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Developing the remote sensing-based early warning system for monitoring TSS concentrations in Lake Mead

机译:开发基于遥感的预警系统,以监测米德湖中的TSS浓度

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Adjustment of the water treatment process to changes in water quality is a focus area for engineers and managers of water treatment plants. The desired and preferred capability depends on timely and quantitative knowledge of water quality monitoring in terms of total suspended solids (TSS) concentrations. This paper presents the development of a suite of nowcasting and forecasting methods by using high-resolution remote-sensing-based monitoring techniques on a daily basis. First, the integrated data fusion and mining (1DFM) technique was applied to develop a near real-time monitoring system for daily nowcasting of the TSS concentrations. Then a nonlinear autoregressive neural network with external input (NARXNET) model was selected and applied for forecasting analysis of the changes in TSS concentrations over time on a rolling basis onward using the IDFM technique. The implementation of such an integrated forecasting and nowcasting approach was assessed by a case study at Lake Mead hosting the water intake for Las Vegas, Nevada, in the water-stressed western U.S. Long-term monthly averaged results showed no simultaneous impact from forest fire events on accelerating the rise of TSS concentration. However, the results showed a probable impact of a decade of drought on increasing TSS concentration in the Colorado River Arm and Overton Arm. Results of the forecasting model highlight the reservoir water level as a significant parameter in predicting TSS in Lake Mead. In addition, the R-squared value of 0.98 and the root mean square error of 0.5 between the observed and predicted TSS values demonstrates the reliability and application potential of this remote sensing-based early warning system in terms of TSS projections at a drinking water intake.
机译:根据水质的变化调整水处理工艺是水处理厂工程师和管理人员的重点工作领域。期望的和首选的能力取决于就总悬浮固体(TSS)浓度而言,及时而定量的水质监测知识。本文介绍了每天使用高分辨率遥感监测技术开发一套临近预报和预报方法的过程。首先,集成数据融合与挖掘(1DFM)技术被用于开发近实时监控系统,用于每日即时预报TSS浓度。然后,选择了具有外部输入的非线性自回归神经网络(NARXNET)模型,并将其用于使用IDFM技术以滚动方式对TSS浓度随时间的变化进行预测分析。通过在美国西部缺水的内华达州拉斯维加斯市的取水口的米德湖的案例研究,评估了这种综合预报和临近预报方法的实施情况。长期每月平均结果显示,森林火灾没有同时产生影响加速TSS浓度的上升。但是,结果表明,十年干旱可能会对科罗拉多河沿岸地区和Overton沿岸地区TSS浓度的升高产生影响。预测模型的结果表明,水库水位是预测米德湖TSS的重要参数。此外,观测到的TSS值与预测的TSS值之间的R平方值为0.98,均方根误差为0.5,这表明了这种基于遥感的预警系统的可靠性和应用潜力。

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