基于多特征融合和随机森林的电能表异物检测

Xiaoyong Jiang, Tao Yang
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引用次数: 0

摘要

异物检测是保证电能表计量准确的重要措施。针对人工对电能表异物检测效率低下的问题,提出了一种基于多特征融合和随机森林的电能表异物自动检测方法。首先,对存在背景噪声的被检测电能表发出的声音信号进行小波去噪处理。然后,提取时间和频率特征参数,形成混合特征矩阵,输入到由决策树组成的随机森林中进行分类。通过分析不同特征融合方法的识别率,得出了最优的特征融合方法。实验结果表明,短时间能量、谱熵、LPC和MFCC的融合模式表现出最好的性能,其异物检测精度高于93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Foreign Object Detection for Electric Energy Meters Based on Multi-feature Fusion and Random Forest
Foreign object detection is an important measure to guarantee accurate measurement of electric energy meters. In view of the inefficient manual detection of foreign objects for electric energy meters, an automatic detection method of foreign objects for electric energy meters based on multi-feature fusion and random forest is proposed. Firstly, wavelet de-noising is carried out for the sound signal produced by electric energy meters under detection in the presence of background noise. Then, the time and frequency feature parameters are extracted to form the mixed feature matrix, which is input into the random forest composed of decision trees for classification. By analyzing the recognition rate of different feature fusion methods, an optimal feature fusion method was obtained. Experimental results show that the fusion mode of short-time energy, spectral entropy, LPC and MFCC exhibits the best performance, and its foreign object detection accuracy is higher than 93%.
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