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An improvement of visualized images from vibration for plastic gear early failure detection using Convolutional Neural Network

机译:使用卷积神经网络改进塑料齿轮早衰检测振动的可视化图像

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Recently, data-driven machine health monitoring has become more popular due to the wide-spread deployment of low-cost sensors and deep learning algorithms' achievements. The detection of failures of machines can be determined based on failure classification results using deep learning architectures. On this tendency, we constructed a plastic gear failure detection structure using a convolutional neural network. In this study, raw vibration data was converted to frequency-domain data. Amplitudes of frequencies in the monitored frequency band were transferred into images, which then were labeled as crack or non-crack by a high-speed camera. Although deep learning architectures have great potential to automatically learn from complex features of input data, the high-amplitude frequencies reflecting the main vibration causes such as gear meshing frequency and its harmonics or shaft frequency affect the accuracy of learning. Besides, the low-amplitude frequencies in a low-frequency band, which are sensitive to gear failures, show efficiency in early failure signs of the plastic gear. Thus, this paper proposed an image visualization and labeling method by focusing on low-amplitude frequency features in the low-frequency band and lessening high-amplitude frequency features. The results show that the proposed system learning from new visualized images can detect plastic gear's early failure situation before the initial crack happened.
机译:最近,由于低成本传感器的广泛部署和深度学习算法的成就,数据驱动的机器健康监测变得更加流行。可以根据使用深度学习架构的故障分类结果来确定机器故障的检测。在这种趋势上,我们使用卷积神经网络构成塑料齿轮故障检测结构。在本研究中,原始振动数据被转换为频域数据。被监视频带中的频率的幅度转移到图像中,然后通过高速相机标记为裂缝或非裂缝。虽然深度学习架构具有自动学习的复杂功能的潜力很大,但反映了诸如齿轮啮合频率的主振动的高振幅频率和其谐波或轴频率影响了学习的准确性。此外,低频带中的低幅度频率,对齿轮故障敏感,显示出塑料齿轮的早期失效符号的效率。因此,本文通过专注于低频带中的低幅度频率特征和减少高幅度频率特征来提出图像可视化和标记方法。结果表明,在新的可视化图像中学习的建议系统可以在初始裂缝发生之前检测塑料齿轮的早期故障情况。

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