Remote sensing of chlorophyll concentration based on HJ-1 satellite in Lake Tai, China

Zhisong Liu, Xuebing Yang, Fengdong Bi, Yong Mao, Bin Li, Chao Chen, Yanli Chu, Yao Chen
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Abstract

Environmental remote sensing inversion of chlorophyll concentration in water had always been a hot issue. In recent years, with the development of environmental satellite technology, this hot spot had been pushed to a peak again. There were different inversion methods for lakes, oceans, rivers, reservoirs and other water bodies. Remote sensing inversion of chlorophyll-a concentration of Lake Tai in this paper was implemented, trying to use the measured data of Lake Tai and remote sensing images obtained from the HJ-1 satellite. Firstly, the acquired data was previously processed through atmospheric correction and radiometric calibration. Secondly, the sensitive factor was determined and the ways were band ratio, NDWI, NDVI about it. Thirdly, the inversion model was constructed, single band regression analysis was utilized and accuracy of the model was calculated. The result of the verification showed that the precision was remarkable. Finally, we got conclusions that chlorophyll-a concentration was higher in the east and north of Lake Tai from a spatial point of view and it was lower in winter and spring, rather higher in summer and autumn in terms of time.
基于HJ-1卫星的太湖叶绿素浓度遥感研究
水体叶绿素浓度的环境遥感反演一直是一个热点问题。近年来,随着环境卫星技术的发展,这一热点又被推向了一个高峰。湖泊、海洋、河流、水库等水体的反演方法不同。本文尝试利用太湖实测数据和HJ-1卫星遥感影像,实现了太湖叶绿素-a浓度的遥感反演。首先,采集的数据经过大气校正和辐射定标处理。其次,确定了敏感因子,并通过带比、NDWI、NDVI等方法确定了敏感因子。第三,构建反演模型,利用单波段回归分析,计算模型精度;验证结果表明,该方法精度显著。结果表明:从空间上看,太湖东部和北部叶绿素a浓度较高,冬春季较低,夏秋季较高;
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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