首页> 外文会议>2017 2nd International Conference on Power and Renewable Energy >Degradation state recognition of ultrasonic motor based upon locality preserving projection and support vector machine optimized by fruit fly optimization algorithm
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Degradation state recognition of ultrasonic motor based upon locality preserving projection and support vector machine optimized by fruit fly optimization algorithm

机译:基于果蝇优化算法的局部保留投影和支持向量机的超声电机退化状态识别

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摘要

The cracking of piezoelectric ceramic components is one of the main failure pattern of ultrasonic motors. The degradation characteristics can be extracted effectively by monitoring the voltage signal of piezoelectric sensor. High dimensional feature vector contains a lot of redundant information due to dimension disaster. Locality preserving projection (LPP) can effectively reduce dimension on the degradation feature, which can fuse the high dimension feature. The parameters of support vector machine (SVM) have an important influence on the generalization ability of the model. Fruit fly optimization algorithm (FOA) has the advantages of few parameters, fast calculation speed, strong ability of global optimization and easy to implement. FOA is utilized to optimize SVM in this paper accordingly, and the optimized SVM by FOA (FOASvM) is applied in degradation state recognition of ultrasonic motor. Finally, the effectiveness of the proposed method is verified through the comparative analysis.
机译:压电陶瓷元件的开裂是超声马达的主要故障模式之一。通过监测压电传感器的电压信号可以有效地提取劣化特性。高维特征向量由于维灾而包含大量冗余信息。局部保留投影(LPP)可以有效地降低退化特征的尺寸,从而融合高维特征。支持向量机(SVM)的参数对模型的泛化能力有重要影响。果蝇优化算法(FOA)具有参数少,计算速度快,全局优化能力强,易于实现的优点。因此,本文利用FOA对SVM进行了优化,并将FOA优化的SVM(FOASvM)应用于超声电机的退化状态识别。最后,通过比较分析验证了所提方法的有效性。

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