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Moving forward socio-economically focused models of deforestation

机译:向前迈进的社会经济聚焦的森林砍伐模型

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Whilst high-resolution spatial variables contribute to a good fit of spatially explicit deforestation models, socio-economic processes are often beyond the scope of these models. Such a low level of interest in the socio-economic dimension of deforestation limits the relevancy of these models for decision-making and may be the cause of their failure to accurately predict observed deforestation trends in the medium term. This study aims to propose a flexible methodology for taking into account multiple drivers of deforestation in tropical forested areas, where the intensity of deforestation is explicitly predicted based on socio-economic variables. By coupling a model of deforestation location based on spatial environmental variables with several sub-models of deforestation intensity based on socio-economic variables, we were able to create a map of predicted deforestation over the period 2001-2014 in French Guiana. This map was compared to a reference map for accuracy assessment, not only at the pixel scale but also over cells ranging from 1 to approximately 600 sq. km. Highly significant relationships were explicitly established between deforestation intensity and several socio-economic variables: population growth, the amount of agricultural subsidies, gold and wood production. Such a precise characterization of socio-economic processes allows to avoid overestimation biases in high deforestation areas, suggesting a better integration of socio-economic processes in the models. Whilst considering deforestation as a purely geographical process contributes to the creation of conservative models unable to effectively assess changes in the socioeconomic and political contexts influencing deforestation trends, this explicit characterization of the socio-economic dimension of deforestation is critical for the creation of deforestation scenarios in REDD+ projects.
机译:虽然高分辨率空间变量有助于适合空间明确的森林砍伐模型,但社会经济流程通常超出了这些模型的范围。在森林砍伐的社会经济方面的这种低水平限制了这些模型对于决策的相关性,并且可能是他们未能准确预测中期观察到的森林砍伐趋势的原因。本研究旨在提出一种灵活的方法,以考虑热带森林地区的多个森林驱动因素,在那里根据社会经济变量明确预测了砍伐森林的强度。通过基于空间环境变量耦合森林砍伐位置模型,基于社会经济变量的森林森林强度的多个子模型,我们能够在法国圭亚那2001 - 2014年期间创建预测森林砍伐地图。将该地图与参考图进行比较,以进行准确性评估,不仅在像素刻度,而且还超过1到大约600平方公里的电池。在森林殖民强度和几个社会经济变量之间明确建立了高度显着的关系:人口增长,农业补贴,金和木材生产量。这种精确的社会经济过程表征允许避免高森林砍伐区域的偏差偏差,这表明在模型中更好地整合了社会经济过程。虽然考虑到纯粹的地理流程,有助于建立保守模式,但无法有效地评估影响森林砍伐趋势的社会经济和政治背景的变化,但这种明确的森林砍伐社会经济维度的表征对于创造森林砍伐情景至关重要Redd +项目。

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