Department of Mechanical and Manufacturing Engineering, Manipal Institute of Technology, Manipal University, Karnataka, Manipal 576104, India.
Comput Intell Neurosci. 2012;2012:582453. doi: 10.1155/2012/582453. Epub 2012 Nov 14.
The wavelet based denoising has proven its ability to denoise the bearing vibration signals by improving the signal-to-noise ratio (SNR) and reducing the root-mean-square error (RMSE). In this paper seven wavelet based denoising schemes have been evaluated based on the performance of the Artificial Neural Network (ANN) and the Support Vector Machine (SVM), for the bearing condition classification. The work consists of two parts, the first part in which a synthetic signal simulating the defective bearing vibration signal with Gaussian noise was subjected to these denoising schemes. The best scheme based on the SNR and the RMSE was identified. In the second part, the vibration signals collected from a customized Rolling Element Bearing (REB) test rig for four bearing conditions were subjected to these denoising schemes. Several time and frequency domain features were extracted from the denoised signals, out of which a few sensitive features were selected using the Fisher's Criterion (FC). Extracted features were used to train and test the ANN and the SVM. The best denoising scheme identified, based on the classification performances of the ANN and the SVM, was found to be the same as the one obtained using the synthetic signal.
基于小波的去噪方法已被证明通过提高信噪比 (SNR) 和降低均方根误差 (RMSE) 来对轴承振动信号进行去噪。本文基于人工神经网络 (ANN) 和支持向量机 (SVM) 的性能,评估了七种基于小波的去噪方案,用于轴承状态分类。该工作分为两部分,第一部分是对模拟带有高斯噪声的有缺陷轴承振动信号的合成信号进行这些去噪方案的处理。根据 SNR 和 RMSE 确定了最佳方案。在第二部分,对来自定制的滚动轴承 (REB) 测试台的四个轴承状态的振动信号进行了这些去噪方案的处理。从去噪信号中提取了几个时域和频域特征,其中使用 Fisher 准则 (FC) 选择了几个敏感特征。提取的特征用于训练和测试 ANN 和 SVM。根据 ANN 和 SVM 的分类性能确定的最佳去噪方案与使用合成信号获得的方案相同。