基于GRBF网络的Granger因果分析方法

Huang Chen, Jianguo Wang, Pangbin Ding, X. Ye, Yuan Yao, He-Lin Chen
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引用次数: 0

摘要

准确、高效的故障根本原因诊断是防止工业系统重大事故发生的有效手段。由于复杂系统建模的困难,格兰杰因果分析被广泛应用。在故障发生后尽可能短的时间内进行根本原因诊断,可以提高诊断结果的准确性。由于短观测数据具有较强的非线性关系,本文将非线性降维方法中的广义径向基函数(GRBF)神经网络引入格兰杰因果模型,实现基于非线性短观测数据的格兰杰故障根本原因诊断。通过对田纳西伊士曼化工过程的数值模拟和故障诊断实验研究,验证了该方法的有效性。结果表明,该方法提高了格兰杰因果分析对非线性因果关系的处理能力,可以利用少量故障数据完成准确的故障根本原因诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Granger causality analysis method based on GRBF network
Accurate and efficient fault root cause diagnosis is an effective means to prevent major accidents in industrial systems. Due to the difficulty of modeling complex systems, Granger causal analysis is widely used. Root cause diagnosis in the shortest possible time after a fault occurs can improve the accuracy of diagnostic results. Due to the strong nonlinear relationship in the short observation data, this paper introduces Generalized Radial Basis Function(GRBF) neural network of the nonlinear dimensionality reduction method into the Granger causal model to realize the root cause diagnosis of Granger faults based on the nonlinear short observation data. The effectiveness of the proposed method is verified by numerical simulation and fault diagnosis experimental study of Tennessee Eastman,(TE) chemical process. The results show that the proposed method improves the processing ability of Granger causal analysis for nonlinear causality, and can use a small amount of the fault data to complete accurate fault root cause diagnosis.
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