论文标题

部分可观测时空混沌系统的无模型预测

Continual learning-based probabilistic slow feature analysis for multimode dynamic process monitoring

论文作者

Zhang, Jingxin, Zhou, Donghua, Chen, Maoyin, Hong, Xia

论文摘要

在本文中,通过将弹性重量巩固(EWC)扩展到概率慢速度分析(PSFA),以提取多模慢特征以进行在线监视,提出了一种新颖的多模动态过程监视方法。 EWC最初是在序列多任务的机器学习设置中引入的,目的是避免灾难性遗忘问题,这同样在多模型动态过程监视中构成了主要挑战。当新模式到达时,应收集一组数据,以便可以通过PSFA和先验知识来识别此模式。然后,引入正规化项,以防止新数据显着干扰学习知识的知识,即参数重要性度量的估计。所提出的方法表示为PSFA-EWC,该方法不断更新并能够实现连续模式的出色性能。与传统的多模监测算法不同,PSFA-EWC具有向后和向前的转移能力。在合并新信息的同时,保留了先前模式的重要特征,这可能有助于学习新的相关模式。与几种已知方法相比,通过连续的搅拌罐加热器和实用的煤炭粉碎系统证明了该方法的有效性。

In this paper, a novel multimode dynamic process monitoring approach is proposed by extending elastic weight consolidation (EWC) to probabilistic slow feature analysis (PSFA) in order to extract multimode slow features for online monitoring. EWC was originally introduced in the setting of machine learning of sequential multi-tasks with the aim of avoiding catastrophic forgetting issue, which equally poses as a major challenge in multimode dynamic process monitoring. When a new mode arrives, a set of data should be collected so that this mode can be identified by PSFA and prior knowledge. Then, a regularization term is introduced to prevent new data from significantly interfering with the learned knowledge, where the parameter importance measures are estimated. The proposed method is denoted as PSFA-EWC, which is updated continually and capable of achieving excellent performance for successive modes. Different from traditional multimode monitoring algorithms, PSFA-EWC furnishes backward and forward transfer ability. The significant features of previous modes are retained while consolidating new information, which may contribute to learning new relevant modes. Compared with several known methods, the effectiveness of the proposed method is demonstrated via a continuous stirred tank heater and a practical coal pulverizing system.

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