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KLPP特征约简与RELM的高压隔膜泵单向阀故障诊断

Check Valve Fault Diagnosis of High-pressure Diaphragm Pump with KLPP Feature Reduction and RELM
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摘要 为此提出基于核局部保持投影(KLPP)和正则化极限学习机(RELM)的高压隔膜泵单向阀故障诊断方法。首先,提取单向阀振动信号的时域、频域、时频域特征,构建多域特征集;然后,通过KLPP算法对构建的多域特征集进行维数约简;最后,建立基于RELM的故障诊断模型,用于识别单向阀运行状态。实验结果表明,基于多域特征的故障诊断方法检测精度高于单域特征识别方法;KLPP约简多域特征集,可以有效消除信息冗余;建立的RELM故障诊断模型识别精度达到98.89%,能够有效识别高压隔膜泵单向阀故障类型。 The single-domain feature cannot fully reflect the operating state of check valve of the high-pressure diaphragm pump,and the high-dimensional feature set composed of multi-domain features will produce dimensional disasters,and the information redundancy leads to low recognition accuracy of the fault diagnosis model.To this end,a fault diagnosis method for check valve of high-pressure diaphragm pump based on KLPP(Kernel local preservation projection)and RELM(Regularized extreme learning machine)is proposed in this paper.First,the time domain,frequency domain and time-frequency domain features of check valve vibration signal are respectively extracted to construct a multi-domain feature set.Then,dimensionality reduction is performed on the constructed multi-domain feature set through the KLPP algorithm.Finally,a fault diagnosis model based on RELM is established to identify the operating status of check valve.The experimental results show that the detection accuracy of the fault diagnosis method based on multi-domain features is higher than that of the single-domain feature recognition method;KLPP reduces the multi-domain feature set,which can effectively eliminate information redundancy;the established RELM fault diagnosis model has a recognition accuracy of 98.89%,which can effectively identify the fault type of check valve of the highpressure diaphragm pump.
作者 李瑞 范玉刚 张光辉 LI Rui;FAN Yugang;ZHANG Guanghui(Faculty of Information Engineering and Automation,Kunming University of Science and Technology,Kunming 650500,China;Yunnan Key Laboratory of Artificial Intelligence,Kunming University of Science and Technology,Kunming 650500,China)
出处 《机械科学与技术》 CSCD 北大核心 2023年第8期1332-1339,共8页 Mechanical Science and Technology for Aerospace Engineering
基金 国家自然科学基金项目(649220180003)。
关键词 单向阀 故障诊断 核局部保持投影 正则化极限学习机 check valve fault diagnosis kernel locality preserving projection regularized extreme learning machine
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