基于集成 MPA 优化随机森林的数控机床故障诊断方法研究

Xiaoyan Wang
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引用次数: 0

摘要

引言:数控机床故障的智能诊断不仅可以及早发现和排除故障,提高机床运行的可靠性和工作效率,还可以提前对工位进行短时维护,延长机床的使用寿命,保证生产线的正常生产:针对目前数控机床故障诊断研究中存在的特征选择考虑不周、方法不够精确等问题。方法:本文以智能优化算法为框架,以集成学习为手段,提出了一种基于改进随机森林的数控机床故障诊断方法。首先,分析数控机床故障诊断过程,提取数控机床故障特征,构建时域、频域和时频域特征体系;然后,以集成学习的海洋捕食者优化算法为框架,对随机森林进行改进,构建数控机床故障诊断模型;最后,通过仿真实验分析验证了所提方法的有效性和优越性。结论:解决了数控机床故障诊断精度低、特征系统不健全的问题。
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Research on Fault Diagnosis Method of CNC Machine Tools Based on Integrated MPA Optimised Random Forests
INTRODUCTION: Intelligent diagnosis of CNC machine tool faults can not only early detection and troubleshooting to improve the reliability of machine tool operation and work efficiency, but also in advance of the station short maintenance to extend the life of the machine tool to ensure that the production line of normal production.OBJECTIVES: For the current research on CNC machine tool fault diagnosis, there are problems such as poorly considered feature selection and insufficiently precise methods.METHODS: This paper proposes a CNC machine tool fault diagnosis method based on improving random forest by intelligent optimisation algorithm with integrated learning as the framework. Firstly, the CNC machine tool fault diagnosis process is analysed to extract the CNC machine tool fault features and construct the time domain, frequency domain and time-frequency domain feature system; then, the random forest is improved by the marine predator optimization algorithm with integrated learning as the framework to construct the CNC machine tool fault diagnosis model; finally, the validity and superiority of the proposed method is verified by simulation experiment analysis.RESULTS: The results show that the proposed method meets the real-time requirements while improving the diagnosis accuracy.CONCLUSION: Solve the problem of poor accuracy of fault diagnosis of CNC machine tools and unsound feature system. 
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