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Application of Wavelet Packet Analysis and Improved LSSVM on Rotating Machinery Fault Diagnosis

机译:小波包分析和改进的LSSVM在旋转机械故障诊断中的应用

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For enhancing fault diagnosis precision, the wavelet packet analysis and least squares support vector machine are combined effectively. First, the signals are decomposed in arbitrary minute frequency bands by use of wavelet packet analysis technique. Doing energy calculation in these frequency bands to form eigenvectors is more reasonable. And then a least squares support vector machine fault diagnosis model is presented When the least squares support vector machine is used in fault diagnosis, the Fibonacci symmetry searching algorithm is simplified and improved. It is presented to choose parameter of kernel function on dynamic, which enhances preciseness rate of diagnosis. In the model, the non-sensitive loss function is replaced by quadratic loss function and the inequality constraints are replaced by equality constraints. The simulation results show the model can effectively diagnose machinery facility faults.
机译:为了提高故障诊断精度,小波分组分析和最小二乘支持向量机得到有效地组合。首先,通过使用小波分组分析技术,信号在任意微小频带中分解。在这些频段中进行能量计算以形成特征向量更合理。然后,当最小二乘支持向量机用于故障诊断时,呈现最小二乘支持向量机故障诊断模型,简化和改进了Fibonacci对称搜索算法。提出了在动态上选择内核功能参数,从而提高了诊断的精确度。在该模型中,非敏感损失函数被二次丢失函数所取代,并且不等式约束由平等约束替换。仿真结果表明该模型可有效地诊断机械设施故障。

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