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Comparative Analysis of GF-1 and HJ-1 Data to Derive the Optimal Scale for Monitoring Heavy Metal Stress in Rice

机译:GF-1和HJ-1数据的比较分析得出水稻重金属胁迫监测的最佳量表

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摘要

Remote sensing can actively monitor heavy metal contamination in crops, but with the increase of satellite sensors, the optimal scale for monitoring heavy metal stress in rice is still unknown. This study focused on identifying the optimal scale by comparing the ability to detect heavy metal stress in rice at various spatial scales. The 2 m, 8 m, and 16 m resolution GF-1 (China) data and the 30 m resolution HJ-1 (China) data were used to invert leaf area index (LAI). The LAI was the input parameter of the World Food Studies (WOFOST) model, and we obtained the dry weight of storage organs (WSO) and dry weight of roots (WRT) through the assimilation method; then, the mass ratio of rice storage organs and roots (SORMR) was calculated. Through the comparative analysis of SORMR at each spatial scale of data, we determined the optimal scale to monitor heavy metal stress in rice. The following conclusions were drawn: (1) SORMR could accurately and effectively monitor heavy metal stress; (2) the 8 m and 16 m images from GF-1 were suitable for monitoring heavy metal stress in rice; (3) 16 m was considered the optimal scale to assess heavy metal stress in rice.
机译:遥感可以主动监测农作物中的重金属污染,但是随着卫星传感器的增加,用于监测水稻中重金属胁迫的最佳规模仍然未知。这项研究的重点是通过比较各种空间尺度下检测水稻中重金属胁迫的能力来确定最佳尺度。使用2 m,8 m和16 m分辨率的GF-1(中国)数据和30 m分辨率的HJ-1(中国)数据对叶面积指数(LAI)进行反演。 LAI是世界粮食研究(WOFOST)模型的输入参数,我们通过同化方法获得了存储器官的干重(WSO)和根的干重(WRT)。然后计算出稻米贮藏器官和根的质量比(SORMR)。通过在每个空间尺度上对SORMR进行比较分析,我们确定了监测水稻中重金属胁迫的最佳尺度。得出以下结论:(1)SORMR可以准确有效地监测重金属应力; (2)GF-1的8 m和16 m图像适用于监测水稻中的重金属胁迫; (3)16 m被认为是评估水稻重金属胁迫的最佳尺度。

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