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An Evaluation of Gearbox Condition Monitoring Using Infrared Thermal Images Applied with Convolutional Neural Networks

机译:基于卷积神经网络的红外热像仪对变速箱状态监测的评估

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摘要

As an important machine component, the gearbox is widely used in industry for power transmission. Condition monitoring (CM) of a gearbox is critical to provide timely information for undertaking necessary maintenance actions. Massive research efforts have been made in the last two decades to develop vibration-based techniques. However, vibration-based methods usually include several inherent shortages including contact measurement, localized information, noise contamination, and high computation costs, making it difficult to be a cost-effective CM technique. In this paper, infrared thermal (IRT) images, which can contain information covering a large area and acquired remotely, are based on developing a cost-effective CM method. Moreover, a convolutional neural network (CNN) is employed to automatically process the raw IRT images for attaining more comprehensive feature parameters, which avoids the deficiency of incomplete information caused by various feature-extraction methods in vibration analysis. Thus, an IRT–CNN method is developed to achieve online remote monitoring of a gearbox. The performance evaluation based on a bevel gearbox shows that the proposed method can achieve nearly 100% correctness in identifying several common gear faults such as tooth pitting, cracks, and breakages and their compounds. It is also especially robust to ambient temperature changes. In addition, IRT also significantly outperforms its vibration-based counterparts.
机译:变速箱作为重要的机械部件,在工业上被广泛用于动力传输。变速箱的状态监控(CM)对于及时提供信息以采取必要的维护措施至关重要。在过去的二十年中,已经进行了大量的研究以开发基于振动的技术。然而,基于振动的方法通常包括一些固有的缺陷,包括接触测量,局部信息,噪声污染和高计算成本,这使得很难成为具有成本效益的CM技术。在本文中,红外热(IRT)图像是基于开发具有成本效益的CM方法而形成的,该图像可以包含大面积信息并可以远程获取。此外,采用卷积神经网络(CNN)自动处理原始IRT图像以获得更全面的特征参数,从而避免了振动分析中各种特征提取方法所导致的信息不完整的不足。因此,开发了一种IRT-CNN方法来实现变速箱的在线远程监控。基于锥齿轮箱的性能评估表明,该方法在识别几种常见的齿轮故障(例如齿蚀,裂纹,断裂及其混合物)时,可以达到近100%的正确性。它还对环境温度变化特别稳定。此外,IRT还大大优于其基于振动的同类产品。

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