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Remotely mapping river water quality using multivariate regression with prediction validation

机译:使用预测验证的多元回归远程映射河水质量

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Remote spectral sensing offers an attractive means of mapping river water quality over wide spatial regions. While previous research has focused on development of spectral indices and models to predict river water quality based on remote images, little attention has been paid to subsequent validation of these predictions. To address this oversight, we describe a retrospective analysis of remote, multispectral Compact Airborne Spectrographic Imager (CASI) images of the Ohio River and its Licking River and Little Miami River tributaries. In conjunction with the CASI acquisitions, ground truth measurements of chlorophyll-a concentration and turbidity were made for a small set of locations in the Ohio River. Partial least squares regression models relating the remote river images to ground truth measurements of chlorophyll-a concentration and turbidity for the Ohio River were developed. Employing these multivariate models, chlorophyll-a concentrations and turbidity levels were predicted in river pixels lacking ground truth measurements, generating detailed estimated water quality maps. An important but often neglected step in the regression process is to validate prediction results using a spectral residual statistic. For both the chlorophyll-a and turbidity regression models, a spectral residual value was calculated for each river pixel and compared to the associated statistical confidence limit for the model. These spectral residual statistic results revealed that while the chlorophyll-a and turbidity models could validly be applied to a vast majority of Ohio River and Licking River pixels, application of these models to Little Miami River pixels was inappropriate due to an unmodeled source of spectral variation.
机译:远程光谱传感提供了一种在宽空间区域上绘制河水质量的吸引力。虽然以前的研究专注于开发频谱指数和模型,以便基于远程图像预测河水质量,但在随后的这些预测验证时已经注意到了很少的关注。为了解决这一监督,我们描述了俄亥俄州河及其舔河和小迈阿密河流支流的遥控器的回顾性分析。结合CASI采集,对俄亥俄州河流的一小组位置进行了叶绿素-A浓度和浊度的地面真理测量。开发了偏远河流与叶绿素浓度和玉米河浓度和浊度的地面真理测量相关的偏向性方位的回归模型。采用这些多变量模型,叶绿素 - 浓度和浊度水平预测在缺乏地面真理测量的河像素中,产生了详细的估计水质地图。回归过程中的一个重要但经常被忽略的步骤是使用光谱剩余统计来验证预测结果。对于叶绿素-A和浊度回归模型,针对每个河像素计算光谱剩余值,并与模型的相关统计置信极限相比。这些光谱剩余统计结果表明,虽然叶绿素-A和浊度模型可以有效地应用于绝大多数俄亥俄州河流和舔河像素,但由于频谱变化的未铭刻来源,这些模型将这些模型应用于小迈阿密河像素不合适。

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