
基于改进多项式响应面的VPMCD方法及其在滚动轴承故障诊断中的应用
The VPMCD approach based on the improved polynomial response surface and its application in the rolling bearing fault diagnosis
The training process of Variable predictive model based class discriminate (VPMCD) approach is to establish the predictive model with Polynomial Response Surface (PRS) method. However, the model fitting precision of PRS can't significantly improve with the increase of the capacity of training sample. According to this defect, the PRS method is improved in this paper and the method of VPMCD based on Improved Polynomial Response Surface (IPRS) is proposed, and then applied to rolling bearing fault diagnosis. Through the experiment, the pattern classification accuracy of the original method and the improved method are compared under the condition of different training sample sizes. The results show that compared with the original VPMCD method, improved VPMCD method not only has better effect of pattern classification, but also its classification precision enhances more obviously with the increase of the training sample size.
基于变量预测模型的模式识别 / 改进的多项式响应面 / 滚动轴承 / 故障诊断 {{custom_keyword}} /
Variable predictive model based class discriminate / Improved polynomial response surface / Rolling bearing / Fault diagnosis {{custom_keyword}} /
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