弹性状态评估监测系统

H. Garcia, Wen-Chiao Lin, S. Meerkov
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引用次数: 20

摘要

提出了一种弹性状态评估监测系统的体系结构和支持方法,该系统可以自适应地适应被监测系统的网络和物理异常。特别是,该体系结构包括三个层:信息层、评估层和传感器选择层。信息层基于传感器测量和对传感器数据质量的评估来估计过程变量的概率分布。在此基础上,评估层采用概率推理方法对植物健康状况进行评估。传感器选择层选择传感器,以便在期望的时间段内对工厂状况进行评估。然后通过一个简化的发电厂模型的模拟来说明所开发系统的弹性特征,其中大部分传感器受到攻击。
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A resilient condition assessment monitoring system
An architecture and supporting methods are presented for the implementation of a resilient condition assessment monitoring system that can adaptively accommodate both cyber and physical anomalies to a monitored system under observation. In particular, the architecture includes three layers: information, assessment, and sensor selection. The information layer estimates probability distributions of process variables based on sensor measurements and assessments of the quality of sensor data. Based on these estimates, the assessment layer then employs probabilistic reasoning methods to assess the plant health. The sensor selection layer selects sensors so that assessments of the plant condition can be made within desired time periods. Resilient features of the developed system are then illustrated by simulations of a simplified power plant model, where a large portion of the sensors are under attack.
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