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首页> 外文期刊>Journal of Cleaner Production >Toward urban sustainability and clean potable water: Prediction of water quality via artificial neural networks
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Toward urban sustainability and clean potable water: Prediction of water quality via artificial neural networks

机译:对城市可持续性和清洁饮用水:通过人工神经网络预测水质

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摘要

Water quality failure is a long-standing problem worldwide, causing illness, poisoning, disease outbreak, and claiming human lives in the urban communities. Potable water can be compromised due to a myriad of physical, operational, and environmental factors, such as contaminants intrusion into water pipelines, leaching, disinfection byproducts, chemical or microbial permeation, and pollution. The prediction of potable water quality has seldom been researched, while a novel automated model that offers a proactive approach can be developed to promote sustainability-based strategies. This paper elaborates the impacts of the aforementioned factors on the quality of potable water using the Artificial Neural Networks (ANNs) and risk analysis techniques. The ANN model was developed based on historical data obtained from the water distribution networks (WDNs) of the City of El Pedregal, Peru. The data were streamlined and fed to the neural network to be trained. Subsequent to multiple iterations via the scaled conjugate gradient algorithm, the optimized performance was generated and passed to the trained network to forecast the water quality failure in WDNs. The model performance was tested and validated against different statistical error terms and indicators. The mean absolute error and root-mean-squared error in the ANN failure prediction were computed as 0.08 and 0.15, whereas the average validity of the network was generated to be 92%. Based on the trained neural network, the degree of influence of each factor was determined through implementing a sensitivity analysis. It was found that water quality, water pressure, and operational and maintenance practices had the maximum influence on the risk of failure in water infrastructure. Policy makers and managers can benefit from the proposed model since ANN is already trained, by predicting water quality whenever new data become available. Prediction results will indicate the level of risk (low, moderate, high) to the inhabitants, thereby preemptive measures can be taken to avoid any illness or disease outbreak.(c) 2020 Elsevier Ltd. All rights reserved.
机译:水质失败是全球长期存在的问题,造成疾病,中毒,疾病爆发,并声称人类生活在城市社区。由于无数的物理,运营和环境因素,例如污染物入侵到水管道,浸出,消毒副产品,化学或微生物渗透,以及污染,可能会受到损害。饮用水质量的预测很少已经研究过,而可以开发出一种新的自动化模型,以促进基于可持续性的策略。本文阐述了上述因素对使用人工神经网络(ANNS)和风险分析技术的饮用水质量的影响。 ANN模型是基于从秘鲁市El Pedregal市的水分配网络(WDN)获得的历史数据。数据被简化并馈送到待培训的神经网络。通过缩放共轭梯度算法多次迭代之后,生成并传递给培训的网络,以预测WDNS中的水质失效。测试模型性能并针对不同统计误差术语和指标进行验证。 ANN故障预测中的平均绝对误差和根均方误差计算为0.08和0.15,而网络的平均有效性产生为92%。基于训练有素的神经网络,通过实现灵敏度分析来确定每个因子的影响程度。结果发现,水质,水压和操作和维护实践对水基础设施失效的最大影响。政策制定者和管理人员可以从ANN已经培训的拟议模型中受益,每当新数据可用时,通过预测水质。预测结果将指示居民的风险水平(低,中等,高),从而可以采取先发制人的措施来避免任何疾病或疾病爆发。(c)2020 Elsevier有限公司保留所有权利。

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