首页> 外文期刊>结构耐久性与健康监测(英文) >Classifying Machine Learning Features Extracted from Vibration Signal with Logistic Model Tree to Monitor Automobile Tyre Pressure
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Classifying Machine Learning Features Extracted from Vibration Signal with Logistic Model Tree to Monitor Automobile Tyre Pressure

机译:分类机器学习功能从振动信号用Logistic模型树提取,以监测汽车轮胎压力

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Tyre pressure monitoring system(TPMS)is compulsory in most countries like the United States and European Union.The existing systems depend on pressure sensors strapped on the tyre or on wheel speed sensor data.A difference in wheel speed would trigger an alarm based on the algorithm implemented.In this paper,machine learning approach is proposed as a new method to monitor tyre pressure by extracting the vertical vibrations from a wheel hub of a moving vehicle using an accelerometer.The obtained signals will be used to compute through statistical features and histogram features for the feature extraction process.The LMT(Logistic Model Tree)was used as the classifier and attained a classification accuracy of 92.5%with 10-fold cross validation for statistical features and 90.5% with 10-fold cross validation for histogram features.The proposed model can be used for monitoring the automobile tyre pressure successfully.
机译:在美国和欧盟等大多数国家的轮胎压力监测系统(TPMS)是强制性的。现有系统依赖于绑在轮胎或轮速传感器数据上的压力传感器。车轮速度的差异将触发基于的警报实施的算法。在本文中,提出了通过使用加速度计从移动车辆的车轮轮毂提取垂直振动来监测轮胎压力的新方法。获得的信号将用于通过统计特征和直方图计算。特征提取过程的功能。LMT(逻辑模型树)用作分类器,达到92.5%的分类准确度,统计特征的10倍交叉验证和90.5%,用于直方图的十倍交叉验证。该所提出的模型可用于成功监测汽车轮胎压力。

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