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Multiscale Gaussian Process Regression-Based GLRT for Water Quality Monitoring

机译:基于多尺度高斯过程回归的GLRT用于水质监测

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This paper proposes a new contaminant detection and water quality monitoring approach. Firstly, we propose an enhanced water quality modeling technique based on machine learning (e.g Gaussian process regression (GPR)) that aims at improving the proper understanding of the behavior of water distribution systems. To improve the performances of the developed water quality model even further, multiscale representation of data will be used to develop multiscale extension of these method. Multiscale representation is a powerful data analysis way that presents efficient separation of deterministic characteristics from random noise. Thus, multiscale GPR method, that combines the advantages of the machine learning method with those of multiscale representation, will be developed to enhance the water quality modeling performance. Secondly, technique to detect contaminant in WDN using hypothesis testing chart will be developed. Generalized likelihood ratio test (GLRT) has shown a good detection performances when compared to the classical detection charts. Then, to further enhance the performance of contaminant detection, a multiscale GPR-based exponentially weighted moving average (EWMA) GLRT (EWMA-GLRT) chart is developed. Therefore, this paper aims at enhancing the performances of contaminant monitoring using multiscale GPR-based GLRT and MSGPR-based EWMA-GLRT approaches.
机译:本文提出了一种新的污染物检测和水质监测方法。首先,我们提出了一种基于机器学习的增强水质建模技术(例如高斯过程回归(GPR)),旨在增进对配水系统行为的正确理解。为了进一步改善已开发水质模型的性能,将使用数据的多尺度表示来开发这些方法的多尺度扩展。多尺度表示是一种强大的数据分析方法,可将确定性特征与随机噪声有效分离。因此,将开发结合机器学习方法的优点和多尺度表示的优点的多尺度GPR方法,以提高水质建模性能。其次,将开发使用假设检验图检测WDN中污染物的技术。与经典检测图相比,广义似然比检验(GLRT)已显示出良好的检测性能。然后,为了进一步提高污染物检测的性能,开发了基于多尺度GPR的指数加权移动平均值(EWMA)GLRT(EWMA-GLRT)图表。因此,本文旨在使用基于多尺度GPR的GLRT和基于MSGPR的EWMA-GLRT方法来提高污染物监测的性能。

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