{"title":"偏心故障的高级诊断识别:在感应电动机上的应用","authors":"I. Bouchareb, A. Lebaroud, A. Cardoso, S. Lee","doi":"10.1109/DEMPED.2019.8864920","DOIUrl":null,"url":null,"abstract":"Artificial Intelligence (AI) is expected to be a large driver in industrial applications competitiveness in the not-so-distant future. Induction motors (IMs) are used worldwide as the “workhorse” in industrial applications. The paper reviews the possibility of integrating artificial intelligence techniques for condition monitoring and fault diagnosis of induction motors so-called advanced diagnosis. The paper focuses on advanced diagnosis method related on the recognition, classification and prognostics of eccentricities faults in induction motor drives. Rotor eccentricity has been the aim of many researchers. However reliably detection and accurate prediction of eccentricity fault is still not possible and difficult task if appear individually. To face this situation, an intelligent diagnosis system merges Neural Network and Hidden Markov Model together (NN-HMM) into a common framework to overcome the deficiencies of eccentricity diagnosis. Current measurements based on non-parametrical Time-Frequency Representation (TFR) are used for features extraction. Then, a features selection method using Fisher's Discriminant Ratio (FDR) is applied to select an optimal number of the extracted features associated with polynomial approach to track, recognize of various eccentricities faults types and degree precisely. An experimental study on a 7.5h induction motor prove the reliability and the efficiency of the proposed method in condition monitoring of eccentricities with different degree 0%, 20%, 40%, 60, 80% precisely independent of load or motor type.","PeriodicalId":397001,"journal":{"name":"2019 IEEE 12th International Symposium on Diagnostics for Electrical Machines, Power Electronics and Drives (SDEMPED)","volume":"115 11","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2019-08-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"3","resultStr":"{\"title\":\"Towards Advanced Diagnosis Recognition for Eccentricities Faults: Application on Induction Motor\",\"authors\":\"I. Bouchareb, A. Lebaroud, A. Cardoso, S. 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引用次数: 3
摘要
在不久的将来,人工智能(AI)有望成为工业应用竞争力的重要推动力。感应电动机(IMs)在世界范围内被用作工业应用中的“主力”。本文综述了将人工智能技术集成到异步电动机状态监测和故障诊断的可能性。重点研究了异步电动机传动偏心故障的识别、分类和预测的先进诊断方法。转子偏心率一直是许多研究者的研究目标。然而,如果偏心故障单独出现,仍然无法可靠地检测和准确预测。针对这种情况,将神经网络和隐马尔可夫模型(NN-HMM)融合为一个智能诊断系统来克服偏心诊断的不足。基于非参数时频表示(TFR)的电流测量用于特征提取。然后,采用Fisher’s Discriminant Ratio (FDR)特征选择方法,选取最优数量的提取特征,结合多项式方法对各种偏心故障类型和程度进行精确跟踪识别。通过对7.5h异步电动机的实验研究,验证了该方法对不同程度的偏心量(0%、20%、40%、60%、80%)进行状态监测的可靠性和有效性,这些偏心量与负载或电机类型完全无关。
Towards Advanced Diagnosis Recognition for Eccentricities Faults: Application on Induction Motor
Artificial Intelligence (AI) is expected to be a large driver in industrial applications competitiveness in the not-so-distant future. Induction motors (IMs) are used worldwide as the “workhorse” in industrial applications. The paper reviews the possibility of integrating artificial intelligence techniques for condition monitoring and fault diagnosis of induction motors so-called advanced diagnosis. The paper focuses on advanced diagnosis method related on the recognition, classification and prognostics of eccentricities faults in induction motor drives. Rotor eccentricity has been the aim of many researchers. However reliably detection and accurate prediction of eccentricity fault is still not possible and difficult task if appear individually. To face this situation, an intelligent diagnosis system merges Neural Network and Hidden Markov Model together (NN-HMM) into a common framework to overcome the deficiencies of eccentricity diagnosis. Current measurements based on non-parametrical Time-Frequency Representation (TFR) are used for features extraction. Then, a features selection method using Fisher's Discriminant Ratio (FDR) is applied to select an optimal number of the extracted features associated with polynomial approach to track, recognize of various eccentricities faults types and degree precisely. An experimental study on a 7.5h induction motor prove the reliability and the efficiency of the proposed method in condition monitoring of eccentricities with different degree 0%, 20%, 40%, 60, 80% precisely independent of load or motor type.