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Anomaly detection for resilient control systems using fuzzy-neural data fusion engine

机译:基于模糊神经数据融合引擎的弹性控制系统的异常检测

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Resilient control systems in critical infrastructures require increased cyber-security and state-awareness. One of the necessary conditions for achieving the desired high level of resiliency is timely reporting and understanding of the status and behavioral trends of the control system. This paper describes the design and development of a fuzzy-neural data fusion system for increased state-awareness of resilient control systems. The proposed system consists of a dedicated data fusion engine for each component of the control system. Each data fusion engine implements three-layered alarm system consisting of: 1) conventional threshold-based alarms, 2) anomalous behavior detector using self-organizing maps, and 3) prediction error based alarms using neural network based signal forecasting. The proposed system was integrated with a model of the Idaho National Laboratory Hytest facility, which is a testing facility for hybrid energy systems. Experimental results demonstrate that the implemented data fusion system provides timely plant performance monitoring and cyber-state reporting.
机译:关键基础设施中的弹性控制系统需要增加网络安全和国家意识。实现所需高度弹性的必要条件之一是及时报告和理解控制系统的现状和行为趋势。本文介绍了模糊神经数据融合系统的设计和开发,用于增加弹性控制系统的状态认识。所提出的系统包括用于控制系统的每个组件的专用数据融合引擎。每个数据融合引擎通过基于神经网络的信号预测,使用自组织地图和3)基于自组织地图的传统阈值的警报,2)由基于自组织的映射,以及3)使用基于神经网络的信号预测的预测误差的三层报警系统。该拟议的系统与爱达荷国家实验室的模型集成在一起,这是混合能源系统的测试设施。实验结果表明,实施的数据融合系统提供了及时的植物性能监测和网络国家报告。

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