基于动态时间关注和混合MLP的增强轴承RUL预测

Zhongtian Jin, Chong Chen, Aris Syntetos, Ying Liu
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引用次数: 0

摘要

轴承是机械中的关键部件,准确预测其剩余使用寿命(RUL)对于有效的预测性维护至关重要。传统的RUL预测方法通常依赖于手动特征提取和专家知识,这面临着特殊的挑战,例如处理非平稳数据以及避免由于包含大量不相关特征而导致的过拟合。本文提出了一种利用连续小波变换(CWT)进行特征提取的方法,一个通道-时间混合MLP (CT-MLP)层用于捕获复杂的依赖关系,以及一个基于时间序列中特征的时间重要性调整其焦点的动态注意机制。动态注意机制将多头注意与创新增强相结合,使其对表现出非平稳行为的数据集特别有效。使用XJTU-SY滚动轴承数据集和PRONOSTIA轴承数据集进行的实验研究表明,所提出的深度学习算法在RMSE和MAE方面显著优于其他最先进的算法,证明了其鲁棒性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced bearing RUL prediction based on dynamic temporal attention and mixed MLP

Bearings are critical components in machinery, and accurately predicting their remaining useful life (RUL) is essential for effective predictive maintenance. Traditional RUL prediction methods often rely on manual feature extraction and expert knowledge, which face specific challenges such as handling non-stationary data and avoiding overfitting due to the inclusion of numerous irrelevant features. This paper presents an approach that leverages Continuous Wavelet Transform (CWT) for feature extraction, a Channel-Temporal Mixed MLP (CT-MLP) layer for capturing intricate dependencies, and a dynamic attention mechanism to adjust its focus based on the temporal importance of features within the time series. The dynamic attention mechanism integrates multi-head attention with innovative enhancements, making it particularly effective for datasets exhibiting non-stationary behaviour. An experimental study using the XJTU-SY rolling bearings dataset and the PRONOSTIA bearing dataset revealed that the proposed deep learning algorithm significantly outperforms other state-of-the-art algorithms in terms of RMSE and MAE, demonstrating its robustness and accuracy.

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