密封继电器元件信号识别的特征工程研究

Y. Wu, G.T. Wang, B. Lv, Y. Y. Xue, Y. Teng
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引用次数: 0

摘要

颗粒碰撞噪声检测是目前国内针对部件和设备的一种高度可靠的剩余颗粒检测方法。在余数检测过程中,构件内部的活动部件也会发生振动,产生与余数粒子波形相似的脉冲信号,称为构件信号。分量信号与剩余信号的区分是后续检测的前提,这也将显著影响剩余检测的效果。本文基于特征工程理论,构建并选择有效的分量信号识别特征,以提高分量信号的识别精度。首先,在原始识别特征的基础上,对声纹识别特征进行选择和添加,然后结合Pearson相关系数法和特征重要性选择法,选出性能排名前10位的特征。然后对这十个特征进行构造,得到大量构造的特征。最后,对这些构造特征进行再次选择,寻找分量信号的有效识别特征组合。实验结果表明,新特征组合的分类准确率为96.57%。这种构建和选择方法可以推广到其他粒子信号识别领域,在不增加实验样本的情况下有效提高信号识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Engineering Study for Signal Identification of Sealed Relay Components
Particle Impact Noise Detection is a highly reliable remainder particles detection method for components and equipment in China. In the process of remainder detection, the movable parts inside the components will also vibrate, a pulse signal similar to the remainder particles' waveform will be generated, which is called the component signal. the distinction between the component signal and the remainder signal is the premise of subsequent detection, which will also significantly affect the effect of remainder detection. Based on the theory of Feature Engineering, this paper constructs and selects the effective recognition features of component signals to improve the recognition accuracy of component signals. Firstly, based on the original recognition features, the voiceprint recognition features are selected and added, then combined the Pearson correlation coefficient method and feature importance selection method to select the top 10 features in performance. Then the ten features are constructed to obtain a large number of constructed features. In the end, these construction features are selected again to find the effective recognition feature combination of component signals. The experimental results show that the classification accuracy of the new feature combination is 96.57%. This construction and selection method can be extended to other particle signals recognition fields and effectively improve signal recognition accuracy without increasing experimental samples.
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