数据驱动的网络物理系统健康监测框架

Kasun Amarasinghe, Chathurika S. Wickramasinghe, Daniel L. Marino, C. Rieger, Milos Manicl
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引用次数: 18

摘要

现代基础设施严重依赖于具有互联计算和物理资源的系统,称为信息物理系统(cps)。因此,建设有复原力的CPS是首要需求,持续监测CPS的运行状况对于提高复原力至关重要。本文提出了一个使用数据驱动技术计算和监测cps健康状况的框架。这种数据驱动方法的主要优点是能够利用来自cps的异构数据流,并且能够以最少的先验领域知识执行监视。该框架的主要目的是警告运营商CPS在网络、物理或整体健康方面的任何退化。该框架由四个部分组成:1)数据采集和特征提取,2)状态识别和实时状态估计,3)网络物理健康计算,4)操作员预警生成。此外,本文还介绍了该框架前三个阶段在CPS试验台上的初步实现,该试验台涉及微电网仿真和将电网与其控制器连接起来的网络网络。讨论了特征提取方法和无监督学习算法的应用。给出了前两个阶段的实验结果,结果表明数据反映了不同的运行状态,可以使用可视化技术提取数据特征之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Framework for Data Driven Health Monitoring of Cyber-Physical Systems
Modern infrastructure is heavily reliant on systems with interconnected computational and physical resources, named Cyber-Physical Systems (CPSs). Hence, building resilient CPSs is a prime need and continuous monitoring of the CPS operational health is essential for improving resilience. This paper presents a framework for calculating and monitoring of health in CPSs using data driven techniques. The main advantages of this data driven methodology is that the ability of leveraging heterogeneous data streams that are available from the CPSs and the ability of performing the monitoring with minimal a priori domain knowledge. The main objective of the framework is to warn the operators of any degradation in cyber, physical or overall health of the CPS. The framework consists of four components: 1) Data acquisition and feature extraction, 2) state identification and real time state estimation, 3) cyber-physical health calculation and 4) operator warning generation. Further, this paper presents an initial implementation of the first three phases of the framework on a CPS testbed involving a Microgrid simulation and a cyber-network which connects the grid with its controller. The feature extraction method and the use of unsupervised learning algorithms are discussed. Experimental results are presented for the first two phases and the results showed that the data reflected different operating states and visualization techniques can be used to extract the relationships in data features.
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