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Neural network applications in fault diagnosis and detection: an overview of implementations in engineering-related systems

机译:故障诊断和检测中的神经网络应用:与工程相关系统的实现概述

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摘要

The use of artificial neural networks (ANN) in fault detection analysis is widespread. This paper aims to provide an overview on its application in the field of fault identification and diagnosis (FID), as well as the guiding elements behind their successful implementations in engineering-related applications. In most of the reviewed studies, the ANN architecture of choice for FID problem-solving is the multilayer perceptron (MLP). This is likely due to its simplicity, flexibility, and established usage. Its use managed to find footing in a variety of fields in engineering very early on, even before the technology was as polished as it is today. Recurrent neural networks, while having overall stronger potential for solving dynamic problems, are only suggested for use after a simpler implementation in MLP was attempted. Across various ANN applications in FID, it is observed that preprocessing of the inputs is extremely important in obtaining the proper features for use in training the network, particularly when signal analysis is involved. Normalization is practically a standard for ANN use, and likely many other decision-based learning methods due to its ease of use and high impact on speed of convergence. A simple demonstration of ANN’s ease of use in solving a unique FID problem was also shown.
机译:在故障检测分析中使用人工神经网络(ANN)是普遍的。本文旨在概述其在故障识别和诊断(FID)领域的应用,以及其在工程相关应用中的成功实现背后的引导元件。在大多数审查的研究中,FID问题解决的ANN架构是多层的感知者(MLP)。这可能是由于其简单性,灵活性和建立的使用。它的使用很早就在工程中找到了在工程中的各种领域的基础,甚至在这项技术就像今天那样抛光之前。经常性的神经网络,同时求解动态问题的整体潜力,仅在尝试更简单地实现MLP之后使用。在FID中的各种ANN应用中,观察到输入的预处理对于获得用于训练网络的适当特征非常重要,特别是当涉及信号分析时。正常化实际上是ANN使用的标准,并且可能由于其易用性和对收敛速度的高影响而可能的许多其他基于决策的学习方法。还显示了安松易于解决独特FID问题的简单演示。

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