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Using a Support Vector Machine Based Decision Stage to Improve the Fault Diagnosis on Gearboxes

机译:使用基于支持向量机的决策阶段改进齿轮箱的故障诊断

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摘要

Gearboxes are mechanical devices that play an essential role in several applications, e.g., the transmission of automotive vehicles. Their malfunctioning may result in economic losses and accidents, among others. The rise of powerful graphical processing units spreads the use of deep learning-based solutions to many problems, which includes the fault diagnosis on gearboxes. Those solutions usually require a significant amount of data, high computational power, and a long training process. The training of deep learning-based systems may not be feasible when GPUs are not available. This paper proposes a solution to reduce the training time of deep learning-based fault diagnosis systems without compromising their accuracy. The solution is based on the use of a decision stage to interpret all the probability outputs of a classifier whose output layer has the softmax activation function. Two classification algorithms were applied to perform the decision. We have reduced the training time by almost 80% without compromising the average accuracy of the fault diagnosis system.
机译:变速箱是一种机械设备,在多种应用(例如汽车的变速箱)中起着至关重要的作用。它们的故障可能会导致经济损失和事故。强大的图形处理单元的兴起将基于深度学习的解决方案的使用扩展到许多问题,其中包括变速箱的故障诊断。这些解决方案通常需要大量的数据,高计算能力和漫长的培训过程。当GPU不可用时,基于深度学习的系统的培训可能不可行。本文提出了一种解决方案,可在不影响深度学习的故障诊断系统的情况下,减少其训练时间。该解决方案基于决策阶段的使用,以解释其输出层具有softmax激活函数的分类器的所有概率输出。应用了两种分类算法来执行决策。我们将培训时间减少了将近80%,而不会影响故障诊断系统的平均准确性。

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