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Evaluation of arable land yield potential through remote sensing monitoring

机译:通过遥感监测评估耕地产量潜力

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Recently, raising yield per unit of available arable land becomes necessary to combat the challenge due to increasing population with decreasing arable land. Therefore, it is imperative to evaluate the yield potential for the cropland. The objective of this study was to evaluate the winter wheat yield potential for cropland of Beijing suburb. Three years' continuous remote sensing yield monitoring experiments were carried out from 2007 to 2009. Multitemporal remote sensing images of Landsat5 TM and BJ-1 were collected at the winter wheat growth season. The winter wheat yield monitoring models were established based on the remote sensing vegetation index and the actual yield data for each year. Then, relationship between three years winter wheat monitoring yield and habitat factors, including climatic factors, soil factors and terrain factors, were analyzed. Principal Component Analysis (PCA) and Multi-linear regression (MLR) analysis method are combined to construct the wheat yield potential assessment model, to comprehensively evaluate the wheat-growing areas and classify medium- and low-yield fields in Beijing suburb. The information from this study allow us to systematically understand the wheat medium- and low-yield fields of Beijing area and their spatial distribution features, identify key potential barrier factors, and establish reference for medium- and low-yield farmland in transformation, crop distribution management and rational fertilization in Beijing area.
机译:最近,由于人口增加而耕地减少,因此有必要提高每单位可用耕地的产量以应对这一挑战。因此,必须评估农田的单产潜力。本研究的目的是评估北京郊区农田的冬小麦单产潜力。从2007年到2009年进行了为期三年的连续遥感产量监测实验。在冬小麦生长季节收集了Landsat5 TM和BJ-1的多时相遥感影像。基于遥感植被指数和每年的实际单产数据,建立了冬小麦单产监测模型。然后,分析了三年冬小麦监测产量与栖息地因素之间的关系,包括气候因素,土壤因素和地形因素。结合主成分分析(PCA)和多元线性回归(MLR)分析方法,建立了小麦单产潜力评价模型,对小麦产区进行了综合评价,并对北京郊区的中低产田进行了分类。这项研究的信息使我们能够系统地了解北京地区的小麦中低产田及其空间分布特征,确定关键的潜在障碍因素,并为中低产田改造,作物分布提供参考北京地区的农业管理和合理施肥。

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