Enhancing Predictive Maintenance in Water Treatment Plants through Sparse Autoencoder Based Anomaly Detection

Hussein Z, Balaji V, Ramesh R, Arokia Jesu Prabhu L, Venubabu Rachapudi, E. V
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Abstract

The deployment of Machine Learning (ML) for improving Water Treatment Plants (WTPs) predictive maintenance is investigated in the present article. Proactively detecting and fixing functional difficulties which might cause catastrophic effects has historically been an endeavour for reactive or schedule-based maintenance methods. Anomaly Detection (AD) in WTP predictive maintenance frameworks is the primary goal of this investigation, which recommends a novel approach based on autoencoder (AE)-based ML models. For the objective of examining high-dimensional time-series sensor data collected from a WTP over a long time, Sparse Autoencoders (SAEs) are implemented. The data collected involves an array of operational measurements that, evaluated together, describe the plant's overall performance. With the support of the AE, this work aims to develop a practical framework for WTP operation predictive maintenance. Anomalies are all system findings from testing that might result in flaws or malfunctions. The research article analyses January and July 2023 WTP data from Jiangsu Province China. The AE paradigm had been evaluated using F1-scores, recall, accuracy, and precision. SAE has substantially improved AD functionality.
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通过基于稀疏自动编码器的异常检测加强水处理厂的预测性维护
本文研究了如何利用机器学习(ML)技术改进水处理厂(WTPs)的预测性维护。主动检测和修复可能导致灾难性后果的功能故障,一直以来都是被动或基于计划的维护方法的努力方向。WTP 预测性维护框架中的异常检测(AD)是本研究的主要目标,它推荐了一种基于自动编码器(AE)的 ML 模型的新方法。为了检查从水处理厂长期收集的高维时间序列传感器数据,采用了稀疏自动编码器(SAE)。收集到的数据包括一系列运行测量值,这些测量值经过综合评估,可以描述工厂的整体性能。在 AE 的支持下,这项工作旨在为水处理厂运行预测性维护开发一个实用框架。异常是指测试中发现的可能导致缺陷或故障的所有系统结果。研究文章分析了中国江苏省 2023 年 1 月和 7 月的 WTP 数据。AE 范例使用 F1 分数、召回率、准确率和精确度进行了评估。SAE大幅提高了AD功能。
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