INTRODUCTION
The management and conservation of tropical carbon stores by channelling funds from developed to developing countries is a promising tool for reducing greenhouse gas emissions (Laurance Reference Laurance2007). Africa contains 13% of global terrestrial carbon (in living plants and soil), and emissions resulting from land-use change account for nearly 20% of the total for the tropics (Williams et al. Reference Williams, Hanan, Neff, Scholes, Berry, Denning and Baker2007). Forest and woodland conversion is primarily linked to subsistence farming and fuel extraction (Fisher et al. Reference Fisher, Lewis, Burgess, Malimbwi, Munishi, Swetnam, Turner, Willcock and Balmford2011), while carbon stocks are also threatened by logging, mining and the development of commercial agriculture.
Carbon-based conservation using the concept of payment for ecosystem services, for example via the United Nations Programme on Reducing Emissions from Deforestation and Degradation in Developing Countries (REDD+) (Ebeling & Yasue Reference Ebeling and Yasue2008), faces a number of challenges (Fisher et al. Reference Fisher, Lewis, Burgess, Malimbwi, Munishi, Swetnam, Turner, Willcock and Balmford2011). A key requirement in a workable REDD+ scheme is the establishment of ‘reference [emission] levels’ (RLs) against which to measure a country or region's progress in reducing their carbon emissions and increasing the carbon store. Griscom et al. (Reference Griscom, Shoch, Stanley, Cortez and Virgilio2009) reviewed different methods proposed to determine national baseline emissions, concluding that for REDD payments to successfully function as incentives to reduce emissions, they should be closely linked in quantity to actual emissions avoided against a credible historically-derived baseline with limited adjustments.
Field measurements of forest emissions (based on forest changes) are often used in order to establish RLs. Multi-temporal forest inventories are combined with stand biomass density datasets to subsequently calculate landscape estimates of above-ground biomass and their changes over time (Návar-Chaidez Reference Návar-Chaidez2011). However, they are very expensive and errors may be introduced by subjective sampling, especially across large spatial scales (Yokkoz et al. Reference Yokkoz, Nichols and Boulinier2001), when avoiding remote, difficult to access or politically unstable areas for measuring forest distribution and biomass on the ground.
Alternatively, high-spatial resolution passive satellite data have been employed to derive estimates of forest cover, biomass and carbon storage at landscape and even national scales. A set of ground measurements is upscaled from plot level using remotely sensed spectral reflectances (Wulder et al. Reference Wulder, White, Fournier, Luther and Magnussen2008). Whilst providing highly likely measures for local scales, their application at landscape level is limited by the need to obtain cloud-free images at sufficient temporal resolution, and to account for errors introduced during image mosaicking (inevitable, because of the reduced spatial coverage of each individual satellite scene). Furthermore, high computer processing capacity is required for change detection analyses, and costs associated with obtaining and processing these images currently are prohibitive for many countries. Using active sensor data (such as airborne light detection and ranging [LiDAR]) to directly estimate biomass from forest structure estimates (Zhao et al. Reference Zhao, Popescu and Nelson2009) requires sophisticated technical equipment, which is very expensive (Englhart et al. Reference Englhart, Keuck and Siegert2011) and is hampered by uncertainties introduced through instrument and flight specifics (Disney et al. Reference Disney, Kalogirou, Lewis, Prieto-Blanco, Hancock and Pfeifer2010). Furthermore, synthetic aperture radar data, while weather and daylight independent, show saturation at high biomass levels (Lucas et al. Reference Lucas, Mitchell, Rosenqvist, Proisy, Melius and Ticehurst2007).
In East Africa and elsewhere, landscape-scale estimates of carbon stock are uncertain and determinants of flux, such as deforestation and degradation processes, poorly resolved (Williams et al. Reference Williams, Hanan, Neff, Scholes, Berry, Denning and Baker2007; Návar-Chaidez Reference Návar-Chaidez2010; Pfeifer et al. Reference Pfeifer, Burgess, Swetnam, Platts, Willcock and Marchant2012a). The moist tropical forests (mainly in Eastern Congo, Rwanda and Burundi, the Eastern Arc Mountains and coastal areas) are recognized as important carbon sinks (Lewis et al. Reference Lewis, Lopez-Gonzalez, Sonke, Affum-Bafoe, Baker, Ojo, Pillips, Reitsma, White, Comiskey, Djuikouo, Ewango, Feldpausch, Hamilton, Gloor, Hart, Hladik, Lloyd, Lovett, Makana, Malhi, Mbago, Ndangalasi, Peacock, Peh, Sheil, Sunderland, Swaine, Taplin, Taylor, Thomas, Votere and Wöll2009). However, these forested areas are small relative to other woody biomes, which cover over half of East Africa's terrestrial surface, such as Miombo and open Acacia-Commiphora woodlands (forest cover only 6%), representing a heterogeneous mosaic of tree densities, tree heights and above-ground biomass stocks (Burgess et al. Reference Burgess, D'Amico Hales, Underwood and Dinerstein2004). Analyses of savannah biomes in South Africa reveal highly transient systems (Bond et al. Reference Bond, Woodward and Midgley2005) whose extents and structures reflect complex interactions between fire regimes, rainfall, human activities and herbivore pressure (Bucini & Hanan Reference Bucini and Hanan2007).
Efficient and reliable assessment of land cover dynamics is essential for adaptive management in the face of rapid socioeconomic and environmental change. In recent decades, economic development and increasing population pressure have accelerated rates of deforestation and degradation in East Africa (Hall et al. Reference Hall, Burgess, Lovett, Mbilinyi and Gereau2009; Ahrends et al. Reference Ahrends, Burgess, Milledge, Bulling, Fisher, Smart, Clarke, Mhoro and Lewis2010; Godoy et al. Reference Godoy, Tabor, Burgess, Mbilinyi, Kashaigili and Steininger2011; Pfeifer et al. Reference Pfeifer, Burgess, Swetnam, Platts, Willcock and Marchant2012a). Population changes may also have increased burning frequencies relative to historical regimes (Keeley et al. Reference Keeley, Fotheringham and Morais1999), possibly impacting carbon fluxes. Carbon balances for woody vegetation are expected to change further, as demands for land and wood-based fuel continue to increase (Brncic et al. Reference Brncic, Willis, Harris and Washington2007). This may be counterbalanced by potential CO2 and atmospheric nitrogen fertilization effects (Kgope et al. Reference Kgope, Bond and Midgley2010), and the loss of large mammals causing habitat shifts from grassland to bushland (Holdo et al. Reference Holdo, Holt and Fryxell2009).
Here, we describe an ‘historical’ approach to establishing baselines for canopy cover change and associated aboveground carbon flux at a landscape scale, whereby average historical deforestation rates are estimated from earth observation derived land cover maps. We focus on changes in forest and woody biomes, relative to cultivated land, to assess the region's carbon stocks and fluxes and test for vegetation changes in relation to fire, precipitation and land management. We present our approach as a rapid assessment tool for land cover and carbon trends in East Africa, making use of freely available land cover, precipitation and fire maps. A major advantage of our approach, which should be seen as complementary to on-going small-scale carbon quantification projects and ground-based monitoring (described in Harper et al. Reference Harper, Steininger, Tucker, Juhn and Hawkins2007 and Godoy et al. Reference Godoy, Tabor, Burgess, Mbilinyi, Kashaigili and Steininger2011; discussed in Gibbs et al. Reference Gibbs, Brown, Niles and Foley2007), is its ability to overcome the lack of consistent field-based data in East Africa, which has hitherto hampered large-scale detection of carbon change hotspots.
METHODS
Study area
Our study area is 3 882 887 km2 (N6, S15, W27.5, E42.5), covering fully the countries of Uganda, Kenya, Tanzania, Rwanda and Burundi, and partially covering neighbouring Somalia, Ethiopia, South Sudan, Congo, Zambia, Malawi and Mozambique (Fig. 1). The region encompasses a range of biomes, including lowland, coastal and mountain forests, open and closed woodlands, mangroves along the coast and open dry xeric bushland in the north.
Estimating carbon flux from remotely-sensed biome shifts
We computed changes in the spatial coverage of East African biomes between 2002 and 2008. Biome-specific above-ground live carbon stocks, per unit area, were estimated using an East Africa specific look-up table (Willcock et al. Reference Willcock, Phillips, Platts, Balmford, Burgess, Lovett, Ahrends, Bayliss, Doggart, Doody, Fanning, Green, Hall, Howell, Marchant, Marshall, Mbilinyi, Munishi, Owen, Swetnam, Topp-Jorgensen and Lewis2012). These ground-based inventory data represent weighted medians and 95% bootstrapped confidence intervals (CIs), derived from a wide range of literature sources (Table 1). They include data from across a range of levels of anthropogenic disturbance within biomes.
Vegetation cover data were extracted from 500 m × 500 m spatial resolution MODIS land cover grids using the International Geosphere Biosphere Programme (IGBP) classification of biomes (Cohen et al. Reference Cohen, Maiersperger, Turner, Ritts, Pflugmacher, Kennedy, Kirschbaum, Running, Costa and Gower2006). To reduce uncertainties resulting from biome confusions (Hodgens Reference Hodgens2002, Friedl et al. Reference Friedl, Sulla-Menashe, Tan, Schneider, Ramankutty, Sibley and Huang2010), we reclassified IGBP vegetation into forests (evergreen broadleaved forest), woodlands (deciduous broadleaf forests), savannahs (woody savannah and savannah), scrublands (open and closed scrublands), grasslands, croplands (cropland and cropland/natural vegetation mosaics), and urban areas. Varying classification accuracy is a quantified problem in land cover products and overall accuracy of the MODIS IGBP land cover scheme is c. 75% (Friedl et al. Reference Friedl, Sulla-Menashe, Tan, Schneider, Ramankutty, Sibley and Huang2010; Appendix 1, see supplementary material at Journals.cambridge.org/ENC). Because of the consistent generation of these products over time, relative pixel changes per time period will be accurate even if absolute land cover classes are not.
Relationship between fire and biomes
We compared biome burning probabilities with the probability of biome transition. Information on fire locations was extracted from MODIS Active Fire data (Giglio et al. Reference Giglio, Descloitres, Justice and Kaufman2003), provided with 1-km geolocation accuracy by NASA/University of Maryland (2002). We concentrated on fire locations with a reported accuracy ≥ 50%, accepting that this may result in an underestimation of fire frequencies. Fire data were converted to grids, indicating whether a pixel was burned or not in a given year. Note that active fire estimates tend to underestimate the frequency and distribution of smaller short-lived fires, which may flare up and burn out before they are detected. For consistency with the fire information, biome grids were reprojected to 1-km resolution using ArcGIS v9.3.
Assessing rainfall as a driver of change
Precipitation varies considerably in amount and seasonality across East Africa (Nicholson Reference Nicholson2000; Schreck & Semazzi Reference Schreck III and Semazzi2004), impacting on vegetation cover and burning (Archibald et al. Reference Archibald, Nickless, Govender, Scholes and Lehsten2010 demonstrated this for Southern Africa). WorldClim interpolated climatology (covering more than 30 years of measurements, see http://www.worldclim.org/; Hijmans et al. Reference Hijmans, Cameron, Parra, Jones and Jarvis2005) was used to compute long-term mean annual precipitation (MAP) at 1-km spatial resolution for each biome based on biome coverage in 2008, aiming to determine the precipitation niche of each biome.
In addition, we used 10-day rainfall estimates (African Rainfall Estimation Algorithm, RFE version 2.0; National Oceanic and Atmospheric Administration's Climate Prediction Centre, see http://www.cpc.ncep.noaa.gov/products/fews/RFE2.0_tech.pdf) to calculate changes in interannual precipitation (IAP). The RFE algorithm combines satellite information via maximum likelihood estimation, while global telecommunication system station data (rain gauge totals from more than 1000 stations) are used to remove bias. RFE products for the years 2001 to 2009 were converted to annual estimates and reclassified into 100-mm bins. These data are currently the best available tool for modelling interannual variation in vegetation and fire patterns, although applicability is limited in highly heterogeneous landscapes (such as mountainous areas) due to their relatively coarse spatial resolution (8-km grids).
Assessing changes in relation to land management
Biome cover trends (2002–2008), biome burning probabilities and their links to precipitation were analysed separately for each land management scheme. The World Database on Protected Areas (IUCN [International Union for the Conservation of Nature] & UNEP-WCMC [United Nations Environment Programme World Conservation Monitoring Centre] 2010) was used to define the boundaries of five land management schemes that differ in their protection status and effectiveness (Caro et al. Reference Caro, Gardner, Stoner, Fitzherbert and Davenport2009; Pfeifer et al. Reference Pfeifer, Burgess, Swetnam, Platts, Willcock and Marchant2012a): national parks, nature reserves, forest reserves (government, district and village managed forest reserves), game parks (game reserves, game controlled areas and wildlife management areas) and unprotected areas (village, private or open access management). Nature reserves comprise 0.3% of the study area, forest reserves 4.0%, national parks 4.2% and game parks 7.2%. The majority of the study region (82.0%, 3.2 ×106 km2) is not protected. The remaining land area (89 306 km2) is designated under other protection categories (such as national reserves).
We used ANOVA with multi-comparison post-hoc Tukey HSD tests to test for significant differences between biomes and between land management types with regard to the percentage of woody vegetation burning. Spatial analyses were carried out using ArcGIS v9.3 software (http://www.esri.com/). Statistical models and graphics were computed using the R v2.11.1 statistical software environment (http://www.r-project.org/).
RESULTS
Biome distribution and cover trends
Based on vegetation cover in 2008 (Fig. 1a), savannah biomes represented 58% of the terrestrial surface of the East African region. Grasslands (12.9%), scrublands (9.7%), croplands (9.4%), forests (7.2%) and woodlands (1.1%) were much less frequent. Urban areas made up 0.1% of the land surface (Table 2). Between 2002 and 2008 forest cover decreased in area by 5.1%, woodland cover decreased by 15.8% and scrubland cover decreased by 19.4%; cover of savannah biomes increased by 2.7% (Table 2). Around 6% of forest pixels changed to savannah and 5.2% changed to cropland (but only 0.2% to grassland); 5.2% of savannah became grassland and 4.2% cropland (Table 3).
Changes in above-ground live carbon between 2002 and 2008
There was a net loss of above-ground carbon of 494 Mt (CI 95%: − 295 to − 914) due to biome shifts in the study area between 2002 and 2008. Deforestation emissions amounted to 288 Mt. Decreases in scrubland and woodlands resulted in carbon losses of 477 Mt and 70 Mt, respectively. This is partly counterbalanced by carbon gains from increases in savannah and grassland area (Table 2). Carbon loss (as percentage of carbon stocks in 2002) was strongest in Rwanda (34%), followed by Burundi, Kenya, and then Somalia, Uganda and Ethiopia (Table 4). In Rwanda, Burundi and Uganda, deforestation was the predominant driver of carbon stock changes between 2002 and 2008. In Tanzania and Malawi, biome shifts suggest net increases in above-ground live carbon stocks (Table 4), with deforestation emissions at least temporarily offset by increasing savannah and woodland area.
Impacts of vegetation burning and rainfall on biome distribution
Biomes differed strongly in their MAP (ANOVA with multi-comparison post-hoc Tukey HSD, p < 0.001): forests (1582 ± 261; mean ± SD), woodlands (1143 ± 207), cropland (1099 ± 315), savannah (1046 ± 242), grassland (627 ± 206) and scrubland (400 ± 280). Fire probability was highest in woodlands and savannah (percentage burning between 2002 and 2008: 10.5 ± 5.6 and 10.3 ± 5.2, mean ± SD) and significantly different from low fire probabilities in other biomes (ANOVA with multi-comparison post-hoc Tukey HSD, p < 0.001). Interannual variability in vegetation burning was high for each biome (Fig 2c) and possibly linked to annual rainfall patterns (Fig. 2a). IAP across the study region was significantly higher in 2004, 2006 and 2009 compared to other years (Fig. 2; ANOVA with multi-comparison post-hoc Tukey HSD, p < 0.001). Vegetation burning varied strongly among and within years and spatially. No significant correlations were found between annual rainfall and fire statistics (except for forests: p < 0.05, R2adj = 0.55; F-test, p < 0.05; Fig. 2b).
Land management impacts on vegetation and fire patterns
Vegetation composition and biome cover trends differed between land management types (Fig. 3; Appendix 1, Fig. S1, see supplementary material at Journals.cambridge.org/ENC)). Forest cover decreased in all management types except national parks (though leakage occurs and forest clearance immediately outside major national parks is a common problem; see Pfeifer et al. Reference Pfeifer, Burgess, Swetnam, Platts, Willcock and Marchant2012a). The decrease in forest area compared with the 2002 baseline was strongest in unprotected areas, followed by game parks (which includes hunting areas, where people are allowed to reside within park boundaries), forest reserves and nature reserves (both should not have people living in them legally). Woodland area increased in nature reserves, national parks and game parks, but decreased in forest reserves and on unprotected land. Savannah cover increased considerably in all land management schemes, except national parks. Decrease in scrubland area was strongest on unprotected land. Biome burning was highest in forest reserves and on unprotected land (Fig. 4), but did not differ significantly between land management categories (ANOVA with multi-comparison post-hoc Tukey HSD, p > 0.5).
DISCUSSION
Changes in forested areas and above-ground carbon
African landscapes are the product of complex social, economic and ecological processes interacting over millennia. Forest conversion to cropland and forest degradation due to logging and fire is common in some areas, but is counterbalanced by increasing tree cover due to cropland abandonment and afforestation programmes in others (Wardell et al. Reference Wardell, Reenberg and Tøttrup2003). Carbon stored in the aboveground living biomass of trees is a major carbon pool in tropical forest ecosystems that is most directly impacted by deforestation and forest degradation (Gibbs et al. Reference Gibbs, Brown, Niles and Foley2007).
Deforestation rates at landscape scales can be derived using freely available land cover products derived from earth observation measurements (discussed in Pfeifer et al. Reference Pfeifer, Burgess, Swetnam, Platts, Willcock and Marchant2012Reference Pfeifer, Disney, Quaife and Marchantb). If the mean historic rate of deforestation is used as a predictor of future deforestation rates, this can provide practical a way forward for measuring emissions avoided as a result of REDD+ payments in a landscape-scale context, especially in regions where ground-based measurements are scarce (Griscom et al. Reference Griscom, Shoch, Stanley, Cortez and Virgilio2009). In this paper, we have shown that carbon loss resulting from deforestation (5.1% in the studied period) in East Africa translates to 288 Mt (0.288 Pg C) between 2002 and 2008, or 0.05 Pg C yr−1. This is considerably lower than deforestation emissions reported for tropical Africa during the 1980s (DeFries et al. Reference DeFries, Houghton, Hansen, Field, Skole and Townshend2002: 0.10) and 1990s (DeFries et al. Reference DeFries, Houghton, Hansen, Field, Skole and Townshend2002: 0.14; Houghton Reference Houghton2003: 0.35; Achard et al. Reference Achard, Eva, Mayaux, Stibig and Belward2004: 0.16), either because there is increasingly less forest left to remove or because forest conservation efforts are starting to show. Carbon emissions from deforestation in 1980 (Houghton et al. Reference Houghton, Boone, Fruci, Hobbie, Mellilo, Palm, Peterson, Shaver and Woodwell1987) were 0.0 Pg C yr−1 for Burundi (compare with 0.0 Pg C yr−1 for the period 2002–2008), 1.7 Pg C yr−1 for Kenya (0.04 Pg C yr−1 2002–2008), 0.3 Pg C yr−1 for Rwanda (0.01 Pg C yr−1 2002–2008), 4.9 Pg C yr−1 for Tanzania (0.01 Pg C yr−1 2002–2008) and 2.2 Pg C yr−1 for Uganda (0.01 Pg C yr−1 2002–2008). Pan et al. (Reference Pan, Birdsey, Fang, Houghton, Kauppi, Kurz, Phillips, Shvidenko, Lewis, Canadell, Ciais, Jackson, Pacala, McGuire, Piao, Rautiainen, Sitch and Hayes2011) suggested that the global deforestation emission is mostly compensated by C uptakes in tropical regrowth and intact forests.
With the exception of Tanzania and northern Malawi, East Africa's countries are sources of carbon emissions. Emissions from land-use changes amount to 0.08 Pg C yr−1 in East Africa and are generally comparable to net annual carbon fluxes reported for tropical Africa in the 1980s (DeFries et al. Reference DeFries, Houghton, Hansen, Field, Skole and Townshend2002: 0.09 Pg C yr−1; Houghton Reference Houghton2003: 0.28 Pg C yr−1) and in the 1990s (DeFries et al. Reference DeFries, Houghton, Hansen, Field, Skole and Townshend2002: 0.12 Pg C yr−1; Houghton Reference Houghton2003: 0.35 Pg C yr−1). Carbon loss from deforestation (predominant in Uganda, Rwanda and Burundi) and forest degradation to woodlands, scrubland or savannah (30 Mt, 9 Mt and 259 Mt respectively, between 2002 and 2008) is counterbalanced by transition of woodlands and savannah to forest (13 Mt and 168 Mt between 2002 and 2008). This underlines how accounting for above-ground carbon stocks in woody biomes can change a country's RL considerably (Table 4), especially in Africa, where carbon storage appears evenly distributed between forests (54.1%) and other woody vegetation (45.9%) (Baccini et al. Reference Baccini, Goetz, Walker, Laporte, Sun, Sulla-Menashe, Hackler, Beck, Dubayah, Friedl, Samanta and Houghton2012).
Overall, the magnitude of carbon estimates for forests in East African countries derived in our study are broadly similar to findings from other sources (Table 5). Our study underestimates forest-based carbon in Kenya and Tanzania compared to assessments by the Food and Agriculture Organization of the United Nations (FAO 2010), probably because the FAO definition of forests is more inclusive of some savannah formations (Table 5). However, we find more pronounced carbon losses caused by deforestation (for example in Burundi); the 50% carbon loss identified in Rwanda contradicts the carbon increase reported by the FAO for the 2000–2010 period (Table 5). Country-level estimates of carbon stocks reported by the FAO are based on forest inventory data and are known to be biased, owing to inconsistent methods and inadequate sampling for extrapolation at national scales (Gibbs et al. Reference Gibbs, Brown, Niles and Foley2007).
Although our study presents independent estimates of carbon fluxes in East Africa, interpretations for management should be handled cautiously, and we emphasize that ground-based measurements should be preferred where sufficient coverage exists. In particular, we draw attention to three potential sources of error in the carbon flux estimates presented here. Firstly, using biome-average carbon estimates can introduce bias in estimates of deforestation emissions, especially if the number of plots sampled is low and if the forests that are cleared differ systematically from those measured for carbon; see Gibbs et al. Reference Gibbs, Brown, Niles and Foley2007). Carbon storage within biomes varies spatially (see confidence intervals in Table 1), because of vegetation growth conditions along bioclimatic gradients and species composition (Gibbs et al. Reference Gibbs, Brown, Niles and Foley2007; Shirima et al. Reference Shirima, Munishi, Lewis, Burgess, Marshall, Balmford, Swetnam and Zahabu2011), thus introducing large uncertainties into estimates of terrestrial carbon emissions (Baccini et al. Reference Baccini, Goetz, Walker, Laporte, Sun, Sulla-Menashe, Hackler, Beck, Dubayah, Friedl, Samanta and Houghton2012).
Secondly, we note that the spatial resolution of MODIS land cover (500-m pixels) hampers accounting for carbon loss resulting from degradation or fragmentation at the sub-pixel scale. Probable confusion between grasslands and croplands due to spectral similarity will overestimate carbon gains through increases in grassland cover, although the impact of these uncertainties on large-scale carbon assessments is less important owing to the low aboveground carbon storage in these systems. Woodland and savannah biomes are difficult to distinguish based on their spectral signatures, although more clearly separated from forests, most crops and scrubland. Thus, uncertainties in the estimation of carbon flows resulting from transitions between woody biomes remain high. Comparisons of MODIS biomes with field surveys carried out in Tanzania indicate that small-scale farming within scrubland and savannah biomes is difficult to distinguish from scrublands using remote sensing (32% of cropland plots were within MODIS scrubland pixels), but this equally applies to higher-resolution images (20 × 20 to 30 × 30 m2) provided by Landsat and SPOT (M. Pfeifer, unpublished data 2011).
Thirdly, we limited our monitoring to one of the five carbon pools required by the Intergovernmental Panel for Climate Change (IPCC) reporting (IPCC 2007). Carbon release from soil especially during forest to cropland conversion is high (Houghton Reference Houghton2003); soil carbon change will ultimately alter our findings.
Fire impacts on biome shifts
Fire frequencies differ among biomes (dominating in woodlands and savannah) and seasons, reflecting differences in rainfall and build-up of flammable stock as sources of ignition (Smit et al. Reference Smit, Asner, Govender, Kenny-Bowdoin, Knapp and Jacobson2010). Savannah fires are usually followed by tree regrowth, but contribute significantly to short-term carbon emissions in East Africa. Field data on fire impacts on forest biomass are rare for East Africa. Our analyses indicate that forest fires, although infrequent, reduce biomass and increase the probability of forest degradation.
Fire is assumed to suppress woody cover in mesic and wet savannahs (Higgins et al. Reference Higgins, Bond, February, Bronn, Euston-Brown, Enslin, Govender, Rademan, O'Regan, Potgieter, Scheiter, Sowry, Trollope and Trollope2007). However, resprouting of savannah trees after fire is common and low-intensity fires are needed to maintain biomass (Ryan & Williams Reference Ryan and Williams2011). Non-detection of fire impacts on woodland and savannah cover implies that fire impacts and/or human pressures (since fires are often human-ignited) are below sustainability thresholds, savannahs being a model system of historical human-ecosystem interactions (Marchant Reference Marchant2010). Local-scale studies show fire- and land-use associated degradation, with negative effects on carbon storage and biomass in Kenyan and Tanzanian Acacia-dominated woody savannah biomes (Okello et al. Reference Okello, Young, Riginos, Kelly and O'Connor2007; Cochard & Edwards Reference Cochard and Edwards2011). Such fine-scale impacts are difficult to detect at the scales at which this study was conducted, but could potentially be captured by refining land cover types, using more detailed remote sensing maps and enlisting community engagement for participatory forest assessment (Topp-Jørgensen et al. Reference Topp-Jørgensen, Poulsen, Lund and Massao2005).
Rainfall and biome burning
We detected significant correlations between annual rainfall and forest burning, despite the complexity of the East African climate driven by the biannual north-south migration of the inter-tropical convergence zone, the Indian Ocean Dipole (Marchant et al. Reference Marchant, Mumbi, Behera and Yamagata2006) and El Niño Southern Oscillation (ENSO) climate variability (Schreck & Semazzi Reference Schreck III and Semazzi2004). East Africa's rainfall between 2002 and 2008 carried ENSO signals (El Niño events in the Pacific in 2002, 2004 and 2006, and the La Niña event in 2007), which were correlated with fire frequency (NOAA [National Oceanic and Atmospheric Administration] 2011). Greater burning was seen the next burning season after the onset of the ENSO. This supports findings that ENSO events are linked to burned area in tropical East Africa (Riaño et al. Reference Riaño, Ruiz, Martinez and Ustin2007) although further investigation is needed to assess the potential linkages with sea surface temperature variability in the Indian Ocean.
Vegetation changes in relation to land management
Land management in East Africa is associated with different land use restrictions. Typically, national parks and game parks are well patrolled and exclude settlement. Forest reserves are managed for ‘sustainable’ timber extraction and catchment protection and are less well funded, while nature reserves are designed to protect forest biodiversity (Caro et al. Reference Caro, Gardner, Stoner, Fitzherbert and Davenport2009).
Between 2002 and 2008, game parks experienced higher rates of forest loss compared to other protected areas, probably a result of synergistic effects of fire and herbivore activity in woody cover suppression (Holdo et al. Reference Holdo, Holt and Fryxell2009). Deforestation encroachment across boundaries of nature and forest reserves is common. However, the decline in East African forests dominates on unprotected land (> 11 000 km2). Fire frequencies differ slightly between land management types, with more frequent fires in less well patrolled protected areas, suggesting that humans contribute to fire ignitions. However, these differences in fire may also reflect different vegetation composition, with a higher percentage of fire-prone vegetation in unprotected areas, game reserves and forest reserves (see Fig. 3).
Spatial variability in protected area effectiveness is high within land management categories. Some reserves may have increased their forest area, even if on the macroscale these increases are overtaken by forest loss in other reserves. The size of the forest within a protected area appears to have measurable effects on its susceptibility to changes, with smaller forests being more likely to experience a decrease (Pfeifer et al. Reference Pfeifer, Burgess, Swetnam, Platts, Willcock and Marchant2012a). Detailed analyses across spatial scales, and accounting for differences in park rule implementation between countries, are necessary before drawing final management conclusions.
Implications for forest management and carbon assessment
Our approach provides a landscape scale context for assessing and monitoring a country's or region's land-use change and associated carbon changes. Limitations of our approach (due to classification errors and spatial resolution) do not allow for replacing local and high-spatial resolution monitoring activities (such as REDD+ projects carried out in Tanzania), which can detect forest degradation and fragmentation (Burgess et al. Reference Burgess, Bahane, Clairs, Danielsen, Dalsgaard, Funder, Hagelberg, Harrison, Haule, Kabalimu, Kilahama, Kilawe, Lewis, Lovett, Lyatuu, Marshall, Meshack, Miles, Milledge, Munishi, Nashanda, Shirima, Swetnam, Willcock, Williams and Zahabu2010; Skutsch & Ba Reference Skutsch and Ba2011). However, our approach can potentially make these high-effort activities more cost- and time-effective, by focusing them toward hotspots of carbon flux. Combining biome-change maps with fire products, climate data, land surface trait information and biodiversity maps can help to inform subsequent adaptive management plans, by aiding in the detection of drivers that underlie carbon emissions at the landscape scale and identifying biodiversity cobenefits of adaptive land management (Busch et al. Reference Busch, Godoy, Turner and Harvey2010; Hannah Reference Hannah2010; Strassburg et al. Reference Strassburg, Rodrigues, Gusti, Balmford, Fritz, Obersteiner, Turner and Brooks2012).
Possible management in East Africa may include controlled burning of areas around forests prior to fire seasons, which could increase carbon storage by increasing tree densities and create local ‘carbon sinks’ (Scheiter & Higgins Reference Scheiter and Higgins2009). Early season burning in woody biomes of communal areas can break up fuel loads for later fires, preventing high intensity fire damage (Laris & Wardell Reference Laris and Wardell2006). However, accompanying studies are necessary to evaluate fire suppression effects on fire-adapted vegetation assemblages in East Africa, to avoid compromising other conservation targets, such as biodiversity (Masocha et al. Reference Masocha, Skidmore, Poshiwa and Prins2011).
Protected area information, as provided for example by the World Database on Protected Areas, can aid in identifying country-specific land management solutions. As our analyses show, adjusting the protection status of forested areas towards national parks may offer viable long-term solutions for forest and carbon conservation. However, alternative sources for energy and income will have to be provided to avoid increasing poverty and leakage, in other words the displacement of biomass consumption to the nearest unprotected forest (Thomson et al. Reference Thomson, Calvin, Chini, Hurtt, Edmonds, Bond-Lamberty, Frolking, Wise and Janetos2010; Fisher et al. Reference Fisher, Lewis, Burgess, Malimbwi, Munishi, Swetnam, Turner, Willcock and Balmford2011; Pfeifer et al. Reference Pfeifer, Burgess, Swetnam, Platts, Willcock and Marchant2012a).
CONCLUSIONS
Land-use change detection can be based on global earth observation products providing a rapid assessment tool for estimating landscape scale changes in carbon and forest cover. Four main conclusions are drawn from our East African analyses. Firstly, forest and carbon losses are on-going, albeit at probably lower rates compared to the last century. Secondly, carbon gains occur in some areas, seen in the increasing extent of woody biomes such as Acacia-Commiphora savannah or Miombo woodland. Thirdly, fire management schemes (if effective) may be able to reduce carbon emissions from woodlands and woody savannah. Fourth, national parks function as effective carbon stores and sinks and so could make a contribution towards national delivery of REDD+, however, REDD will ultimately fail unless the drivers of deforestation and degradation are addressed.
ACKNOWLEDGEMENTS
Marion Pfeifer was supported by the Marie Curie Intra-European fellowship IEF Programme (EU FP7-People-IEF-2008 Grant Agreement n°234394). Ruth Swetnam, Philip Platts, Simon Willcock and Simon Lewis were funded by the Leverhulme Trust through the Valuing the Arc Programme. Simon Lewis is funded by a Royal Society University research fellowship. Rob Marchant and Philip Platts were additionally supported by the Ministry for Foreign Affairs of Finland through the CHIESA Project. We are grateful to Minnie Wong (University of Maryland) for provision of MODIS fire hotspots data. We acknowledge the British Institute in East Africa for logistic support during field work. We thank anonymous reviewers for their helpful comments.