Biophysical effects on temperature and precipitation due to land cover change

Anthropogenic land cover changes (LCC) affect regional and global climate through biophysical variations of the surface energy budget mediated by albedo, evapotranspiration, and roughness. This change in surface energy budget may exacerbate or counteract biogeochemical greenhouse gas effects of LCC, with a large body of emerging assessments being produced, sometimes apparently contradictory. We reviewed the existing scientific literature with the objective to provide an overview of the state-of-the-knowledge of the biophysical LCC climate effects, in support of the assessment of mitigation/adaptation land policies. Out of the published studies that were analyzed, 28 papers fulfilled the eligibility criteria, providing surface air temperature and/or precipitation change with respect to LCC regionally and/or globally. We provide a synthesis of the signal, magnitude and uncertainty of temperature and precipitation changes in response to LCC biophysical effects by climate region (boreal/temperate/tropical) and by key land cover transitions. Model results indicate that a modification of biophysical processes at the land surface has a strong regional climate effect, and non-negligible global impact on temperature. Simulations experiments of large-scale (i.e. complete) regional deforestation lead to a mean reduction in precipitation in all regions, while air surface temperature increases in the tropics and decreases in boreal regions. The net global climate effects of regional deforestation are less certain. There is an overall consensus in the model experiments that the average global biophysical climate response to complete global deforestation is atmospheric cooling and drying. Observed estimates of temperature change following deforestation indicate a smaller effect than model-based regional estimates in boreal regions, comparable results in the tropics, and contrasting results in temperate regions. Regional/local biophysical effects following LCC are important for local climate, water cycle, ecosystems, their productivity and biodiversity, and thus important to consider in the formulation of adaptation policy. However before considering the inclusion of biophysical climate effects of LCC under the UNFCCC, science has to provide robust tools and methods for estimation of both country and global level effects.


Background
Land cover changes (LCC) have a recognized effect on climate through two different processes: modifications in the net flux of greenhouse gases such as CO 2 , from changes in vegetation and soil carbon (biogeochemical effects); and variations of the surface energy budget mediated by albedo, evapotranspiration, and roughness (biophysical effects) (Pielke et al 1998, Betts 2000 The international policy process within the United Nation Framework Convention on Climate Change (UNFCCC) focuses entirely on biogeochemical effects of greenhouse gas sources and sinks on global radiative forcing (RF).
Globally, net biogeochemical LCC effects have contributed around 30% of CO 2 emissions since preindustrial times, with net LCC emissions declining over the last decade due to a reduction in deforestation rates primarily in Brazil, and reforestation in regions such as the USA, Europe, China and India. Since the year 2000, LCC contributed just under 10% of total anthropogenic CO 2 emissions (Smith et al 2013, Smith et al 2014, Le Queré et al 2015. The land sector as a whole, including CH 4 and N 2 O flux from agriculture, contributes around 24% of total anthropogenic greenhouse gas emissions (Smith et al 2013, Smith et al 2014, Tubiello et al 2015. The land surface and LCC contribute to biophysical effects in the following way (figure 1): incoming solar energy is partly reflected back into the atmosphere depending on the surface albedo (reflectiveness), and partly absorbed at the surface and subsequently partitioned into latent and sensible heat fluxes depending on the soil water balance, canopy conductance and vegetation aerodynamic properties The effects of land surface albedo change can be quantified in terms of RF (Betts 2000, Pielke et al 2002, and this has been used in attempts to quantify the global significance of biophysical effects of historical LCC compared to CO 2 fluxes (Betts 2000, Marland et al 2003, Schwaiger and Bird 2010. The Intergovernmental Panel on Climate Change (IPCC) estimates that historical anthropogenic LCC has increased the land surface albedo, with an associated negative effect on RF of -0.15 [-0.25 to -0.05] W m -2 relative to the pre-industrial level, compared with the biogeochemical radiative forcing from all anthropogenic changes in atmospheric CO 2 concentration (i.e. fossil fuels and LCC) of 1.68 [1.33 to 2.03] Wm À2 (Myhre et al 2013). There are additional biophysical LCC effects on surface temperature that are not radiative, which tend to offset the impact of albedo changes at the global scale. However, due to the high uncertainties in quantifying their impacts, the IPCC concluded there is low agreement on the sign of the net change in global mean temperature because of biophysical LCC effects (Myhre et al 2013).
The partitioning of available energy into latent and sensible heat fluxes exerts a direct and significant local impact (warming or cooling) mainly on near-surface air temperature (Pielke et al 2002), yet the impact on the global average air temperature is limited even under extreme scenarios of LCC. Davin and De Noblet-Ducoudré (2010) reported that the global mean effect on temperature from total global deforestation associated with changes in evapotranspiration is approximately five times smaller than the albedo effect but with an opposite sign: þ0.24°C versus À1.36°C respectively. The assessment of the true global significance of biophysical forcing feedbacks is not trivial, since the LCC in a region may give rise to nonlinear changes in climate in remote areas through teleconnections (Pielke et al 2002, Pielke et al 2011, Mahmood et al 2014, Lawrence and Vandecar 2015. The net local/regional impacts are dependent on the type of LCC and on local conditions. Forested landscape is generally darker (lower albedo) than open land, especially in northern regions during seasons with snow cover (Betts 2000). Deforestation, with few exceptions, leads to higher albedo and decreased net radiation at the surface (Alton 2009), with a potential reduction of surface temperatures (Betts 2000, Bonan 2008, Devaraju et al 2015. The albedo-induced decrease of temperature following deforestation can be locally offset by the warming effect due to a decrease of latent heat flux, with a resulting net warming effect of the surface, along with a decrease of precipitation (Henderson-Sellers et al 1993, Pielke et al 2002, Feddema et al 2005, Bala et al 2007, Jackson et al 2008, Nobre et al 2009, Arora and Montenegro 2011, Luyssaert et al 2014, Mahmood et al 2014, Spracklen and Garcia-Carreras 2015, Lawrence and Vandecar 2015. Latent heat fluxes are usually larger over forests compared to herbaceous vegetation due to deeper rooting, greater transpiring leaf area, and increased roughness (Pielke et al 1998, Nobre et al 2009, Davin and de Noblet-Ducoudré 2010, Ban-Weiss et al 2011. Conversion from forest to grassland tends to reduce the surface roughness thus decreasing the turbulent exchange of heat in the boundary layer (Davin andde Noblet-Ducoudré 2010, de Noblet-Ducoudré et al 2012).
In summary, deforestation causes two opposite biophysical effects: a radiative cooling effect due to the increase in surface albedo and a non-radiative warming effect due the concomitant decrease in evapotranspiration and in surface roughness (Sanderson et al 2012). The balance of the two effects has a strong latitudinal correlation. Deforestation in the boreal zones induces a cooling dominated by the increase of albedo, with some net warming effects dominated by reduced evapotranspiration in the summer (Betts 2000, Bala et al 2007, Brovkin et al 2013a, Davin and de Noblet-Ducoudré 2010, Schwaiger and Bird 2010, De Wit et al 2014. In the tropics the net impact is typically a warming due to the dominant influence of evapotranspiration and surface roughness (Henderson-Sellers et al 1993, Pielke et al 2002, Feddema et al 2005, Bala et al 2007, Jackson et al 2008. A consultation carried out in June 2014 as part of the EU Project, LUC4C (www.luc4c.eu), with 36 respondents at international level (UNFCCC government delegates) mainly involved in the land sector negotiations, found 60% of respondents un-aware (or with low awareness) of the biophysical climate effects of LCC. However, when provided some background information, more than half of the respondents replied that the future climate change policy process should also consider the regional temperature and precipitation biophysical LCC effects to maximize synergies between local and global climate mitigation and adaptation policies. One emerging question was how to provide a simple climate metric that summarizes the changes in temperature and precipitation due to biophysical impacts.
Several studies have already advocated for a more comprehensive assessment of the net climate effect of LCC policies on climate, beyond the global warming potential (e.g. Pielke et al 2002, Marland et al 2003, West et al 2011, Castillo et al 2012, Davies-Barnard et al 2014, Bright et al 2015, although without providing specific metrics or composite indices because of barriers encountered due to scale and uncertainty issues linked to the radiative and nonradiative biophysical effects. While assessments of the full climate impacts of anthropogenic LCC are incomplete without considering biophysical effects, the high level of uncertainties in quantifying their impacts to date have made it impractical to offer clear advice on which policy makers could act. Given the growing body of scientific literature on the biophysical climate impacts of LCC, and the policy relevance, this review aims to: (i) produce a synthesis of the LCC biophysical interplay with regional and global climate and (ii) provide an evidence base to policy makers on which to judge the need for an assessment of biophysical changes caused by land-based mitigation/adaptation policies.

Methods
The systematic quantitative review of the LCC biophysical climate impacts presented in this study is based on peer-reviewed articles that focus on surface air temperature (T) and precipitation (P) changes. The review focuses on changes due to explicit LCC transitions, in order to characterize the potential biophysical effect of a defined land cover change, e.g. land conversion from forest to grassland, or from shrub land to bare land etc. Most of the model-based papers that consider global biophysical effects on temperature are based on LCC projections driven by socio-economic scenarios ( For these studies it is impossible to separate the net effect of each explicit regional LCC on climate signal since results are derived from mixed LCC transitions. This review focuses on surface air temperature (2 meters) and precipitation for two main reasons: (i) they are the main variable of interest for policy makers at local and regional level, and (ii) they result from the combined effect of biophysical radiative and nonradiative processes, thus representing the synthesis variables of biophysical effect on climate.
The literature research was performed mainly on Google Scholar, using the following search terms (in various combinations): land cover change, biophysical effects, temperature, precipitation, climate change, deforestation. The resulting papers were then screened on the basis of the eligibility criteria listed below. Each study must: -Report variation in surface air (2 meters) temperature (T) and/or precipitation (P) caused by an explicit transition in LCC; -Consider annual average change values of T and/ or P; -Report the effects at the regional and/or global level. Studies reporting only site specific effects are not included due to the lack of representativeness at the regional/global level; -Report only the variation in T or P due to biophysical factors, i.e. separately from any biogeochemical effect; -Be published after January 2000.
Out of the 127 published studies that were analyzed (full list in supplementary information available at stacks.iop.org/ERL/12/053002/mmedia), 28 fulfilled the eligibility criteria, out of which 3 papers were based on observations and 25 were based on model outputs (table 1). The observation-driven assessments were based on in situ measurements (Lee et al 2011, Zhang et al 2014 or satellite observations (Alkama and Cescatti 2016) adopting one of two approaches (a) the space-for-time analogy (Lee et al 2011, Zhang et al 2014, meaning that spatial differences in surface air temperature between areas with different land cover have been interpreted as the climate signal of hypothetical LCC over time; (b) a time series analysis, assessing recent land cover transitions through time from satellite imagery (Alkama and Cescatti 2016). Modeling papers fulfilling the eligibility criteria include only LCC extreme scenarios of complete change of an explicit land cover category into another either over the globe, or for specific climate zones (tropical/temperate/boreal) or sub-regions (e.g. Amazon).
Data on P and T were collected in a database and transferred to common units (e.g. precipitation anomalies were transformed from mm per day to mm per year).
Since biophysical effects vary greatly in sign and magnitude depending on the latitude and ecosystems where they occur (Betts 2000, Bala et al 2007, Davin and de Noblet-Ducoudré 2010, Schwaiger and Bird 2010, Brovkin et al 2013b, De Wit et al 2014, data were grouped into one of three main climate zones (Boreal, Temperate and Tropical), using the classification reported by the original papers, providing the average, range (max-min) and standard deviation (when at least three entries were available) of the data clustered for each LCC transition. A single study may provide results for LCC effects in more than one geographic region within the same climate zone (e.g. Amazon, Africa, South-East Asia), (e.g. Voldoire and Royer 2005) or for different biomes within a climate zone (e.g. grassland, forest) (e.g. Snyder et al 2004). We note that model experiments do not use standardized definitions of the climatic zones thus these may differ slightly between studies, both in terms of LCC extent, and the area over which changes in biophysical effects are calculated. Nevertheless modeling studies included in our work are considering idealized land cover change, where 100% of the land cover is removed/changed for the whole climate zone or globe to assess the effect on temperature or precipitation of each land cover change. Given the huge extension of such land cover conversion, the modeling studies are considered to be comparable to each other.
Results were presented in 'Regional' or 'Global' sub-classes as follows: 'Regional LCC effects' are the regional (i.e. same climate zone) averaged changes of annual DT in response to the corresponding regional LCC while 'Global LCC effects' are the global net changes of annual DT in response to regional or global LCC.
Data were further grouped according to LCC transition type, categorizing specific transitions between 'forest' land and other major land cover types, but also grouping into generic 'deforestation' or 'forestation' cases.
Observed and modeled data were treated separately since they are not directly comparable, mainly due to differences in the scale of LCC they consider.

Review results and discussion
3.1. Temperature: regional effects Eighteen studies reported data on changes in annual regional surface air temperature due to regional LCC (table 2). Figures 2(a) and (b) summarize the range of changes in surface air temperature due to biophysical factors in different climate zones for the two main LCC transitions: forestation and deforestation.

Boreal
In the boreal zone (table 2(a)), model simulations indicated regional cooling due to deforestation, ranging Environ. Res. Lett. 12 (2017) 053002 L Perugini et al from À4°C to À0.82°C. The largest cooling, on average, resulted after the conversion from forest to bare land although the highest single value reported was from a deforestation experiment with conversion to grassland (Devaraju et al 2015). Boreal evergreen forest vegetation has lower albedo than grasses both during the growing season (evergreen leaves are darker than deciduous leaves and herbaceous vegetation) and during winter, when tree crowns shade the underlying snow layer and reduce the albedo considerably (Betts 2000). Only one study (Bathiany et al 2010) investigated both boreal deforestation and forestation and showed a warming in the forestation case, with deforestation (À18.55 million of km 2 ) and forestation (þ26.72 million of km 2 ) having similar magnitude of signals of opposite sign (respectively À1.1°C and þ1.2°C).
Observations show a large range in results for deforestation (À0.95°C to þ0.04°C) with ground measurement studies (Zhang et al 2014, Lee et al 2011 showing a consistent cooling while satellite data (Alkama and Cescatti 2016) gives a small warming (þ0.04°C). On average there is a cooling effect of deforestation (À0.59°C) that is smaller when compared to the model based outputs (À2.18°C). Most likely this is because observations focus on small-scale deforestation while modeled studies consider stylized and large-scale LCC. Concerning the scale issue, Lorenz and Pitman (2014) have demonstrated that the climatic response increases with the size of deforestation. Furthermore, large-scale deforestation in climate models triggers large feedbacks through e.g. ocean and sea-ice dynamics that may amplify the climate impacts Table 1. Summary characteristics of the papers included in the analysis. ΔT, ΔP: change in surface air temperature (2 meters) and precipitation in response to land cover change. SST: sea-surface temperature.   ( Observations show an opposite result compared to the model experiments, i.e. a warming associated with deforestation (0.50°C) and a cooling effect associated with forestation (À0.50°C), but with uncertainty regarding the sign. Using observation data from a network of surface stations with contrasting land cover, Lee et al (2011) reports that the temperate sites show weaker radiative (albedo) cooling but stronger non-radiative (heat-exchange) warming compared with the boreal sites, with a resulting effect of À0.21°C ranging from À0.74°C to 0.32°C, while Alkama and Cescatti (2016) from satellite retrieval observe a clear systematic warming (1.2 ± 0.02°C) following deforestation. As stated in the previous section, observations capture only local effects of small scale LCC and are therefore not directly comparable with idealized model simulations of large scale land transformations.
The net impact of changes in albedo and evapotranspiration on climate from deforestation depends greatly on local climate in all regions (Bonan 2008), but particularly so in temperate latitudes where the opposing radiative (albedo) effects and non-radiative (heat exchange) effects are of comparable size and different sign, so that they compensate leading to small and uncertain net annual temperature changes (Pitman et al 2011). Depending on the location, the dominant effect may be an average annual warming (e.g. in grassland regions of Central US, mostly affected by evapotranspiration reduction), or cooling (e.g. in the steppe region of Asia, mostly affected by albedo increase) (Snyder et al 2004). In the temperate climate zone, large heterogeneity in terms of albedo and evapotranspiration associated to the different spatial scale of LCC transitions between the observed and modeled data could explain these contrasting results. Furthermore, the observations by Alkama and Cescatti (2016) and Lee et al (2011) refer to a recent decade characterized by warming and consequent reduction of snow cover compared to the reference period used for model simulations, which may explain the greater importance of changes in evapotranspiration and the reduction of the snowalbedo effect in the observations.

Tropical region
In the tropics, published papers on deforestation show a systematic and pronounced biophysical warming (table 2(c), figure 2 (a) and (b)). In model experiments, the deforestation-induced warming is 0.60 ± 0.74°C with only small variation as a function of the final land cover. Shrub land conversion to cropland or bare ground leads to a warming effect of 0.50°C or 0.55 ± 0.62°C, respectively, with the smallest effect found in Australia (Snyder et al 2004). Forestation shows opposite results but of lower magnitude, with a cooling effect of À0.17 ± 0.12°C in the modeled data.
Observations show the same warming effect of deforestation with a comparable magnitude to the Biophysical effects of complete regional LCC deforestation and forestation on regional and global average surface air temperatures (°C). Red crosses represent observational results, whereas black represent results from model simulations. The filled triangles are the mean of each cluster. Panels (a) and (b) show the regional DT associated with regional deforestation and forestation respectively, panels (c) and (d) show the global DT associated with regional and global deforestation and forestation. In general, the studies confirm that the change in evapotranspiration is the dominant biophysical factor in the tropics as opposed to albedo in the boreal (and to some degree also in the temperate) zone. Reduction in leaf area index due to deforestation typically triggers a warming as a result of reduced latent heat flux and corresponding increased sensible heat flux. The smaller modelled effects of forestation compared to deforestation in Bathiany et al (2010), who compared the two types of LCC, was interpreted as being partly due to lower productivity in recently established regrowing forests due to changes towards a dryer microclimate of land that had previously been deforested. Furthermore, the amount of converted area is typically much less in forestation experiments, where there are more limited areas available for forestation, compared to the amount of land available for forest removal in the deforestation experiments. In Bathiany et al (2010) the reforested area in the tropical zone is less than half of the deforested area (þ10.52 and À23.07 million km 2 respectively). Another explanation is that a reforested canopy may take years before reaching the same structural and biophysical characteristics of a mature forest. Some models simulate growth of forest from bare ground with changing biophysical characteristics, e.g. Arora and Montenegro (2011) state that as vegetation grows on the afforested fraction of grid cells the albedo changes rapidly within the first 5-7 years.

Temperature: global effects
In table 3 and figure 2(c) and (d), we summarize changes in global average temperature due to regional LCC, while table 4 and figure 2(c) and (d) show the changes in global average temperature due to global LCC model experiments.
The modeled regional LCC effects on global annual average surface air temperatures (table 3, figure 2(c) and (d)) suggest that the effects on regional temperature (table 2) propagate globally in terms of a similar sign of DT signal, but the magnitude of global temperature change is smaller. Forestation experiments show negligible alterations of the global annual average surface air temperature, ranging from 0.13°C (boreal region) to À0.07°C (tropical region). Both boreal (À0.49 ± 0.36°C) and temperate (À0.5°C) regional deforestations have larger impact on global surface air temperatures, compared to tropical deforestation (0.16 ± 0.26°C). Even though the mean of model results for boreal deforestation indicates regionally a larger cooling compared to temperate deforestation, both induce the same cooling of about À0.5°C globally. This may be due to different teleconnections (Hasler et al 2009, Snyder et al 2010, Pielke et al 2011, or a consequence of the difference in the global distribution of present boreal and temperate forests. When a total global deforestation scenario is considered (table 4, figure 2(c)), the overall effect is a net cooling for deforestation (À1.25°C) and a warming in case of forestation (0.76 ± 1.33°C) (table 4, figure 2(d)). Despite the paucity of the data, it is noteworthy that a global deforestation has been shown to have almost twice the effect in magnitude than a global forestation, probably due to the different areas of land available for complete global deforestation or forestation. These results imply that the cooling of boreal deforestation apparently dominates over warming from tropical deforestation ( figure 2(c)). This may be the consequence of both higher local DT absolute value in the boreal region, and a wider distribution of boreal and temperate ecozones impact. Moreover, temperate regions display comparable temperature changes to boreal ones, further influencing the cooling effect of a hypothetical global deforestation. In case of forestation, boreal and temperate regions dominate also because of the small effect of tropical forestation on global temperature change.

Precipitation
Assessments of the biophysical effect of LCC on precipitation available in the literature that met our selection criteria are exclusively from modelling experiments. The 16 articles that fulfilled the criteria for this review involve mainly a reduction of vegetation cover, and mostly cover the tropical climate zone. As expected, at a regional scale, a reduction of vegetation triggers a significant reduction in precipitation amounts due to a modification of the evapotranspiration regime and consequently of the regional water cycle (Snyder et al 2004, Hasler et al 2009, Bathiany et al 2010, although the magnitude varies significantly with the latitude at which the LCC occurs (table 5, figure 3).

Boreal
The analysis of the boreal climate zone is based on two articles that consistently predict a decrease of precipitation following the removal of forest or shrub vegetation (table 5(   forest and shrub vegetation to bare ground is a reduction in precipitation of up to À110 mm yr À1 , about 15% of the annual total precipitation, with means of À88 ± 51 and À73 ± 17 mm yr À1 respectively. When forests are replaced by grassland, the decline of precipitation is less, at À58 mm yr À1 . Beringer et al (2005) suggest that there may be only slight differences in the evapotranspiration ratio (ET/ net_Radiation) between different vegetation covers in boreal regions. This is probably due to the fact that in the boreal zone evapotranspiration is limited by the atmospheric demand (determined by net radiation), while in the temperate and tropical zones evapotranspiration is typically limited by the supply of water (Jung et al 2010). In addition, this pattern may likely be influenced by the rooting distribution of conifers, where roots concentrate close to the soil surface, quite similar to grasses or shrubs (Schenk andJackson 2002, Jackson et al 1996). Thus the presence/absence of vegetation may be more important than the plant functional type occupying the area.

Temperate region
The LCC impact on precipitation in temperate regions is more complex than for boreal or tropical regions (Field et al 2007, Bala et al 2007, Bonan 2008 figure 3). In temperate regions, it is difficult to detect the signature of forest cover changes on rainfall owing to the naturally highly variable frequency of synoptic scale meteorological systems (e.g. frontal depressions) and rainfall patterns, the regional and small scale landscape and topographic variability, the nonlinear changes in the forest cover and the related effects of urbanization, pollution loadings and regional circulation (Field et al 2007, Bala et al 2007, Bonan 2008. All modelling studies predict a reduction in annual precipitation (table 5(b)) following a decline in vegetation cover. Deforestation to bare land produces a reduction of about 154 ± 59 mm yr À1 . Removal of any vegetation to bare land produces a similar mean signal (with a wide range from À73 to À219 mm yr À1 ). As with boreal regions, conversion of forest to grassland produces a smaller reduction in precipitation (À11 mm yr À1 ) than conversion of any vegetation to bare ground. This result however is highly uncertain since it is based on a single study.

Tropical region
Deforestation to bare land results in a strong decrease of precipitation of about À467 ± 102 mm yr À1 for loss of forest and À314 ± 117 mm yr À1 for loss of shrubland (table 5(c), figure 3). Similar to boreal and temperate biomes, when forests are substituted with herbaceous plant types, the rainfall reduction is less pronounced (À219 ± 263 mm yr À1 ), although the range is very large and includes a positive change (þ22 to À1204 mm yr À1 ).
In the tropical region a significant proportion of rainfall is from recycled moisture released by forest evapotranspiration. Salati and Nobre (1991) estimated that evapotranspiration is responsible for between 50% and 75% of the measured rainfall in tropical forests while Silva Dias et al (2009) estimated that about half of the rainfall in the Amazon region originates from moisture supplied by the forests (Sanderson et al 2012). This is especially true in the rainy season, when water resources are greatest, and the hydrological changes could significantly alter climate patterns and processes (Malhi et al 2008, Phillips et al 2009, Kumagai and Porporato 2012, affecting feedback to the atmosphere (Meir et al 2006, Bonan 2008). According to Snyder et al (2004), when forests or shrublands are substituted with bare land, a reduction of about 30% of annual precipitations occurs (respectively about 500 and 400 mm yr À1 ). Savannah ecosystems experience the highest impacts (more than 50% of precipitation reduction during the wet season). Bathiany et al (2010) projected a smaller reduction of about 10% for localized deforestation scenarios in the different sub-continental tropical zones (about 110 mm yr À1 ). However, the results converge with Snyder et al (2004) in a reduction of about 25% annual precipitations over central Amazon basin (about 360 mm yr À1 ).
Similar to surface air temperature, there is a strong difference whether deforestation or forestation is considered. Any reduction in vegetation cover has a larger effect than a forestation scenario. According to Bathiany et al (2010) in the tropical climate zone complete forestation causes an absolute change in precipitation five to six times lower (þ41 ± 23 mm yr À1 ) than complete deforestation (noting as above that the areas involved are different).

Conclusions
This work synthesizes results of published modelling and observational studies, focusing on changes in surface air temperature (2 m) and precipitation due to biophysical effects of LCC. Models indicate that large scale (extreme) land cover changes have a strong regional effect on temperature and precipitation, and a non-negligible global impact on temperature. Observational studies also find significant local/regional temperature effects of land cover change. Results indicate potential trade-offs or synergies between local and global mitigation. For example, in boreal areas afforestation may have a small undesirable biophysical global warming effect that runs counter to global climate mitigation through the enhanced carbon sinks, while at the local level, the warming may be considered beneficial to e.g. food production. It should be noted that the boreal albedo effect will become less important in a warmer world when the snow cover will become less abundant (Devaraju et al 2015). In tropical areas avoided deforestation is a winwin for global and local mitigation of climate warming when considering biophysical processes, as well as considering biogeochemical processes.
Although over the last few years a big effort has been made in the modelling community to improve the representation of the biophysical and biogeochemical LCC climate impacts, an additional effort is still needed to overcome: (a) the apparent mismatch of scales at which LCC actually occur and those usually adopted in model experiments in ESMs (Rounsevell et al 2014, Tompkins et al 2015, (b) the different temporal and spatial scales of biophysical and biogeochemical processes and (c) the current oversimplified treatment of LCC in ESMs (Rounsevell et al 2014).
The main limitation encountered in this analysis was the difficulty to assess the dependency of the effects on the spatial extent of the LCC. The included model studies dealt with idealized complete global/ regional-scale deforestation/forestation experiments using global climate models. A scale dependent quantification of biophysical impact of LCC in different regions would be critical in analyzing the full climate impacts of any realistic LCC policy since LCC decisions are made typically at the national and sub-national level. Until such information is available robustly, it is not clear how the biophysical effects could be incorporated into an international policy framework that aims to assess (monitor, report and verify -MRV) and incentivize country-based action on climate mitigation.
The process of including land-based mitigation in the UNFCCC process has been a matter of long and complex negotiations. The relatively small and currently highly uncertain global effect of biophysical changes on temperature compared to greenhouse gas effects makes it difficult to justify efforts to include it in the complex negotiations of the UNFCCC process at the present time. In fact, the added complications could risk undermining current negotiated text and methods. It would potentially increase Countries' reporting burden within the MRV framework, without having clear and transparent methods of assessment available. That said, the impact of these effects is nonnegligible and ignoring them may lead to biased and non-optimal land-based climate policies. Accounting for biophysical effects could potentially further incentivize tropical forest protection through REDDþ and disincentivize boreal reforestation. The climate effectiveness of the latter in particular could become more controversial, so it is essential to increase confidence in the potential direction and magnitude of the global effects of reforestation projects at different spatial scales.
The local biophysical climate effects following LCC are more robust and larger in magnitude than global effects. These changes will influence ecosystems, their productivity and biodiversity, and the water cycle. Policies at the local to regional level that aim to address both mitigation and adaptation objectives will thus be more effective if they include assessment of the biophysical effects that may either exacerbate or counteract global biogeochemical climate change effects.
New high-resolution observational datasets are becoming available for improving model LCC biophysical representation that have the potential to lead to more robust evidence, tools and metrics for policy makers to evaluate LCC-climate impacts.