基于改进粒子过滤器的优化EWMA污水处理厂故障检测

I. Baklouti, M. Mansouri, H. Nounou, M. Nounou, A. Hamida
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引用次数: 0

摘要

环境、健康和安全问题在世界范围内具有重要意义。这些问题与可用于各种家庭和工业用途的水的供应和质量密切相关。因此,本文的目的是开发一个旨在提高污水处理厂运行的建模和监测技术的一般框架。在这项工作中,将发展一种改进的PF (IPF)方法,以更好地处理污水处理厂建模中涉及的非线性和高维状态估计问题。在此基础上,提出了一种改进的检测控制图,以加强污水处理厂的监测。本工作的贡献有以下几点:1)利用改进的粒子滤波估计了三种天气(干、暴、雨)下污水处理厂的非线性状态变量。2)基于平滑参数($\lambda$)和控制宽度l的最佳选择,开发了一种新的优化EWMA (OEWMA),将状态估计技术的优点与OEWMA图相结合,改进了污水处理系统的故障检测。4)研究故障类型(方差变化和均值移位)和故障大小对监测性能的影响。
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Fault Detection in Waste Water Treatment Plants using Improved Particle Filter-based Optimized EWMA
Environmental, health, and safety concerns are of major importance world-wide. These concerns are closely tied to the availability and quality of water that can be used in various domestic and industrial applications. Therefore, the objective of this paper is to develop a general framework for modeling and monitoring technique that aims at enhancing the operation of wastewater treatment plants. In this work, an improved PF (IPF) method will be developed to better handle the nonlinear and high dimensional state estimation problem involved in modeling wastewater treatment plants. Then, an improved detection control chart to enhance the monitoring of WWTP will be developed. The contributions of this work are the foorfold: 1) to estimate a nonlinear state variables of WWTPs using improved particle filter in three types of weathers (dry, storm and rain). 2) to develop an new optimized EWMA (OEWMA) based on the best selection of smoothing parameter ($\lambda$) and control width L. 3) to combine the advantages of state estimation technique, with OEWMA chart to improve the fault detection of WWTP. 4) to investigate the effect of fault types (change in variance and mean in shift) and sizes on the monitoring performances.
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