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Rotating Machinery Remaining Useful Life Prediction Scheme Using Deep-Learning-Based Health Indicator and a New RVM

机译:旋转机械剩余使用基于深度学习的健康指标和新RVM的使用寿命预测方案

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Remaining useful life (RUL) prediction plays a significant role in developing the condition-based maintenance and improving the reliability and safety of machines. This paper proposes a remaining useful life prediction scheme combining deep-learning-based health indicator and a new relevance vector machine. First, both one-dimensional time-series information and two-dimensional time-frequency maps are input into a hybrid deep-learning structure network consisting of convolutional neural network (CNN) and long short-term memory network (LSTM) to construct health indicator (HI). Then, the prediction results and confidence interval are calculated by a new RVM enhanced by a polynomial regression model. The proposed method is verified by the public PRONOSTIA bearing datasets. Experimental results demonstrate the effectiveness of the proposed method in improving the prediction accuracy and analyzing the prediction uncertainty.
机译:剩余的使用寿命(RUL)预测在开发基于条件的维护和提高机器的可靠性和安全性方面发挥着重要作用。 本文提出了一种剩余的使用寿命预测方案,结合了深度学习的健康指标和新的相关矢量机。 首先,将一维时间序列信息和二维时频映射都输入到由卷积神经网络(CNN)和长短期存储器网络(LSTM)组成的混合深学习结构网络,以构建健康指示符 (你好)。 然后,通过多项式回归模型增强的新RVM计算预测结果和置信区间。 所提出的方法由PublosoTigia承载数据集验证。 实验结果表明了提出方法改善预测准确性和分析预测不确定性的有效性。

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