Multidimensional intelligent diagnosis system based on Support Vector Machine Classifier

M. Delgado, A. García, J. Ortega, J. J. Cárdenas, L. Romeral
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引用次数: 10

Abstract

Heeding the diagnostic requirements of electromechanical systems applied in automotive and aeronautical sectors, a multidimensional diagnostic system based on Support Vector Machine classifier is presented in this paper. In this context, different stationary and non-stationary speed and torque conditions are taken into account over an experimental actuator, in the same way, different single and combined failures scenarios are analyzed. In order to achieve a proper reliability in the diagnosis process, a multidimensional strategy is proposed: currents and vibrations from an electro-mechanical actuator are acquired. A great deal of features is calculated using statistical parameters from the acquired signals in time and frequency domain. Additionally, advanced time-frequency domain analysis techniques, such as Wavelet Packet Transform and Empirical Mode Decomposition, are used to achieve features which provide information in non-stationary conditions. The feature space dimensionality is analyzed by a feature reduction stage based on Partial Least Squares, which optimizes and reduces the feature set to be used for diagnosis proposes. The classification core is based on Support Vector Machine. Moreover, this work provides a performance comparison between the proposed classification algorithm and others such as Neural Network, k- Nearest Neighbor and Classification Trees. Experimental results are presented to demonstrate the feasibility and diagnostic capability of the proposed system.
基于支持向量机分类器的多维智能诊断系统
针对汽车和航空领域机电系统的诊断需求,提出了一种基于支持向量机分类器的多维诊断系统。在此背景下,考虑了实验执行器的不同平稳和非平稳速度和扭矩条件,同样,分析了不同的单一和组合故障情况。为了在诊断过程中获得适当的可靠性,提出了一种多维度策略:获取机电致动器的电流和振动。利用采集信号的时域和频域统计参数计算出大量的特征。此外,先进的时频域分析技术,如小波包变换和经验模态分解,用于获得在非平稳条件下提供信息的特征。通过基于偏最小二乘的特征约简阶段对特征空间维数进行分析,优化并约简出用于诊断建议的特征集。分类核心是基于支持向量机的。此外,本工作还提供了所提出的分类算法与其他分类算法(如神经网络、k近邻和分类树)的性能比较。实验结果验证了该系统的可行性和诊断能力。
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