基于机器学习模式的故障诊断方法综述

Zhu Xiao, Zhe Cheng, Yuehao Li
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引用次数: 7

摘要

机器学习作为人工智能领域的重要方法之一,在促进工程应用和学术研究方面发挥着至关重要的作用。近年来,随着人工智能领域的快速发展,其他以人工智能为手段的领域也取得了很大的突破,如故障诊断。传统的故障诊断方法是基于各种不同的信号采集、信号处理、信号分析手段对设备进行故障诊断和检测,而基于机器学习的故障诊断方法近年来取得了很大的突破,在故障诊断领域发挥了重要作用。本文首先介绍了机器学习和故障诊断的基本概念,然后介绍了几种常见的机器学习方法,并对近年来的发展现状进行了总结和分析。最后,笔者提出了自己的一些观点并进行了总结。
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A Review of Fault Diagnosis Methods Based on Machine Learning Patterns
As one of the important methods in the field of artificial intelligence, machine learning plays a crucial role in the promoting engineering applications and the academic research. In recent years, with the rapid development of the field of artificial intelligence, other fields using artificial intelligence as a means has also made great breakthroughs, such as fault diagnosis. The traditional fault diagnosis method is based on a variety of different signal acquisition, signal processing, signal analysis means for equipment fault diagnosis and detection, while the fault diagnosis method based on machine learning has made a great breakthrough in recent years, and plays an important role in the field of fault diagnosis. This paper first describes the basic concepts of machine learning and fault diagnosis, and then describes several common machine learning methods, and summarizes and analyzes the development status in recent years. Finally, the author puts forward some of his own views and summarizes.
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