湖泊水质参数的高光谱遥感研究——以印度泰伦加纳邦海得拉巴市为例

V. Sailaja, P. Babu, M. Reddy
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引用次数: 2

摘要

本文旨在利用高光谱遥感技术对典型内陆湖泊环境(Hussain sagar和Umda sagar)的3个水质参数(叶绿素(a)、浊度和Secchi Depth)进行综合水质建模。通过回归模型,将现场光谱辐射计的反射率值与研究区域收集的现场地面数据(Analytical)结合起来,并与可用的高光谱数据(Hyperion)进行关联和验证,从而估算出它们。在2010年至2014年的研究期间,共分析了180个原位水样和900个光谱特征。季风前、季风后两湖的叶绿素-a均值在6.983 ~ 24.858mgL -1之间变化,浊度在16.583 ~ 48.867mgL -1之间变化,塞池深度在0.104 ~ 0.375mgL -1之间变化。利用R670/R710、R710/R740和R710/R550的反射光谱波段比分别建立了叶绿素-a、浊度和Secchi深度的数学模型。对纯光谱高光谱数据提取的像元训练集进行处理,制备水质分布图。当进行多变量显著性统计检验时,模型得到了令人满意的r2值。模型与原位分析结果对比,叶绿素-a、浊度和Secchi深度相关系数r2 = 0.81%,浊度和Secchi深度相关系数r2 = 0.78%;模型与卫星数据对比,叶绿素-a、浊度和Secchi深度平均效率r2 = 0.60%,浊度和Secchi深度平均效率r2 = 0.66%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hyper-spectral Remote Sensing of Water Quality Parameters in Lakes: A Case Study of Hyderabad City, Telangana State, India
This paper is a research work intended to present a comprehensive water quality modeling for predicting three water quality parameters (Chlorophyll (a), Turbidity and Secchi Depth) in typical Inland lake environments (Hussain sagar and Umda sagar) using Hyperspectral Remote sensing technique. They are estimated through regression models by combining the field Spectro-radiometer reflectance values with concurrent in situ ground data (Analytical) collected in the study area and correlated and validated with the available Hyperspectral data (Hyperion).  A total of 180 in situ water sample and 900 spectral signatures were analysed during campaigns from 2010 to 2014 study period. The mean values of Chlorophyll-a varied between 6.983mgL -1 and 24.858mgL -1 , Turbidity varied between 16.583mgL -1 and 48.867mgL -1 and Secchi depth varied between 0.104mgL -1 and 0.375mgL -1 over the study period considering the two lakes during pre and post monsoon seasons. The band ratios of the reflected spectra at R670/R710, R710/R740 and R710/R550 are used for the development of the mathematical model of chlorophyll-a, Turbidity and Secchi depth respectively. The trained sets of the pixels extracted from the hyperspectral data for pure spectra are processed for preparing the water quality distribution maps. When subjected to multi-variant statistical tests of significance, the models have yielded satisfactory R 2 values. The model versus in situ analysis results demonstrated R 2 = 0.81% for Chlorophyll-a, R 2 = 0.81%  for Turbidity and R 2 = 0.78% for Secchi depth correlation and that of model versus satellite data exhibited R 2 = 0.60% for Chlorophyll-a, R 2 = 0.66% for Turbidity and R 2 = 0.65 %  for Secchi depth mean efficiency.
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