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Exploring the application of artificial intelligence technology for identification of water pollution characteristics and tracing the source of water quality pollutants

机译:探索人工智能技术在水污染特征识别和水质污染物源溯源中的应用

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Point sources are important routes through which pollutants enter rivers. It is important to identify the characteristics of and trace the origins of water pollutants. In this study, an artificial intelligence system called the integrated long short-term memory network (LSTM), using cross-correlation and association rules (Apriori), was used to identify the characteristics of water pollutants and trace industrial point sources of pollutants. Water quality monitoring data from Shandong Province, China, were used to verify the applicability of the artificial intelligence system using a cross-correlation method to develop a water quality cross-correlation map. The map was used to identify highly correlated pollutants affecting water quality, then the association rules (Apriori) were used to track the pollutants to industries common in the study area. The highly correlated water pollutants and relevant industries were used as inputs for the LSTM to determine how well the LSTM traced sources of water pollutants. The results showed that (1) changes in water quality were affected in different ways by different industries and different distributions and production cycles of the pollutant point sources; (2) water quality correlation maps can be used to identify regular and abnormal fluctuations in point source pollutant emissions by identifying changes in water quality characteristics and frequent itemsets in water quality indices can be used to trace the industries that most strongly affect water quality; and (3) the LSTM accurately traced point sources of future changes in water quality. In condusion, the artificial intelligence scheme described here can be applied to aquatic systems. (C) 2019 Elsevier B.V. All rights reserved.
机译:点源是污染物进入河流的重要途径。确定水污染物的特征并追踪其来源很重要。在这项研究中,使用互相关和关联规则(Apriori)的一种称为集成长期短期记忆网络(LSTM)的人工智能系统被用来识别水污染物的特征并追踪污染物的工业点源。使用来自中国山东省的水质监测数据,使用互相关方法来验证人工智能系统的适用性,以开发水质互相关图。该地图用于识别影响水质的高度相关污染物,然后使用关联规则(Apriori)跟踪研究区域内常见行业的污染物。高度相关的水污染物和相关行业被用作LSTM的输入,以确定LSTM对水污染物源的追踪程度。结果表明:(1)不同行业,污染物点源的分布和生产周期对水质变化的影响不同。 (2)水质相关图可用于通过识别水质特征的变化来识别点源污染物排放的正常和异常波动,水质指标中的频繁项目集可用于追踪对水质影响最大的行业; (3)LSTM准确跟踪了未来水质变化的点源。因此,这里描述的人工智能方案可以应用于水生系统。 (C)2019 Elsevier B.V.保留所有权利。

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