For health prognostic task, ever-increasing efforts have been focused on machine learning-based methods, which are capable of yielding accurate remaining useful life (RUL) estimation for industrial equipment or components without exploring the degradation mechanism. A prerequisite ensuring the success of these methods depends on a wealth of run-to-failure data, however, run-to-failure data may be insufficient in practice. That is, conducting a substantial amount of destructive experiments not only is high costs, but also may cause catastrophic consequences. Out of this consideration, an enhanced RUL framework focusing on data self-generation is put forward for both non-cyclic and cyclic degradation patterns for the first time. It is designed to enrich data from a data-driven way, generating realistic-like time-series to enhance current RUL methods. First, high-quality data generation is ensured through the proposed convolutional recurrent generative adversarial network (CR-GAN), which adopts a two-channel fusion convolutional recurrent neural network. Next, a hierarchical framework is proposed to combine generated data into current RUL estimation methods. Finally, the efficacy of the proposed method is verified through both non-cyclic and cyclic degradation systems. With the enhanced RUL framework, an aero-engine system following non-cyclic degradation has been tested using three typical RUL models. State-of-art RUL estimation results are achieved by enhancing capsule network with generated time-series. Specifically, estimation errors evaluated by the index score function have been reduced by 21.77%, and 32.67% for the two employed operating conditions, respectively. Besides, the estimation error is reduced to zero for the Lithium-ion battery system, which presents cyclic degradation.
翻译:就健康预测任务而言,越来越多的努力集中于基于机器学习的方法,这些方法能够在不探索降解机制的情况下对工业设备或部件进行准确的剩余使用寿命(RUL)估算,从而能够对工业设备或部件进行准确的剩余使用寿命(RUL)估算。确保这些方法成功的先决条件取决于大量运行至故障数据,然而,运行至故障数据在实践中可能不够充分。也就是说,进行大量破坏性实验不仅成本高,而且可能造成灾难性后果。出于这一考虑,首次为非循环和周期性降解功能提出了侧重于数据自生成的强化RUL框架。设计这一框架是为了从数据驱动的方式丰富数据,产生符合实际情况的时间序列,以加强当前的运行RUL方法。首先,高质量的数据生成是通过拟议的循环重复式对抗性对抗网络(CR-GAN),这个网络采用了两层循环性熔化循环循环循环循环循环循环循环的常规网络网络。下一个等级框架是将生成的数据与当前RUL的估算方法相结合。最后,一个是采用不循环性循环性降解的系统,一个拟议方法的效能通过不断测试,一个不升级的版本化的系统进行测试。