Adversarial Transfer Learning for Machine Remaining Useful Life Prediction

Mohamed Ragab, Zhenghua Chen, Min Wu, C. Kwoh, Xiaoli Li
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引用次数: 13

Abstract

Remaining useful life (RUL) prediction is a key task for realizing predictive maintenance for industrial machines/assets. Accurate RUL prediction enables prior maintenance scheduling that can reduce downtime, reduce maintenance costs, and increase machine availability. Data-driven approaches have a widely acclaimed performance on RUL prediction of industrial machines. Usually, they assume that data used in training and testing phases are drawn from the same distribution. However, machines may work under different conditions (i.e., data distribution) for training and testing phases. As a result, the model performing well during training can deteriorate significantly during testing. Naive recollection and re-annotation of data for each new working condition can be very expensive and obviously not a viable solution. To alleviate this problem, we rely on a transfer learning approach called domain adaptation to transfer the knowledge learned from one labelled operating condition (source domain) to another operating condition (target domain) without labels. Particularly, we propose a novel adversarial domain adaption approach for remaining useful life prediction, named ADARUL, which can work on the data from different working conditions or different fault modes. This approach is built on top of a bidirectional deep long short-term memory (LSTM) network that can model the temporal dependency and extract representative features. Moreover, it derives invariant representation among the working conditions by removing the domain-specific information while keeping the task-specific information. We have conducted comprehensive experiments among four different datasets of turbofan engines. The experiments show that our proposed method significantly outperforms the state-of-the-art methods..
机器剩余使用寿命预测的对抗性迁移学习
剩余使用寿命(RUL)预测是实现工业机器/资产预测性维护的关键任务。准确的RUL预测可以实现预先的维护计划,从而减少停机时间、降低维护成本并提高机器可用性。数据驱动方法在工业机器RUL预测方面有着广泛的应用。通常,他们假设训练和测试阶段使用的数据来自相同的分布。然而,对于训练和测试阶段,机器可能在不同的条件下工作(例如,数据分布)。因此,在训练过程中表现良好的模型在测试过程中可能会明显恶化。为每个新的工作条件简单地回忆和重新注释数据可能非常昂贵,显然不是一个可行的解决方案。为了缓解这一问题,我们依靠一种称为领域适应的迁移学习方法,将学习到的知识从一个有标签的操作条件(源域)转移到另一个没有标签的操作条件(目标域)。特别地,我们提出了一种新的对抗域自适应方法用于剩余使用寿命预测,称为ADARUL,它可以处理来自不同工作条件或不同故障模式的数据。该方法建立在双向深度长短期记忆(LSTM)网络之上,该网络可以对时间依赖性进行建模并提取代表性特征。此外,它通过删除特定于领域的信息,同时保留特定于任务的信息,派生出工作条件之间的不变表示。我们在四个不同的涡扇发动机数据集上进行了综合实验。实验表明,我们提出的方法明显优于最先进的方法。
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