计算机科学
模式识别(心理学)
特征提取
支持向量机
小波包分解
预处理器
降噪
小波
人工智能
降级(电信)
小波变换
语音识别
电信
作者
Yongkui Sun,Yuan Cao,Peng Li,Shuai Su
标识
DOI:10.1109/tim.2023.3334370
摘要
Railway point machines (RPMs) are one of the most important equipments for the safe operation of railway systems. Different form the existing current curve-based methods, aiming at degradation status recognition for ZDJ9 RPMs, this paper firstly presents a sound signal-based degradation status recognition method considering the advantages of easy-to-acquire and non-contact. First, soft-threshold wavelet denoising method is utilized for data preprocessing, which is a key step for improving recognition accuracy, performing better than hard-threshold wavelet denoising method. Second, to comprehensively acquire degradation information, a degradation information extraction method combining wavelet packet decomposition (WPD), time-and frequency-domain statistical features is developed, which can realize fast and effective degradation features extraction. Then efficient ReliefF is adopted for feature dimension reduction, which can eliminate lots of redundant feature points. Finally, for pattern recognition issue of small set, support vector machine (SVM) is used for degradation status recognition. The degradation status recognition accuracy of slide plate of ZDJ9 RPMs reaches 91.67%. The superiority of the presented method is verified by some experiment comparisons. The presented method can provide support for the on-site staff to realize repair according to condition.
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