Estimation based Fault Diagnosis and identification in sequential Industrial batch processes modeled as Hybrid Petri nets

K. Renganathan
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引用次数: 2

Abstract

Fault Diagnosis and identification (FDI) in a process plant refers to the concept of detecting and locating faults occurring in a process plant. Faults mostly include sensor and actuator faults. Identification or location of a fault requires a special technique or algorithm and hence the concept of Hybrid Petri nets are proposed to achieve FDI since it has a strong mathematical background. In this paper the concept of estimation based FDI is proposed and for this purpose Hybrid Petri nets are used to model the process which is followed by detailed analysis in Petri net environment. Corresponding FDI algorithms are developed for a typical sequential Industrial batch process- a three tank hybrid system (bench mark system) which is equivalent to the sewage treatment process application considered in this paper for study. The algorithms are coded in MATLAB and implemented using a Graphical User interface and corresponding numerical results are obtained.
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基于混合Petri网模型的连续工业批处理故障诊断与识别
工艺装置故障诊断与识别是指对工艺装置中发生的故障进行检测和定位的概念。故障主要包括传感器和执行器故障。故障的识别或定位需要一种特殊的技术或算法,因此提出了混合Petri网的概念来实现FDI,因为它具有很强的数学背景。本文提出了基于估算的FDI的概念,并为此使用混合Petri网对这一过程进行了建模,然后在Petri网环境下进行了详细分析。针对典型的顺序工业批处理过程-三槽混合系统(基准系统)开发了相应的FDI算法,相当于本文研究的污水处理过程应用。在MATLAB中对算法进行了编码,并利用图形用户界面进行了实现,得到了相应的数值结果。
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