A Comparative Analysis of Artificial Intelligence-Based Methods for Fault Diagnosis of Mechanical Systems

R. Moghaddam, Navid Moshtaghi Yazdan
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Abstract

Abstract The present research studied fault diagnosis of composite sheets using vibration signal processing and artificial intelligence (AI)-based methods. To this end, vibration signals were collected from sound and faulty composite plates. Using different time-frequency signal analysis and processing methods, a number of features were extracted from these signals and the most effective features containing further information on these composite plates were provided as input to different classification systems. The output of these classification systems reveals the faults in composite plates. The different types of classification systems used in this research were the support vector machine (SVM), adaptive neuro-fuzzy inference system (ANFIS), k-nearest neighbor (k-NN), artificial neural networks (ANNs), Extended Classifier System (XCS) algorithm, and the proposed improved XCS algorithm. The research results were reflective of the superiority of ANFIS in terms of precision, while this method had the highest process duration with an equal number of iterations. The precision of the proposed improved XCS method was lower than that of ANFIS, but the duration of the process was shorter than the ANFIS method with an equal number of iterations.
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基于人工智能的机械系统故障诊断方法比较分析
摘要:本文研究了基于振动信号处理和人工智能的复合材料薄板故障诊断方法。为此,采集了正常和故障复合板的振动信号。使用不同的时频信号分析和处理方法,从这些信号中提取出许多特征,并将这些复合板上包含进一步信息的最有效特征作为输入提供给不同的分类系统。这些分类系统的输出结果揭示了复合板的断层。本研究中使用的分类系统包括支持向量机(SVM)、自适应神经模糊推理系统(ANFIS)、k-近邻(k-NN)、人工神经网络(ann)、扩展分类器系统(XCS)算法以及提出的改进XCS算法。研究结果反映了ANFIS在精度上的优势,而该方法在迭代次数相同的情况下,过程耗时最长。改进的XCS方法的精度低于ANFIS方法,但在迭代次数相同的情况下,过程持续时间比ANFIS方法短。
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Mechanics and Mechanical Engineering
Mechanics and Mechanical Engineering Engineering-Automotive Engineering
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