• DocumentCode
    27895
  • Title

    FN-DFE: Fuzzy-Neural Data Fusion Engine for Enhanced Resilient State-Awareness of Hybrid Energy Systems

  • Author

    Wijayasekara, Dumidu ; Linda, Ondrej ; Manic, Milos ; Rieger, Craig

  • Author_Institution
    Comput. Sci. Dept., Univ. of Idaho, Idaho Falls, ID, USA
  • Volume
    44
  • Issue
    11
  • fYear
    2014
  • fDate
    Nov. 2014
  • Firstpage
    2065
  • Lastpage
    2075
  • Abstract
    Resiliency and improved state-awareness of modern critical infrastructures, such as energy production and industrial systems, is becoming increasingly important. As control systems become increasingly complex, the number of inputs and outputs increase. Therefore, in order to maintain sufficient levels of state-awareness, a robust system state monitoring must be implemented that correctly identifies system behavior even when one or more sensors are faulty. Furthermore, as intelligent cyber adversaries become more capable, incorrect values may be fed to the operators. To address these needs, this paper proposes a fuzzyneural data fusion engine (FN-DFE) for resilient state-awareness of control systems. The designed FN-DFE is composed of a three-layered system consisting of: 1) traditional threshold based alarms; 2) anomalous behavior detector using self-organizing fuzzy logic system; and 3) artificial neural network-based system modeling and prediction. The improved control system stateawareness is achieved via fusing input data from multiple sources and combining them into robust anomaly indicators. In addition, the neural network-based signal predictions are used to augment the resiliency of the system and provide coherent state-awareness despite temporary unavailability of sensory data. The proposed system was integrated and tested with a model of the Idaho National Laboratory´s hybrid energy system facility known as HYTEST. Experiment results demonstrate that the proposed FNDFE provides timely plant performance monitoring and anomaly detection capabilities. It was shown that the system is capable of identifying intrusive behavior significantly earlier than conventional threshold-based alarm systems.
  • Keywords
    control engineering computing; fuzzy neural nets; power engineering computing; power system control; security of data; sensor fusion; FN-DFE engine; HYTEST facility; Idaho National Laboratory; anomalous behavior detector; artificial neural network-based system; control system state-awareness; control systems; critical infrastructure; energy production system; enhanced resilient state-awareness; fuzzy-neural data fusion engine; hybrid energy systems; industrial system; intelligent cyber adversaries; neural network-based signal predictions; self-organizing fuzzy logic system; system modeling; system prediction; system state monitoring; threshold based alarms; threshold-based alarm systems; Artificial neural networks; Control systems; Monitoring; Robustness; Sensor systems; Vectors; Artificial neural networks; data fusion; fuzzy logic systems; resilient control systems; state-awareness;
  • fLanguage
    English
  • Journal_Title
    Cybernetics, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2168-2267
  • Type

    jour

  • DOI
    10.1109/TCYB.2014.2323891
  • Filename
    6823672