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A novel fault identification and root-causality analysis of incipient faults with applications to wastewater treatment processes

机译:用应用于污水处理过程的新型故障识别和根因因子分析

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摘要

To detect incipient faults and identify the corresponding root-cause in the wastewater treatment processes, this paper proposed a novel fault diagnosis framework. In this framework, we firstly proposed a new method, called Moving average residual difference reconstruction contribution plot (Mard-RCP). Mard-RCP can solve the defect of traditional reconstruction-based contribution plot (RCP), which is not only required to obtain the sensor fault direction in advance, but also usually suffers from the fault smearing effect. Also, this method can effectively improve the diagnosis accuracy by manipulating the signal-to-noise ratio properly. Secondly, to address the traditional issue of contribution plot to identify root-variables regardless of causality, a novel fault candidate variables selection method, termed as VS-R, together with Granger causal (GC) analysis is introduced to locate the root-variables of the fault. The proposed fault diagnosis framework is simulated and validated on the BSM1 simulation platform proposed by International Water Association and in a full-scale wastewater treatment plant.
机译:为了检测初始故障并识别废水处理过程中的相应根本原因,本文提出了一种新颖的故障诊断框架。在这一框架中,我们首先提出了一种新的方法,称为移动平均剩余差异重建贡献策略(MARD-RCP)。 MARD-RCP可以解决传统的基于重建的贡献图(RCP)的缺陷,这不仅需要提前获得传感器故障方向,而且通常存在故障涂抹效果。此外,该方法可以通过适当地操纵信噪比有效地提高诊断精度。其次,为了解决贡献情节的传统问题,以识别根变量,无论因果关系如何,引入了一种称为VS-R的故障候选变量选择方法,以及格兰杰因果(GC)分析以定位root-变量错误。建议的故障诊断框架模拟并验证了国际水协会提出的BSM1仿真平台,并在全尺寸的废水处理厂上进行了验证。

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