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An integrated approach of machine algorithms with multi-objective optimization in performance analysis of event detection

机译:具有多目标优化的机器算法集成方法,在事件检测中的性能分析中

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Challenges in the provision of a safe water distribution system have become one of the major concerns to the society. Various models and algorithms have been developed so far to incorporate in the early warning systems. This study focuses on the use of machine learning (ML) algorithms on different contaminated datasets. Fine tree (FT) and linear support vector machine (LSVM) were chosen to classify the events. To select the best combination of event and nonevent data, nondominated sorting genetic algorithm-II is integrated with the algorithms that helps to obtain an optimal solution of minimized false positive rate (FPR) and minimized false negative rate (FNR). Results suggest that both FT and LSVM minimized FPR and FNR very effectively. However, FT performed better than LSVM in a supervised and laboratory-controlled dataset, and it showed its superiority in securing robustness over LSVM and fuzziness-based methods in different uncertain scenarios of the study datasets. Moreover, the study initiated a novel approach by executing FT and LSVM models to classify contamination events in a combination of two datasets of various contaminants. It produced better results compared to the Pearson correlation-Euclidean distance (PE) method applied in the same dataset. In addition, the ML algorithms showed their consistency in detecting most of the simulated events using different ranges of spikes.
机译:提供安全水分配系统的挑战已成为社会的主要问题之一。到目前为止已经开发了各种模型和算法,以便在预警系统中包含。本研究侧重于在不同污染数据集上使用机器学习(ML)算法。选择细树(FT)和线性支持向量机(LSVM)以对事件进行分类。为了选择最佳事件和无程度数据的组合,NondoMinated分类遗传算法-II与算法集成,有助于获得最小化的假阳性率(FPR)的最佳解决方案,并最小化为假负速率(FNR)。结果表明,FT和LSVM非常有效地最小化FPR和FNR。然而,FT在监督和实验室控制的数据集中比LSVM更好地执行,并且它在保护基于LSVM和基于模糊的方法的鲁棒性方面的优势在研究数据集的不同不确定场景中。此外,该研究通过执行FT和LSVM模型来启动一种新的方法,以将污染事件分类在各种污染物的两个数据集的组合中。与在同一数据集中应用的Pearson相关 - 欧几里德距离(PE)方法相比,它产生了更好的结果。此外,M1算法显示了它们在使用不同范围的尖峰检测大部分模拟事件的一致性。

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