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Monitoring of wastewater treatment plants using improved univariate statistical technique

机译:利用改进的单变量统计技术监测废水处理厂

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Proper operation of the wastewater treatment plants (WWTPs) is crucial in order to maintain the sought effectiveness and desirable water quality. Therefore, the objective of this paper is to develop univariate statistical technique that aims at enhancing the monitoring of wastewater treatment plants using an improved particle filtering (IPF)-based multiscale optimized exponentially weighted moving average chart (MS-OEWMA). The advantages of the developed technique are fivefold: (i) estimate a nonlinear state variables of WWTPs using IPF technique. The IPF method yields an optimum choice of the sampling distribution, which also accounts for the observed data; (ii) use the dynamical multiscale representation to extract accurate deterministic features and decorrelate autocorrelated measurements. (iii) Develop an optimized EWMA (OEWMA) based on the best selection of smoothing parameter (A) and control width L; (iv) combine the advantages of state estimation technique with MS-OEWMA chart to improve the fault detection in WWTP systems; and (v) investigate the effect of fault types (offset or bias, variance and drift) and fault sizes on the fault detection performances. The developed technique is validated using simulated COST wastewater treatment BSM1 model. The BSM1, provided by the IWA Task Group on Benchmarking of Control Strategies, is a simulation platform that allows for creating sensor faults disturbances in a wastewater treatment plant. The detection results are evaluated using three fault detection criteria: missed detection rate (MDR), false alarm rate (FAR) and average run length (ARL(1)). (C) 2018 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:污水处理厂(WWTPS)的正常操作至关重要,以维持寻求的效果和理想的水质。因此,本文的目的是制定单变量统计技术,旨在使用改进的粒子过滤(IPF)的多尺度优化的指数加权移动平均图(MS-OEWMA)来增强废水处理厂的监测。开发技术的优点是五倍:(i)使用IPF技术估计WWTP的非线性状态变量。 IPF方法产生了对采样分布的最佳选择,这也考虑了观察到的数据; (ii)使用动态多尺度表示来提取准确的确定性特征和去相关自相关测量。 (iii)基于最佳选择平滑参数(A)和控制宽度L,开发优化的EWMA(OEWMA); (iv)将状态估计技术与MS-OEWMA图表相结合,以改善WWTP系统中的故障检测; (v)研究故障类型(偏移或偏差,方差和漂移)和故障大小对故障检测性能的影响。使用模拟成本污水处理BSM1模型进行验证开发技术。由IWA任务组提供的BSM1在控制策略的基准测试中,是一种模拟平台,允许在废水处理厂中创建传感器故障干扰。使用三个故障检测标准进行评估检测结果:错过检测率(MDR),误报率(远)和平均运行长度(ARL(1))。 (c)2018化学工程师机构。 elsevier b.v出版。保留所有权利。

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