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CHARACTERISTICS OF THE REMOTE SENSING DATA USED IN THE PROPOSED UNFCCC REDD+ FOREST REFERENCE EMISSION LEVELS (FRELS)

机译:建议的UNFCCC REDD +森林参考发射水平(Frels)中使用的遥感数据的特征

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Developing countries must submit forest reference emission levels (FRELs) to the UNFCCC to receive incentives for REDD+ activities (e.g. reducing emissions from deforestation/forest degradation, sustainable management of forests, forest carbon stock conservation/enhancement). These FRELs are generated based on historical CO_2 emissions in the land use, land use change, and forestry sector, and are derived using remote sensing (RS) data and in-situ forest carbon measurements. Since the quality of the historical emissions estimates is affected by the quality and quantity of the RS data used, in this study we calculated five metrics (i-v below) to assess the quality and quantity of the data that has been used thus far. Countries could focus on improving on one or more of these metrics for the submission of future FRELs. Some of our main findings were: (i) the median percentage of each country mapped was 100%, (ii) the median historical timeframe for which RS data was used was 11.5 years, (iii) the median interval of forest map updates was 4.5 years, (iv) the median spatial resolution of the RS data was 30m, and (v) the median number of REDD+ activities that RS data was used for operational monitoring of was 1 (typically deforestation). Many new sources of RS data have become available in recent years, so complementary or alternative RS data sets for generating future FRELs can potentially be identified based on our findings; e.g. alternative RS data sets could be considered if they have similar or higher quality/quantity than the currently-used data sets.
机译:发展中国家必须将森林参考排放水平(FRES)提交给UNFCCC,以获得REDD +活动的激励(例如,减少森林砍伐/森林退化的排放,森林可持续管理,森林碳储蓄/增强)。这些毛毡是基于土地使用,土地利用变化和林业部门的历史CO_2排放而产生的,并且使用遥感(RS)数据和原位森林碳测量来源。由于历史排放估计的质量受到了所使用的RS数据的质量和数量的影响,因此在本研究中,我们计算了五个度量(下面的I-V),以评估到目前为止所使用的数据的质量和数量。各国可以专注于改善其中一个或多个这些指标,以提交未来的毛费。我们的一些主要结果是:(i)每个国家的中位数映射为100%,(ii)使用RS数据的中位数为11.5岁,(iii)森林地图更新的中位间隔为4.5年份,(iv)RS数据的中位空间分辨率为30米,(v)RS数据用于操作监测的中位数的REDD +活动数为1(通常是森林森林)。近年来,许多新的RS数据来源已有可用,因此可以根据我们的研究结果识别用于生成未来Frels的互补或替代RS数据集;例如如果它们具有比当前使用的数据集的质量/数量相似或更高的质量/数量,则可以考虑替代RS数据集。

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