APPLICATION OF SVM METHOD IN FAULT DIAGNOSIS OF А MULTI-STAGE CENTRIFUGAL PUMP
|更新时间:2024-07-05
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APPLICATION OF SVM METHOD IN FAULT DIAGNOSIS OF А MULTI-STAGE CENTRIFUGAL PUMP
Journal of Mechanical Strength Vol. 46, Issue 2, Pages: 272-280(2024)
作者机构:
1. 重庆理工大学机械工程学院
2. 重庆水泵厂有限责任公司研究生培养基地
3. 北京化工大学机电工程学院
作者简介:
基金信息:
The project supported by Sub-Topic of the National Key Research and Invention Program of China(No. 2020YFC1512403).and the Key Project of Chongqing Science and Technology Bureau (No. estc2018jszx-cyzdX0167).
LI YouGen, MA WenSheng, LI FangZhong, et al. APPLICATION OF SVM METHOD IN FAULT DIAGNOSIS OF А MULTI-STAGE CENTRIFUGAL PUMP. [J]. Journal of Mechanical Strength , 2024,46(2):272-280.
DOI:
LI YouGen, MA WenSheng, LI FangZhong, et al. APPLICATION OF SVM METHOD IN FAULT DIAGNOSIS OF А MULTI-STAGE CENTRIFUGAL PUMP. [J]. Journal of Mechanical Strength , 2024,46(2):272-280. DOI: 10.16579/j.issn.1001.9669.2024.02.003.
APPLICATION OF SVM METHOD IN FAULT DIAGNOSIS OF А MULTI-STAGE CENTRIFUGAL PUMP
In allusion to the difficulty to obtain fault samples of multi-stage centrifugal pumps in practical engineering
three typical faults containing rubbing
misalignment and unbalance were simulated through the fault simulation test-bed of multi-stage centrifugal pumps. And a fault diagnosis model based on support vector machine (SVM) was established to realize the classification of three types of faults. High dimensional feature samples were constructed by extracting time-frequeney domain characteristies of vibration signal with ensemble empirical mode decomposition(EEMD). combined with characteristies of time domain
frequeney domain and information entropy. The efficient fault classification was achieved by optimizing the quality of input samples with principal component analysis (PCA). In addition
by comparing the classification effects of SVM and back propagation (BP) neural network
it shows that the SVM model has better classification effect and high applicability in fault diagnosis of multi-stage centrifugal pump.