Application of secondary water supply water quality evaluation method based on K-means clustering and entropy method

Wu Linjing, Yu Jiali, Zeng Jiayu, Shu Shihu
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引用次数: 0

Abstract

The secondary water supply water quality indicators monitored by urban water supply companies are usually residual chlorine, turbidity, pH, etc., and data can be continuously uploaded through online meters and used for analysis and early warning. However, there are two considerations in this process: one is that the process of data collection and transmission has a great impact on the quality of data samples; the other is that common water quality analysis methods are not suitable for secondary water quality analysis with low information density and large capacity. Based on the above considerations, this study carried out data quality evaluation on two main types of secondary water supply online monitoring indicators (residual chlorine, turbidity), and summarized 5 common data errors, 3 error-causing factors and 2 types of data error characteristics in order to support for the subsequent smart management of secondary water supply. A method for online monitoring and evaluation of secondary water supply water quality based on K-means clustering method and entropy method is proposed, and four main secondary water supply water quality influencing factors are analyzed for variance analysis and covariance analysis to provide secondary water supply operation and maintenance management. Learn from experience and suggestions.
基于k均值聚类和熵值法的二次供水水质评价方法的应用
城市供水公司监测的二次供水水质指标通常为余氯、浊度、pH值等,数据可通过在线仪表连续上传,用于分析预警。但是,在这个过程中有两点需要考虑:一是数据采集和传输的过程对数据样本的质量影响很大;二是普通水质分析方法不适合二次水质分析,信息密度低,容量大。基于以上考虑,本研究对两类主要二次供水在线监测指标(余氯、浊度)进行数据质量评价,总结出5种常见数据误差、3种致错因素和2类数据误差特征,为后续二次供水智能管理提供支持。提出了一种基于k均值聚类法和熵值法的二次供水水质在线监测评价方法,并对4个主要的二次供水水质影响因素进行方差分析和协方差分析,为二次供水运维管理提供依据。从经验和建议中学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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