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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Continuous monitoring of land change activities and post-disturbance dynamics from Landsat time series: A test methodology for REDD plus reporting
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Continuous monitoring of land change activities and post-disturbance dynamics from Landsat time series: A test methodology for REDD plus reporting

机译:持续监测土地改变活动和Landsat Time系列的干扰动态:Redd Plus报告的测试方法

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The REDD+ mechanism of UNFCCC was established to reduce greenhouse gases emissions by means of financial incentives. Of importance to the success of REDD+ and similar initiatives is the provision of credible evidence of reductions in the extent of land change activities that release carbon to the atmosphere (e.g. deforestation). The criteria for reporting land change areas and associated emissions within REDD+ stipulate the use of sampling-based approaches, which allow for unbiased estimation and uncertainty quantification. But for economic compensation for emission reductions to be feasible, agreements between participating countries and donors often require reporting every year or every second year. With the rates of land change typically being very small relative to the total study area, sampling-based approaches for estimation of annual or bi-annual areas have proven problematic, especially when comparing area estimates over time. In this paper, we present a methodology for monitoring and estimating areas of land change activity at high temporal resolution that is compliant with international guidelines. The methodology is based on a break detection algorithm applied to time series of Landsat data in the Colombian Amazon between 2001 and 2016. A biennial stratified sampling approach was implemented to (1) remove the bias introduced by the change detection and classification algorithm in mapped areas derived from pixel-counting; and (2) provide confidence intervals for area estimates obtained from the reference data collected for the sample. Our results show that estimating the area of land change, like deforestation, at annual or bi-annual resolution is inherently challenging and associated with high degrees of uncertainty. We found that better precision was achieved if independent sample datasets of reference observations were collected for each time interval for which area estimates are required. The alternative of selecting one sample of continuous reference observations analyzed for inference of area for each time interval did not yield area estimates significantly different from zero. Also, when large stable land covers (primary forest in this case, occupying almost 90% of the study area) are present in the study area in combination with small rates of land change activity, the impact of omission errors in the map used for stratifying the study area will be substantial and potentially detrimental to usefulness of land change studies. The introduction of a buffer stratum around areas of mapped land change reduced the uncertainty in area estimates by up to 98%. Results indicate that the Colombian Amazon has experienced a small but steady decrease in primary forest due to establishment of pastures, with forest-to-pasture conversion reaching 103 +/- 30 kha (95% confidence interval) in the period between 2013 and 2015, corresponding to 0.22% of the study area. Around 29 +/- 17 kha (95% CI) of pastureland that had been abandoned shortly after establishment reverted to secondary forest within the same period. Other gains of secondary forest from more permanent pastures averaged about 12 +/- 11 kha (95% CI), while losses of secondary forest averaged 20 +/- 12 kha (95% CI).
机译:建立了UNFCCC的Redd +机制,以通过金融激励措施减少温室气体排放。对REDD +和类似举措的成功的重要性是提供释放碳对大气层的土地变更活动的可信证据(例如,森林砍伐)。报告土地变更区域和冗长内的相关排放的标准规定了使用基于采样的方法,这允许无偏估计和不确定量化。但是对于经济补偿,减排可行的可行性,参与者和捐助者之间的协议通常需要每年或每隔一年的报告。随着土地变化的速度,通常相对于总研究区域非常小,基于采样的估算方法估计年度或双年度区域的方法已经证明了问题,特别是在比较区域估计随着时间的推移时。在本文中,我们提出了一种在符合国际指南的高时决议下监测和估算土地变革活动领域的方法。该方法基于2001年至2016年间哥伦比亚亚马逊的时间序列的断裂检测算法。(1)将拆除映射区域中的变化检测和分类算法删除偏差源自像素计数; (2)为从收集的参考数据获得的区域估计提供置信区间。我们的研究结果表明,在年度或双年度决议中估算土地变化面积,如砍伐森林,本年度或双年度决议本质上是挑战性,与高度的不确定性相关。我们发现,如果每个时间间隔收集参考观察的独立样品数据集,则达到了更好的精度。选择分析每个时间间隔的区域的一个连续参考观察结果的替代方案,每个时间间隔的推断没有屈服区域估计与零显着不同。此外,当研究区域中存在大型稳定陆地覆盖(在这种情况下,占据了几乎90%的研究区域)时,与较小的土地变化活动相结合,省略地图中的省略误差的影响该研究领域将对土地变革研究的有用性具有很大巨大的和潜在的不利性。在映射的土地变化区域周围引入缓冲层,将区域的不确定性降低至98%。结果表明,由于建立牧场,哥伦比亚亚马逊经历了小而稳定的原因下降,森林 - 牧场转换达到2013年至2015年期间的103 +/- 30 kha(95%的置信区间),对应于研究区域的0.22%。在同一时期内恢复到次要森林后,大约29 +/- 17 kha(95%ci)被遗弃后很快被遗弃。来自更多永久性牧场的继发森林的其他收益平均约为12 +/-11kHa(95%CI),而二级森林的损失平均为20 +/- 12 kHa(95%CI)。

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