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Fault diagnosis using a probability least squares support vector classification machine 被引量:4

Fault diagnosis using a probability least squares support vector classification machine
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摘要 Coal mines require various kinds of machinery. The fault diagnosis of this equipment has a great impact on mine production. The problem of incorrect classification of noisy data by traditional support vector machines is addressed by a proposed Probability Least Squares Support Vector Classification Machine (PLSSVCM). Samples that cannot be definitely determined as belonging to one class will be assigned to a class by the PLSSVCM based on a probability value. This gives the classification results both a qualitative explanation and a quantitative evaluation. Simulation results of a fault diagnosis show that the correct rate of the PLSSVCM is 100%. Even though samples are noisy, the PLSSVCM still can effectively realize multi-class fault diagnosis of a roller bearing. The generalization property of the PLSSVCM is better than that of a neural network and a LSSVCM. Coal mines require various kinds of machinery. The fault diagnosis of this equipment has a great impact on mine production. The problem of incorrect classification of noisy data by traditional support vector machines is addressed by a proposed Probability Least Squares Support Vector Classification Machine (PLSSVCM). Samples that cannot be definitely determined as belonging to one class will be assigned to a class by the PLSSVCM based on a probability value. This gives the classification results both a qualitative explanation and a quantitative evaluation. Simulation results of a fault diagnosis show that the correct rate of the PLSSVCM is 100%. Even though samples are noisy, the PLSSVCM still can effectively realize multi-class fault diagnosis of a roller bearing. The generalization property of the PLSSVCM is better than that of a neural network and a LSSVCM.
出处 《Mining Science and Technology》 EI CAS 2010年第6期917-921,共5页 矿业科学技术(英文版)
基金 supported by the Program for New Century Excellent Talents in University (NoNCET- 08-0836) the National Natural Science Foundation of China (Nos60804022, 60974050 and 61072094) the Fok Ying-Tung Education Foundation for Young Teachers (No121066) by the Natural Science Foundation of Jiangsu Province (No.BK2008126)
关键词 支持向量分类 故障诊断 最小二乘 概率值 支持向量机 煤矿机械 煤矿生产 分类问题 fault diagnosis probability least squares support vector classification machine roller bearing
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