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Performance Improvement of Wavelet Noise Reduction Based on New Threshold Function

机译:基于新阈值函数的小波降噪性能改进

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Acoustic emission (AE) detection, as a non-electrical detection method, is very suitable for effective fault detection of power equipment with a strong electromagnetic field. However, the AE signal collected at industrial sites often contains a lot of interference noise, affecting the analysis and prediction of faults. In this study, a wavelet denoising method based on a new threshold function is proposed, to achieve a noise reduction in the low signal-to-noise ratio (SNR) signals. Simulation experiment results show that the proposed threshold function not only overcomes the shortcomings of the discontinuous hard threshold function, but also solves the constant deviation of the soft threshold function. What’s more, the proposed function achieves a good adaptability. When SNR = 10 dB: The SNR of the new threshold is 20.6622, and the RMSE is 0.0026. The SNR of the hard threshold is 20.2246 and the RMSE is 0.0027, compared with the traditional hard threshold method, the SNR of the new threshold is increased by 2.16% and the root mean square error (RMSE) is reduced by 3.7%; the SNR of the soft threshold is 15.5656, and the RMSE is 0.0047, compared with the traditional soft threshold method, the new threshold has a 32.74% increase in SNR and a 40.43% reduction in RMSE. When SNR = -10 dB: The SNR of the new threshold is 4.2602, and the RMSE is 0.0172. The SNR of the hard threshold is 3.8558 and the RMSE is 0.0182, compared with the traditional hard threshold method, the SNR of the new threshold is increased by 10.49% and the RMSE is reduced by 5.49%; the SNR of the soft threshold is 2.1625, and the RMSE is 0.0212, compared with the soft threshold method, SNR is improved by 97% and RMSE is reduced by 18.87%. Performance analyses have proved that the improved wavelet denoising method can obtain a good noise reduction effect. It is very helpful for AE signal analysis with the generally low SNR, which can improve the accuracy of failure identification in subsequent acts.
机译:作为非电检测方法,声发射(AE)检测非常适合对具有强电磁场的电力设备进行有效的故障检测。但是,在工业现场收集的AE信号通常会包含很多干扰噪声,从而影响故障的分析和预测。在这项研究中,提出了一种基于新阈值函数的小波去噪方法,以实现低信噪比(SNR)信号的降噪。仿真实验结果表明,提出的阈值函数不仅克服了不连续的硬阈值函数的缺点,而且解决了软阈值函数的常数偏差。而且,所建议的功能具有良好的适应性。当SNR = 10 dB时:新阈值的SNR为20.6622,RMSE为0.0026。硬阈值的SNR为20.2246,RMSE为0.0027,与传统的硬阈值方法相比,新阈值的SNR提高了2.16%,均方根误差(RMSE)降低了3.7%。与传统的软阈值方法相比,软阈值的SNR为15.5656,RMSE为0.0047,新阈值的SNR提高了32.74%,RMSE降低了40.43%。当SNR = -10 dB时:新阈值的SNR为4.2602,RMSE为0.0172。硬阈值的信噪比为3.8558,RMSE为0.0182,与传统的硬阈值方法相比,新阈值的信噪比提高了10.49%,RMSE降低了5.49%。软阈值的SNR为2.1625,RMSE为0.0212,与软阈值方法相比,SNR提高了97%,RMSE降低了18.87%。性能分析表明,改进的小波去噪方法具有良好的降噪效果。对于通常具有较低SNR的AE信号分析,这非常有帮助,它可以提高后续动作中故障识别的准确性。

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