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Convolutional Neural Networks Using Fourier Transform Spectrogram to Classify the Severity of Gear Tooth Breakage

机译:卷积神经网络的傅立叶变换频谱图对齿轮破损的严重程度进行分类

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Gearboxes are essential devices for some applications, e.g., industrial rotating mechanical machines. Besides, the gearboxes malfunctioning can cause economic losses, risks to the human safety and can impair the performance of the systems in which they are included. Thus, it is necessary to find feasible and efficient methods to evaluate their physical condition. This work proposes an approach that uses the Fourier Transform spectrograms and Convolutional Neural Networks (CNN) to classify the gearbox fault severity condition by analyzing the vibration signals provided by an accelerometer. We used a dataset with ten damage levels of one failure mode of a helical gearbox operating under different load and speed values to assess the performance of the proposed solution. Three different CNN configurations were compared concerning accuracy, training time and other parameters. The proposed system achieves average values of accuracy up to 0.9743 regarding AUC, while it presents classification times close to 0.03 seconds, showing itself to be a competitive solution.
机译:变速箱是某些应用(例如工业旋转机械)中必不可少的设备。此外,齿轮箱的故障会造成经济损失,对人身安全的风险,并可能损害其中所包括的系统的性能。因此,有必要找到可行且有效的方法来评估其身体状况。这项工作提出了一种方法,该方法使用傅立叶变换频谱图和卷积神经网络(CNN)通过分析加速度计提供的振动信号来对变速箱故障的严重性状况进行分类。我们使用了具有十种损伤等级的数据集,以在不同负载和速度值下运行的螺旋齿轮箱的一种故障模式来评估所提出解决方案的性能。比较了三种不同的CNN配置,分别涉及准确性,训练时间和其他参数。提出的系统相对于AUC的精度平均值达到0.9743,而分类时间却接近0.03秒,这表明它是一种有竞争力的解决方案。

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