al. Reference Solaimalai, Anantharaju, Irulandi and Theradimani2020). When applying LUTs involving terracing and contour farming, the slope (%) criterion of the mapping units (MUs) was identified as the primary terrain characteristic; optimal slope values for economically feasible contour farming and terracing practices are 6–10% (FAO 2003) and 12–30% (FAO 2000), respectively. Soil depth was also identified as a key land characteristic, along with slope, for the implementation of terracing practices.
Fifty-eight MUs (bounded areas of land with specific characteristics and mapped from soil, forest and other surveys) and their land characteristics (Appendix S2, Table S2) were obtained from the digital soil map of the study area (Saygın & Dengiz Reference Saygın and Dengiz2023). Land characteristics and MUs were coded and entered into computer software to determine the suitability of LUTs within MUs. A rotation strategy was implemented to cover three seasons in annual crops instead of planting the same crop yearly to ensure the soil and plants were not negatively impacted.
Values of the proportional expected product (PEP) were estimated to assess the limiting effect of land characteristics on LUTs. PEP values were determined by considering the land requirements of LUTs. The PEP value was taken as 1.00 if a certain level of any land characteristic (Appendix S2, Table S2) did not restrict the cultivation of the LUT in any way and as 0.00 if it made it impossible (Appendix S2, Table S3).
In the final stage of the land evaluation process, physical mapping unit indices (PMUIs) were calculated to indicate the suitability of the MUs for the LUT, and mapping unit indices (MUIs) were determined by multiplying the PMUIs by the profitability index (PI) values of the LUTs by using Directorate of Agriculture and Forestry of Samsun province cost and income data of LUTs. PI data for some products not cultivated in the region were unavailable, and the PI values for some LUTs could not then be calculated.
Following the land evaluation, five different land-use planning scenarios were developed (Appendix S2, Table S4). The current land use of the research area (CORINE 2018) was defined as Scenario 1. Scenarios 2 and 3 were determined by selecting the highest MUI and PMUI values of the MUs. Scenario 4 was created by prioritizing soil-protected LUTs within PMUI values for which the suitability value was higher than 0.50 (FAO, 1977). Scenario 5 was created for each MU by prioritizing non-agricultural use (LUT18 and LUT19) areas with suitability values higher than 0.50.
Soil loss evaluation
The RUSLE method (Renard et al. Reference Renard, Foster, Weesies, McColl and Yoder1997, Deumlich et al. Reference Deumlich, Mioduszewski, Kajewski, Tippl and Dannowski2005, Gutzler et al. Reference Gutzler, Helming, Balla, Dannowski, Deumlich and Glemnitz2015) was utilized to predict erosion rates for the five land-use planning scenarios. Equation 1 was used to estimate average annual soil loss measured as t ha–1 year–1 based on soil erodibility (K), rainfall erosivity (R), cover management (C), topography (LS) and support practices (P) on erosion (Renard et al. Reference Renard, Foster, Weesies, McColl and Yoder1997). GIS techniques and ArcGIS 10.7.1 software were used to calculate factor layers and to generate erosion risk in five classes: very low (0–1 t ha–1 year–1), low (1–5 t ha–1 year–1), moderate (5–10 t ha–1 year–1), high (10–20 t ha–1 year–1) and very high (≥20 t ha–1 year–1; Erpul et al. Reference Erpul, Sahin, Ince, Kucumen, Akdag, Demirtas and Cetin2018, Aytop & Pınar Reference Aytop and Pınar2024).
Rainfall erosivity (R)
Data collected from the nearest rainfall station in Vezirköprü district were used to compute R (MJ mm ha–1 h–1 year–1; Equation 2). Due to the station lacking high-resolution rainfall records, the Modified Fournier Index (MFI) equation (Arnoldus Reference Arnoldus, De Boodt and Gabriels1980) was employed to calculate it (Equation 3).
where Pi is the average precipitation in month i (mm) and P is the average precipitation (mm year–1).
To integrate the R value for the Vezirköprü station into the study area, it was assumed that for every 100-m increase in elevation, annual precipitation increases by 54 mm (Schreiber Reference Schreiber1904). Using the slope map, the R value map of the study area was created (Equation 4).
where Rlocation is the R value calculated for every 100-m change in the study area, Rstation is the R value calculated for the Vezirköprü station, Plocation is precipitation re-calculated for every 100-m increase in elevation in the study area and Pstation is the precipitation for the Vezirköprü station (mm year–1).
Soil erodibility (K)
The soil erodibility parameter K, measuring the soil’s resistance to raindrops’ erosive properties (Wischmeier & Smith Reference Wischmeier and Smith1978), which ranges from 0 to 1, was derived from the analysis of structure type, organic matter, hydraulic conductivity and soil texture of the soils obtained from the digital soil map of the study area (Equation 5; Saygın & Dengiz Reference Saygın and Dengiz2023).
where M, OM, c, b and d are the particle size, organic matter content (%), water permeability code, structure type code and conversion coefficient to metric (7.59), respectively. M was calculated as per Equation 6:
Slope length and steepness (LS)
Estimation of the LS factor – the ratio of soil loss in an area 22.13 m long with a 9% slope to that in another location with the same conditions, and which is among the most critical factors regarding the rate of water-induced soil erosion (Bircher et al. Reference Bircher, Liniger and Prasuhn2019, Kumar et al. Reference Kumar, Sahu, Sahoo, Dash, Raul and Panigrahi2022) – used the equation of Moore and Burch (Reference Moore and Burch1986). Since the resolution of the DEM map of the study area is 10 m × 10 m, the cell size was considered to be 10 m in the LS-factor calculation (Equation 7):
Cover management factor (C)
Values of the C factor – the ratio of erosion on vacant land to that on land under agricultural activity (Wischmeier & Smith Reference Wischmeier and Smith1978) and related to vegetation cover and production techniques (Zare et al. Reference Zare, Panagopoulos and Loures2017) – were assigned based on the literature (Appendix S2, Table S5).
Conservation practice (P)
The unitless P-factor values were derived from the literature review; they were set at 1 for land uses that do not include soil conservation measures (Renard et al. Reference Renard, Foster, Weesies, McColl and Yoder1997). In contrast, for land uses that include practices such as terracing and contour farming, these values were taken as 0.2 and 0.5, respectively (Wischmeier & Smith Reference Wischmeier and Smith1978).
Study limitations
The main limitations of this study are that the amount of tolerable soil loss (T; t ha–1 year–1) was not calculated, and no field validation of the erosion calculations was carried out. T can be calculated or determined by referring to different studies. We aimed to include soil conservation practices as a LUT in the ILSEN model; we considered slope percentages as recommended by the FAO for these practices. The RUSLE was only used to check whether land-use planning reduced erosion and to estimate soil losses.
Results
Scenarios for land-use planning
Scenario 1 (current land use) had the largest agricultural areas (8108 ha). Forest and pasture areas covered 1311 and 1117 ha, respectively (Appendix S2, Table S6). While the content of the other four scenarios varied, the LUTs with the largest surface area were contour-cultivated annual crops (Appendix S2, Table S6). The average slope of the study area was close to the 10% recommended by FAO (2003) for contour farming, so contour farming practices were expected to be intensive in the scenarios.
In Scenario 2, the wheat and sunflower rotation (contour farming) had the greatest area (48.59%), followed by LUT17 (19.83%), LUT18 (11.47%), LUT19 (10.98%) and LUT16 (8.23%). The PMIU scenario with economic analysis had 4.87% more terraced orchard area compared to the MUI scenario. These greater terraced orchard areas resulted from prioritizing profitability in the PMIU scenario. In Scenario 4, LUTs including terrace and contour agriculture had the largest land area (95.56%) because of the focus on soil conservation practices. Scenario 5 (prioritizing non-agricultural areas) had the greatest forest and pasture area (34.96%), followed by Scenario 2 (22.45%), Scenario 3 (10.58%) and Scenario 4 (4.44%; Appendix S2, Table S6).
RUSLE model of the scenarios
The R-factor values varied between 67.39 and 148.96 MJ mm ha−1 h−1 year−1, depending on altitude (Fig. 2). Assuming that precipitation increased with altitude, the soil erodibility K factor ranged from 0.0384 to 0.014 t ha h ha−1 MJ−1 mm−1; it was greater in the north and north-west of the study area than elsewhere (Fig. 2).
This suggests that the soil series in the eastern and southern regions of the study area were more resistant to the erosive properties of rainfall. The LS factor ranged from 0 to 426.315 for the study area, with the lowest values occurring in flat and nearly flat alluvial areas, while the highest LS-factor values were observed in areas with steep slopes, such as along rivers. The spatial distribution of C-factor values varied according to the land-use content of the scenarios. Scenario 5, with denser forest and pasture areas, had the lowest average C factor (0.16), while, as expected, scenarios with more intensive agricultural LUTs had higher C-factor values (Fig. 3).
Since there were no soil conservation practices in the study area at the time, Scenario 1’s mean P-factor value was 1.00. The average P values for Scenarios 1–5 were 1.00, 0.74, 0.77, 0.45 and 0.89, respectively (Fig. 4).
Soil losses in the scenarios
Scenario 5, which involved non-agricultural practices, had the lowest average soil loss (Fig. 5) and average C-factor value (0.16), and thus the lowest soil loss. Scenario 1 (current land use of the basin) had the highest average soil loss, with an average C-factor value of 0.43.
The four scenarios based on the ILSEN method had significantly lower average erosion rates compared to Scenario 1 (Fig. 5).
Scenario 2, with the lowest C-factor value after Scenario 5, had an average annual soil loss of 0.97 t ha–1 year–1, and it did not consider the economic returns of LUTs (Fig. 6). This scenario’s average C-factor value was 0.19, the second lowest after Scenario 5. Despite this, Scenario 2 resulted in less estimated soil loss than Scenario 3 (Fig. 5).
Soil conservation practices also impact the erosion risk classes in the study area. Areas with more than 20 t of soil loss per year were significantly reduced in the other scenarios compared to Scenario 1 (Appendix S2, Table S7). In Scenario 1, 47.76% of the study area was under low erosion risk, while in the other scenarios prepared using the ILSEN land evaluation method, this risk was present in greater than 80% of the study area, except for in Scenario 3. In Scenario 3, this risk was present in 70.21% of the study area (Appendix S2, Table S7).
Discussion
The created scenarios had significantly lower soil erosion compared to the current land use in Vezirköprü district (Scenario 1). Although all factors influence erosion to some extent in RUSLE, the LS and C factors were the most influential on soil loss (Risse et al. Reference Risse, Nearing, Nicks and Leaflen1993, Panagos et al. Reference Panagos, Borrelli and Meusburger2015a). In the present study, the LS, K and R factors had equal values in all scenarios, while the P-factor average of Scenario 5, which had the lowest erosion rate, was greatest, with a value of 0.89. In contrast, the C-factor average had the lowest value (0.16) among the scenarios; it was therefore more effective for determining differences in the rate of soil loss between scenarios, and it indicated significantly reduced soil erosion. This corroborates previous studies (El Jazouli Reference El Jazouli, Barakat, Ghafiri, El Moutaki, Ettaqy and Khellouk2017, Azimi et al. Reference Azimi Sardari, Bazrafshan, Panagopoulos and Sardooi2019) demonstrating that the C factor can increase or decrease soil erosion by up to 1000-fold (0.001 versus 1; Tsai et al. Reference Tsai, Lai, Nguyen and Chen2021, Moisa et al. Reference Moisa, Babu and Getahun2023, Sathiyamurthi et al. Reference Sathiyamurthi, Ramya, Saravanan and Subramani2023). The difference in C-factor averages between the scenarios was related to the fact that forest and pasture areas covered more area in Scenario 5 (c. 34.96% of the area) than in the other scenarios (Appendix S2, Table S6). Although increasing non-agricultural areas in these scenarios might be the most effective and economical solution to reduce soil erosion, the acceptability of this approach to farmers who make their livings from the land they live on will be very low. In sloping areas, scenarios that include soil conservation practices will be more acceptable to farmers.
Similarly, the C factor most influenced the differences in soil loss among Scenarios 2, 3, 4 and 5. For instance, the higher amount of soil loss in Scenario 3 (1.41 t ha–1 year–1) compared to Scenario 2 (0.97 t ha–1 year–1) can be explained by prioritizing the profitability of LUTs, because orchards, which are more profitable (Badiu et al. Reference Badiu, Arion, Muresan, Lile and Mitre2015, Lordan et al. Reference Lordan, Gomez, Francescatto and Robinson2019, Nieto et al. Reference Nieto, Reig, Lordan, Sazo, Hoying and Fargione2023), have higher C-factor values than annual crops. Horticultural crops such as walnuts, grapes and almonds require higher capital inputs than annual field crops but yield relatively higher profits for farmers (Wolz & DeLucia Reference Wolz and DeLucia2019, De Leijster et al. Reference De Leijster, Verburg, Santos, Wassen, Martínez-Mena, De Vente and Verweij2020, Aytop & Şenol Reference Aytop and Şenol2022). As the mean C-factor values increased in the scenarios in which orchards occupied most of the area, soil erosion rates were also greater.
Adding soil conservation practices to the scenarios also changed the average P-factor values of agricultural plans and reduced the rates of soil loss. Similarly, Thomas et al. (Reference Thomas, Joseph and Thrivikramji2018) and Islam et al. (Reference Islam, Jaafar, Hin, Osman and Karim2020) reported that soil conservation practices significantly reduced severe erosion rates.
Scenario 4 had the lowest soil loss (0.84 t ha–1 year–1) among all scenarios after Scenario 5; this scenario was specifically designed for agricultural purposes, incorporating terrace and contour farming techniques, resulting in the lowest average P-factor value. Soil conservation practices such as contour farming and terracing play a crucial role in reducing soil erosion rates (Ricci et al. Reference Ricci, Jeong, De Girolamo and Gentile2020, Didoné et al. Reference Didoné, Minella and Piccilli2021, Rutebuka et al. Reference Rutebuka, Uwimanzi, Nkundwakazi, Kagabo, Mbonigaba, Vermeir and Verdoodt2021, Saggau et al. Reference Saggau, Kuhwald and Duttmann2023) and in preserving soil organic matter (Do et al. Reference Do, La, Bergkvist, Dahlin, Mulia, Nguyen and Öborn2023). Tang et al. (Reference Tang, Xu, Bennett and Li2015) reported that terracing in particular positively changed erosion classes in the Loess Plateau of China. Similarly, land-use planning scenarios that include soil conservation practices reduced soil losses by c. 79% compared to current land use (Aytop & Şenol Reference Aytop and Şenol2022). Because of the high cost of terracing on sloping land (e.g., in Kenya; Mcharo & Maghenda Reference Mcharo and Maghenda2021), LUTs with a high profit return should be selected for terracing. The profitability of LUTs is related a region’s climatic conditions, soil characteristics, location, people’s preferences and many other factors. Compared to the long-term costs of soil erosion, which are not just agricultural but also include off-site impacts such as pollution and filling of dams (Colombo et al Reference Colombo, Hanley and Calatrava-Requena2005, Borrelli et al. Reference Borrelli, Robinson, Fleischer, Lugato, Ballabio and Alewell2017), those of soil conservation practices are insignificant. Globally, the cost of soil erosion is USD 400 billion annually (FAO 2016).
Our study supports the effectiveness of soil conservation practices for reducing erosion rates, and it could serve as a model for evaluating soil erosion risks in agricultural, forest and pasture areas more generally. In our case, the C factor was more effective for reducing soil erosion than the support application factor. The effect of the P factor on erosion can be increased by integrating different soil protection practices into the model (Aytop & Şenol Reference Aytop and Şenol2022).
Conclusion
We have shown that soil conservation added to the ILSEN method significantly reduced soil erosion in LUTs; it also reduced the current erosion rate of the study area in scenarios in which C-factor values varied. Scenario 5, in which forest and pasture areas were kept dense, had the lowest soil loss rate. This proves that the C factor is one of the most critical factors for reducing erosion, along with the LS factor.
Our approach has significant potential for application in high-slope geographies elsewhere where farmers’ primary source of livelihood is agriculture. Since the initial costs of soil conservation practices such as terracing are high, it will be difficult for farmers to establish these practices; thus, public investments are necessary. The cultivation of LUTs determined according to the land evaluation method is vital for soil sustainability, so farmers and public institutions should cooperate closely; only then will the protection of agricultural production and the productivity of the lands involved be ensured.
Supplementary material
To view supplementary material for this manuscript, please visit https://doi.org/10.1017/S0376892924000298.
Data availability
The datasets generated and analysed during the current study are not publicly available but are available from the corresponding author on reasonable request.
Acknowledgements
We thank Nicholas Polunin and the anonymous reviewers for their constructive comments that helped to improve the manuscript.
Author contributions
FS: Writing the original draft of the manuscript, reviewing and editing; HA: Writing the original manuscript draft, reviewing, editing, calculating, creating maps and corresponding; OD: Writing the original draft of the manuscript, reviewing and editing.
Financial support
This work was supported by the TAGEM (General Directorate of Agricultural Research and Policies) of the Ministry of Agriculture and Forestry of the Republic of Türkiye (No. TAGEM/TSKAD/B/18/A9/P2/1017).
Competing interests
The authors declare that they have no competing interests related to the content of this manuscript. The authors have no relevant financial or non-financial interests to disclose.
Ethical standards
Not applicable.