Trust-Based Framework for Resilience to Sensor-Targeted Attacks in Cyber-Physical Systems

2018 ANNUAL AMERICAN CONTROL CONFERENCE (ACC)(2018)

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摘要
Networked control systems improve the efficiency of cyber-physical plants both functionally, by the availability of data generated even in far-flung locations, and operationally, by the adoption of standard protocols. A side-effect, however, is that now the safety and stability of a local process and, in turn, of the entire plant are more vulnerable to malicious agents. Leveraging the communication infrastructure, the authors here present the design of networked control systems with built-in resilience. Specifically, the paper addresses attacks known as false data injections that originate within compromised sensors. In the proposed framework for closed-loop control, the feedback signal is constructed by weighted consensus of estimates of the process state gathered from other interconnected processes. Observers are introduced to generate the state estimates from the local data. Side-channel monitors are attached to each primary sensor in order to assess proper code execution. These monitors provide estimates of the trust assigned to each observer output and, more importantly, independent of it; these estimates serve as weights in the consensus algorithm. The authors tested the concept on a multi-sensor networked physical experiment with six primary sensors. The weighted consensus was demonstrated to yield a feedback signal within specified accuracy even if four of the six primary sensors were injecting false data.
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关键词
multisensor networked physical experiment,primary sensor,local data,state estimates,interconnected processes,process state,weighted consensus,feedback signal,closed-loop control,compromised sensors,false data injections,communication infrastructure,malicious agents,entire plant,local process,stability,safety,standard protocols,far-flung locations,cyber-physical plants,networked control systems,cyber-physical systems,sensor-targeted attacks,trust-based framework
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