航空发动机剩余使用寿命估算的多粒度跨域时间回归网络

Jiaxian Chen, Zhuyun Chen, Jingyan Xia, Ruyi Huang, Weihua Li
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引用次数: 0

摘要

剩余使用寿命(RUL)预测是工业设备预测性维护的一项重要任务。得益于先进的传感技术和人工智能技术,基于多模态数据分析的数据驱动RUL预测方法近年来得到了快速发展。然而,传统的RUL预测方法往往不能满足不同工况下数据分布差异的需求和挑战。为了解决这一问题,提出了一种基于多传感器融合和深度迁移学习的航空发动机RUL估计方法。首先,通过融合源域的粗粒度学习策略和目标域的细粒度更新策略,构建多粒度跨域时间回归(MCDTR)网络,学习有效的退化信息;通过这种多粒度的传输策略,该网络可以利用鲁棒的时间特征进行准确的RUL预测。此外,还研究了基于自举法的预测结果的不确定性量化,以提高工业航空发动机RUL预测的可靠性和稳定性。在N-CMAPSS 2021挑战数据集上进行的相关对比实验表明,该方法的有效性和鲁棒性,为工业应用中的预测和健康管理提供了有价值的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-granularity Cross-Domain Temporal Regression Network for Remaining Useful Life Estimation of Aero Engines
Remaining useful life (RUL) prediction is a crucial task for predictive maintenance of industrial equipment. Benefiting from advanced sensing and artificial intelligence technologies, data-driven RUL prediction methods based on multimodal data analytics achieved rapid development in recent years. However, traditional RUL prediction methods often fail to meet the demand and challenge of data distribution discrepancy under different working conditions. To solve this issue, a novel aero-engine RUL estimation approach is proposed based on multi-sensor fusion and deep transfer learning. First, a multi-granularity cross-domain temporal regression (MCDTR) network is constructed to learn effective degradation information via fusing a coarse-grained learn strategy executed on the source domain and a fine-grained update strategy applied to the target domain. With such a multi-granularity transfer strategy, this network can exploit robust temporal features for accurate RUL prediction. In addition, the uncertainty quantification of predictive results based on the bootstrap method is also examined to improve the reliability and stability of RUL prediction for industrial aero engines. Related comparative experiments on the N-CMAPSS 2021 Challenge Dataset suggest the effectiveness and robustness of the proposed approach, which provides a valuable reference for prognostics and health management in industrial applications.
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