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Estimating regional wheat yield from the shape of decreasing curves of green area index temporal profiles retrieved from MODIS data

机译:根据从MODIS数据获取的绿地指数时间曲线的递减曲线形状估算区域小麦产量

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摘要

Earth observation data, owing to their synoptic, timely and repetitive coverage, have been recognized as a valuable tool for crop monitoring at different levels. At the field level, the close correlation between green leaf area (GLA) during maturation and grain yield in wheat revealed that the onset and rate of senescence appeared to be important factors for determining wheat grain yield. Our study sought to explore a simple approach for wheat yield forecasting at the regional level, based on metrics derived from the senescence phase of the green area index (GAI) retrieved from remote sensing data. This study took advantage of recent methodological improvements in which imagery with high revisit frequency but coarse spatial resolution can be exploited to derive crop-specific GAI time series by selecting pixels whose ground-projected instantaneous field of view is dominated by the target crop: winter wheat. A logistic function was used to characterize the GAI senescence phase and derive the metrics of this phase. Four regression-based models involving these metrics (i.e., the maximum GAI value, the senescence rate and the thermal time taken to reach 50% of the green surface in the senescent phase) were related to official wheat yield data. The performances of such models at this regional scale showed that final yield could be estimated with an RMSE of 0.57 ton ha−1, representing about 7% as relative RMSE. Such an approach may be considered as a first yield estimate that could be performed in order to provide better integrated yield assessments in operational systems.
机译:由于对地观测数据的概要,及时和重复的覆盖,已被认为是在各级监测作物的宝贵工具。在田间,小麦成熟期的绿叶面积(GLA)与谷物产量之间的密切相关性表明,衰老的开始和衰老速率似乎是决定小麦谷物产量的重要因素。我们的研究旨在探索一种简单的方法,基于从遥感数据中检索到的绿色区域指数(GAI)的衰老阶段得出的指标,来进行区域一级的小麦产量预测。这项研究利用了最近的方法学改进,可以通过选择地面投影瞬时视场受目标作物主导的像素来利用具有较高重访频率但粗糙的空间分辨率的图像来得出特定于作物的GAI时间序列。 。使用逻辑函数表征GAI衰老阶段并得出该阶段的指标。涉及这些指标的四个基于回归的模型(即最大GAI值,衰老率和在衰老阶段达到50%的绿色表面所需的加热时间)与官方的小麦单产数据有关。这种模型在该区域规模上的性能表明,最终产量可以估计为0.57吨ha-1的均方根误差,约占相对均方根误差的7%。可以将这种方法视为可以执行的第一产量估算,以便在操作系统中提供更好的集成产量评估。

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