多速率过程异常检测的顺序自适应深度变分模型

Zheng Chai, Chunhui Zhao, Youxian Sun
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引用次数: 2

摘要

基于深度学习的过程监测方法近年来受到越来越多的研究关注,这些方法通常假设过程变量是均匀采样的。然而,在实践中,过程数据通常以多个不同的速率收集,导致结构不完整的训练数据。在这种情况下,如何建立有效的深度模型,充分挖掘多速率采样数据,成为实现更好的过程监控性能的制约因素。本文设计了一种顺序自适应深度变分模型,通过深度生成神经网络综合提取存在于不同速率变量中的知识。首先将多速率样本分成多个数据块,其中每个数据块以统一速率收集。然后构建深度生成模型对不确定数据分布进行建模,并根据慢度原理提取概率特征表示。为了抑制速率慢的块中的小数据问题,设计了一种顺序自适应策略,以适应具有足够训练数据的快速块中的知识,提高整体建模性能。通过实际工业热电厂实例验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Sequentially-Adaptive Deep Variational Model for Multirate Process Anomaly Detection
Deep learning based process monitoring methods are attracting increasing research attention in recent years, which generally assume that the process variables are uniformly sampled. In practice, however, the process data are generally collected at multiple different rates, resulting in structurally-incomplete training data. Under such circumstances, how to build effective deep models to fully mine the multirate sampled data has become a constraint in achieving better process monitoring performance. In this paper, a sequentially-adaptive deep variational model is designed in which the knowledge that existed in variables with different rates is comprehensively extracted through deep generative neural networks. The multirate samples are first divided into multiple data blocks in which each block is collected at a uniform rate. A deep generative model is then constructed to model the uncertain data distribution and extract probabilistic feature representations considering the slowness principle. To restrain the small data problem in the blocks with slow rates, a sequentially-adaptation strategy is designed to adapt the knowledge from the fast blocks with sufficient training data and enhance the overall modeling performance. The effectiveness is demonstrated through a real-world industrial thermal power plant case.
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