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Spatial quantification to examine the effectiveness of payments for ecosystem services: A case study of Costa Rica's Pago de Servicios Ambientales

机译:空间量化研究生态系统服务付款的有效性:以哥斯达黎加的帕戈·德·塞维西奥斯·阿比奥奈泰莱斯为例

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摘要

Payments for ecosystem services (PES) have been developed as a policy instrument to help safeguard the contributions of ecosystems to human well-being. A critical measure of a programme's effectiveness is whether it is generating an additional supply of ecosystem services (ES). So far, there has been limited analysis of PES programmes based on the actual supply of ES. In line with ecosystem accounting principles, we spatially quantified three ES recognised by Costa Rica's Pago de Servicios Ambientales (PSA) programme: carbon storage, soil erosion control and habitat suitability for biodiversity as a cultural ES. We used the machine learning algorithm random forest to model carbon storage, the Revised Universal Soil Loss Equation (RUSLE) to model soil erosion control and Maxent to model habitat suitability. The additional effect of the PSA programme on carbon storage was examined using linear regression. Forested land was found to store 235.3 Mt of carbon, control for 148 Mt yr(-1) of soil erosion and contain 762,891 ha of suitable habitat for three iconic but threatened species. PSA areas enrolled in the programme in both 2011 and 2013 were found to store an additional 9 tonC ha(-1) on average. As well as enabling a direct quantification of additionality, spatial distribution analysis can help administrators target high-value areas, confirm the conditional supply of ES and support the monetary valuation of ES. Ultimately, this can help improve the social efficiency of payments by enabling a comparison of societal costs and benefits.
机译:已经制定了生态系统服务付款(PES)作为一种政策工具,以帮助维护生态系统对人类福祉的贡献。一项计划有效性的关键指标是它是否产生了额外的生态系统服务(ES)。到目前为止,基于ES的实际供应对PES程序的分析有限。根据生态系统核算原则,我们在空间上对哥斯达黎加的Pago de Servicios Ambientales(PSA)计划认可的三个ES进行了量化:碳储存,土壤侵蚀控制和生境对生物多样性作为文化ES的适用性。我们使用机器学习算法的随机森林对碳储量进行建模,使用修正的通用土壤流失方程式(RUSLE)对土壤侵蚀控制进行建模,并使用Maxent对生境适应性进行建模。使用线性回归检查了PSA程序对碳储存的其他影响。已发现林地积碳235.3 Mt,控制了148 Mt yr(-1)的水土流失,并拥有762,891公顷合适的栖息地,可用于三个标志性但受威胁的物种。发现在2011年和2013年都参与该计划的PSA地区平均可存储9 tonC ha(-1)。空间分布分析不仅可以直接量化额外性,还可以帮助管理员确定高价值区域,确认ES的有条件供应并支持ES的货币估值。最终,这可以通过比较社会成本和收益来帮助提高支付的社会效率。

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