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Vibration based Brake Fault Diagnosis using Voting Feature Interval and Decision Tree with Histogram Features

机译:基于投票特征区间和直方图特征的决策树基于振动的制动故障诊断

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Objectives: The brake system is one of the major components used in automobiles which inhibits motion by absorbing energy from a moving system. So regular monitoring is essential in brake system which ensures not only vehicle safety but also human lives. Methods/Statistical Analysis: In this study, a vibration based fault diagnosis approach has been reported through machine learning approach. A hydraulic brake setup was fabricated and vibration signals under various fault conditions were extracted using accelerometer sensor with suitable frequency. These signals were compared with good range of signals and variation is analyzed through histogram feature extraction, selection and classification of machine learing scenario. Findings: Histogram features were extracted by separation of signals into different bin ranges among which bin with highest accuracy level is further processed through selection process of Decision Tree and 87.78% was the achieved accuracy in fault determination. In Voting Feature Interval (VFI) 85.64% was the accuracy attained in error identification. Application/Improvements: Since Decision Tree gives the better result in fault identification in brake fault diagnosis of this study, it can be further improved by varying the frequency ranges of signals, so each and every variation in signals are noted. Moreover improvement in accuracy level can also be achieved in future by increasing number of samples percondtion of brake system.
机译:目标:制动系统是汽车中使用的主要部件之一,它通过吸收运动系统中的能量来抑制运动。因此,定期监测对于制动系统至关重要,该制动系统不仅可以确保车辆安全,还可以确保人员生命。方法/统计分析:在这项研究中,已经通过机器学习方法报告了一种基于振动的故障诊断方法。制造了液压制动装置,并使用具有合适频率的加速度传感器提取了各种故障条件下的振动信号。将这些信号与良好的信号范围进行比较,并通过直方图特征提取,机器学习场景的选择和分类来分析变化。结果:通过将信号分离到不同的bin范围中提取直方图特征,其中通过决策树的选择过程对具有最高准确度级别的bin进行进一步处理,并且在故障确定中达到了87.78%的准确度。在投票功能间隔(VFI)中,错误识别获得的准确性为85.64%。应用/改进:由于决策树在本研究的制动故障诊断中可以提供更好的故障识别结果,因此可以通过改变信号的频率范围来进一步改进决策树,因此记录下信号的每一个变化。此外,将来还可通过增加制动系统的样本数量来实现精度水平的提高。

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