Research on Application of Artificial Neural Network in Fault Diagnosis of Chemical Process

Haonan Wang, Yijia J. Chen
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引用次数: 4

Abstract

Chemical processes are usually toxic, corrosive, flammable and explosive. If the process fails, the danger is extremely high. Traditional model-based fault diagnosis methods need to establish an accurate mathematical model of the system, while modern engineering processes are usually large in scale and complex, and it is difficult to establish an accurate mathematical model. Artificial neural network has been widely used in chemical process because of its advantages of parallel processing, self-adaptation, robustness, learnability and fault tolerance. Artificial neural networks based on "deep learning" have been successfully applied to fault diagnosis in various chemical processes. This article summarizes the principle and development process of artificial neural networks, and analyzes the research progress and application status of deep neural networks in chemical process fault diagnosis based on cases. Finally, it is pointed out that deep neural network in the field of chemical process fault diagnosis is of great significance in solving the impact of less fault data and system state changes on the fault detection rate, and promoting the industrial application of fault diagnosis models.
人工神经网络在化工过程故障诊断中的应用研究
化学过程通常是有毒的、腐蚀性的、易燃易爆的。如果这个过程失败,危险是非常高的。传统的基于模型的故障诊断方法需要建立精确的系统数学模型,而现代工程过程通常规模大、复杂,很难建立精确的数学模型。人工神经网络具有并行处理、自适应、鲁棒性、可学习性和容错性等优点,在化工过程中得到了广泛的应用。基于“深度学习”的人工神经网络已成功应用于各种化工过程的故障诊断。综述了人工神经网络的原理和发展历程,结合实例分析了深度神经网络在化工过程故障诊断中的研究进展和应用现状。最后指出,深度神经网络在化工过程故障诊断领域的应用,对于解决故障数据少、系统状态变化对故障检出率的影响,促进故障诊断模型的工业应用具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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