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Diagnosing the uncertainty and detectability of emission reductions for REDD + under current capabilities: an example for Panama

机译:在现有能力下诊断REDD +的减排量的不确定性和可检测性:巴拿马的一个例子

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In preparation for the deployment of a new mechanism that could address as much as one fifth of global greenhouse gas emissions by reducing emissions from deforestation and forest degradation (REDD +), important work on methodological issues is still needed to secure the capacity to produce measurable, reportable, and verifiable emissions reductions from REDD + in developing countries. To contribute to this effort, we have diagnosed the main sources of uncertainty in the quantification of emission from deforestation for Panama, one of the first countries to be supported by the Forest Carbon Partnership Facility of the World Bank and by UN-REDD. Performing sensitivity analyses using a land-cover change emissions model, we identified forest carbon stocks and the quality of land-cover maps as the key parameters influencing model uncertainty. The time interval between two land-cover assessments, carbon density in fallow and secondary forest, and the accuracy of land-cover classifications also affect our ability to produce accurate estimates. Further, we used the model to compare emission reductions from five different deforestation reduction scenarios drawn from governmental input. Only the scenario simulating a reduction in deforestation by half succeeds in crossing outside the confidence bounds surrounding the baseline emission obtained from the uncertainty analysis. These results suggest that with current data, real emission reductions in developing countries could be obscured by their associated uncertainties. Ways of addressing the key sources of error are proposed, for developing countries involved in REDD + , for improving the accuracy of their estimates in the future. These new considerations confirm the importance of current efforts to establish forest monitoring systems and enhance capabilities for REDD + in developing countries.
机译:在准备部署一种新机制的过程中,该机制可以通过减少毁林和森林退化(REDD +)的排放量来解决全球温室气体排放量的五分之一,仍然需要就方法论问题开展重要工作,以确保产生可衡量的生产能力发展中国家REDD +的可报告,可验证的减排量。为了促进这项工作,我们已经诊断出巴拿马因森林砍伐而产生的排放量化中的不确定性的主要来源,巴拿马是世界银行森林碳伙伴关系基金和联合国REDD支持的首批国家之一。使用土地覆盖变化排放模型进行敏感性分析,我们确定了森林碳储量和土地覆盖图的质量是影响模型不确定性的关键参数。两次土地覆被评估之间的时间间隔,休耕和次生林中的碳密度以及土地覆被分类的准确性也影响了我们进行准确评估的能力。此外,我们使用该模型对来自政府投入的五种不同的减少森林砍伐方案的排放量进行了比较。只有模拟砍伐森林减少一半的方案才能成功跨越不确定性分析获得的围绕基线排放的置信范围。这些结果表明,根据目前的数据,发展中国家的实际减排量可能会被其相关的不确定性所掩盖。对于参与REDD +的发展中国家,提出了解决关键错误来源的方法,以提高其估计的准确性。这些新的考虑因素确认了当前在发展中国家建立森林监测系统并增强REDD +能力的重要性。

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