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Classification of heterotrophic plate counts (HPC) in a water distribution network: a fuzzy rule-based approach

机译:供水网络中异养菌盘数(HPC)的分类:基于模糊规则的方法

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摘要

Heterotrophic plate count (HPC) is one of the most common indicators used to monitor microbiological water quality in distribution networks. This paper applies and compares two fuzzy rule-based models to estimate HPC levels in a distribution network using a limited number of water quality parameters. The proposed fuzzy rule-based models include Mamdani and TSK (Takagi, Sugeno, and Kang) algorithms. The models are discussed through a case study of a distribution network (DN) in Quebec City (Canada). Both models properly estimate when HPC levels (datum per datum) are low, however their predictive ability is limited when HPC levels are high. When the outputs (HPC levels) are converted into four classes and the models are used as "classifiers", their performances are very good. The average percent deviation is lower for the TSK model (15%) than for Mamdani model (17%). Implemented as "classifiers", both models can be used for identifying vulnerable locations for microbiological contamination within the DN. Given the complexity of the growth of HPC bacteria in water distribution networks and the involvement of numerous contributory factors; results obtained are "promising". Nevertheless, strategies to improve the models are also discussed.
机译:异养菌盘数(HPC)是用于监控配电网络中微生物水质量的最常见指标之一。本文应用并比较了两个基于模糊规则的模型,以使用有限数量的水质参数估算配电网络中的HPC水平。提出的基于模糊规则的模型包括Mamdani和TSK(高木,Sugeno和Kang)算法。通过对加拿大魁北克市的配电网络(DN)进行案例研究,对模型进行了讨论。两种模型都可以正确估计何时HPC水平(每个数据的基准)较低,但是,当HPC水平较高时,它们的预测能力会受到限制。当将输出(HPC级别)转换为四个类别并将模型用作“分类器”时,它们的性能非常好。 TSK模型的平均偏差百分比(15%)低于Mamdani模型的平均偏差百分比(17%)。作为“分类器”,这两个模型都可以用于识别DN中微生物污染的易受攻击位置。鉴于供水网络中HPC细菌生长的复杂性以及众多促成因素的参与;获得的结果是“有希望的”。尽管如此,还讨论了改进模型的策略。

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