基于离散小波变换特征提取的k近邻分类技术的无刷直流电动机故障诊断

Clarisse Anne Borja, Kyle Joshua Tisado, C. Ostia
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引用次数: 2

摘要

电机故障诊断在电机行业实施预防性维护和避免意外停机方面发挥着重要作用。本文提出了一种基于k-NN分类技术和DWT特征提取的无刷直流电机机械故障诊断系统。记录正常和故障无刷直流电机的电压信号。然后对电机电压信号进行分解,利用DWT提取特征,并将其划分为训练、验证和测试三个数据集。然后使用MATLAB环境对k-NN预测模型进行训练、验证和测试。诊断是在5个不同的哈尔水平上进行的。结果显示,水平1的准确率最高,为89.510%,高于其他4个水平,并使用ANOVA检验进行统计验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Diagnosis of a Brushless DC Motor Using K-Nearest Neighbor Classification Technique with Discrete Wavelet Transform Feature Extraction
Diagnosis of motor faults plays an important role in the industry to implement preventive maintenance and avoid an unscheduled shutdown. A mechanical fault diagnostic system of a BLDC using the k-NN classification technique with DWT feature extraction is proposed in this study. Voltage signals from healthy and faulty BLDC motors were recorded. The voltage signals of the motors were then decomposed, and features were extracted using the DWT and divided into three data sets which are: training, validation, and testing. The k-NN prediction model was then trained, validated, and tested using a MATLAB environment. The diagnosis was run on 5 different Haar levels. Results showed that Level 1 produced the highest accuracy of 89.510% over the other 4 levels and was statistically verified using ANOVA Test.
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