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首页> 外文期刊>Journal of the Brazilian Society of Mechanical Sciences and Engineering >Remaining useful life prediction of bearings based on temporal convolutional networks with residual separable blocks
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Remaining useful life prediction of bearings based on temporal convolutional networks with residual separable blocks

机译:基于残余可分离块的时间卷积网络的轴承剩余使用寿命预测

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It is essential for the remaining useful life (RUL) prediction of bearings to ensure the safe operation of rotating machinery. Rotating machines are highly complex. However, the critical degradation information of bearings is often neglected due to the insufficient perceptual field of temporal convolutional networks, which results in poor prediction results. To solve the problems, a new framework named temporal convolutional network with residual separable convolutional block (TCN-RSCB) is proposed in this paper for bearing RUL prediction. First, RSCB is constructed by using residual learning and separable convolution. In RSCB, in order to obtain a larger perceptual field, we continuously increase the dilation factor of the separable convolution according to the exponential level. Then, a soft thresholding temporal convolution block (STCB) is constructed by using a soft thresholding technique, this block can eliminate the redundant information in the prediction network and improve the prediction results of bearing RUL. Finally, the proposed method is tested on the FEMTO-ST dataset and the XITU-SY dataset, and compared with some advanced prediction methods. The results indicate that TCN-RSCB can follow the real RUL well on different bearing datasets, and has good robustness and generalization ability.
机译:轴承的剩余使用寿命(RUL)预测对于确保旋转机械的安全运行至关重要。旋转机器非常复杂。然而,由于时域卷积网络的感知场不足,轴承的临界退化信息往往被忽视,导致预测结果不佳。针对这些问题,该文提出一种新的具有残差可分离卷积块的时间卷积网络(TCN-RSCB)框架,用于轴承RUL预测。首先,利用残差学习和可分离卷积构建RSCB;在RSCB中,为了获得更大的感知场,我们根据指数水平不断增加可分离卷积的膨胀因子。然后,利用软阈值技术构建软阈值时域卷积块(STCB),该模块可以消除预测网络中的冗余信息,提高轴承RUL的预测结果。最后,在FEMTO-ST数据集和XITU-SY数据集上对所提方法进行了检验,并与一些先进的预测方法进行了比较。结果表明,TCN-RSCB在不同方位角数据集上都能很好地跟踪真实的RUL,具有较好的鲁棒性和泛化能力。

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