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Drinking Water Source Monitoring Using Early Warning Systems Based on Data Mining Techniques

机译:基于数据挖掘技术的预警系统饮用水源监测

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Improving drinking water source monitoring is crucial for efficiently managing the drinking water treatment process and ensuring the delivery of safe water. Data mining techniques could prove useful to help forecast source water quality. In this study, two approaches were used to forecast turbidity mean levels and peaks in the main drinking water source of the city of Quebec, Canada. Trend analysis was applied for the prediction of significant turbidity events (99th percentile of data distribution). Artificial neural networks using antecedent moisture conditions as input parameters (all turbidity peaks) served to forecast daily turbidity time series. Results show that trend analyses help anticipate the timing of turbidity peaks ? with differences between the cold season (fall and winter) and the warm season (spring and summer) and mean anticipations between 45 and 85min and 25 and 45min, respectively ? and the magnitude of the peak. The artificial neural network model was developed and proven capable of predicting the mean levels of turbidity at the drinking water intake of the investigated catchment. These early warning systems could be applied to source water system forecasting and provide a framework for adjusting drinking water treatment operations.
机译:改善饮用水源监控对于有效管理饮用水处理过程并确保提供安全水至关重要。数据挖掘技术可能被证明有助于预测水源水质。在这项研究中,使用了两种方法来预测加拿大魁北克市主要饮用水源的浊度平均水平和峰值。趋势分析用于重大浊度事件的预测(数据分布> 99%)。使用以前的水分条件作为输入参数(所有浊度峰值)的人工神经网络可用于预测每日浊度时间序列。结果表明,趋势分析有助于预测浊度峰值的时间。在寒冷季节(秋季和冬季)和温暖季节(春季和夏季)之间存在差异,并且平均预期分别在45和85分钟以及25和45分钟之间?和峰值的大小。开发并证明了人工神经网络模型能够预测所调查流域饮用水摄入处的平均浊度水平。这些预警系统可以应用于水源系统的预测,并提供调整饮用水处理操作的框架。

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