1. 陆军工程大学石家庄校区
2. 中国人民解放军32140部队
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裴模超, 张建军, 李洪儒, 等. 基于双目标优化遗传算法和支持向量机的旋转机械退化状态识别[J]. 机械强度, 2021,43(6):1280-1288.
PEI MoChao, ZHANG JianJun, LI HongRu, et al. ROTATING MACHINERY DEGRADATION STATUS IDENTIFICATION BASED ON BI-OBJECTIVE OPTIMIZATION GENETIC ALGORITHM AND SVM[J]. 2021,43(6):1280-1288.
裴模超, 张建军, 李洪儒, 等. 基于双目标优化遗传算法和支持向量机的旋转机械退化状态识别[J]. 机械强度, 2021,43(6):1280-1288. DOI: 10.16579/j.issn.1001.9669.2021.06.002.
PEI MoChao, ZHANG JianJun, LI HongRu, et al. ROTATING MACHINERY DEGRADATION STATUS IDENTIFICATION BASED ON BI-OBJECTIVE OPTIMIZATION GENETIC ALGORITHM AND SVM[J]. 2021,43(6):1280-1288. DOI: 10.16579/j.issn.1001.9669.2021.06.002.
退化特征提取是机械健康状态监测的重要组成部分,伴随旋转机械长时间连续运转,退化特征出现性能波动甚至下降,给退化特征提取和选择造成了困难。首先利用一个特征映射算法库对振动信号提取特征,并基于Kolmogorov-Smirnov(KS)检验和Benjamini-Yekutieli过程对原始特征集进行过滤,然后利用双目标优化遗传算法(Bi-objective Optimization Genetic Algorithm, BOGA)结合支持向量机分类器(Support Vector Classifier, SVC),在有监督的环境下搜索出最佳特征子集,其中BOGA设置了SVC分类精确度和特征子集维数两个目标函数,前者进行最大化,后者进行最小化。通过在液压泵退化状态数据集上进行实验和在凯斯西楚大学轴承数据集与FRESH,P,CAa、ReliefF、JMIM三种方法进行对比,验证了该方法在退化状态识别上的较好性能。
Extracting degradation features is an important part of Monitoring the health status of machinery. The performance of degradation features fluctuates or even declines with the continuous operation of the rotating machinery for a long time, which makes it difficult to extract and select degradation features. First, a feature mapping Algorithm library was used to extract features from the vibration signals and the original feature set was filtered based on Kolmogorov-smirnov(KS) test and Benjamini-Yekutieli process. Then, the optimal feature subset was searched in the supervised environment by combining BOGA with SVC. The accuracy of SVC and the dimension of subset were two objective functions of BOGA, the former was maximized, the latter was minimized. The performance of proposed method was verified by the experiment on the data set of hydraulic pump degradation state and the comparison with FRESH,P,CAa, ReliefF and JMIM on the case western reserve university bearing data set.
旋转机械退化状态识别双目标优化遗传算法支持向量机分类器
Rotating machineryDegradation state identificationBi-objective optimization genetic algorithm(BOGA)Support vector classifier(SVC)
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