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An adaptive learning and control architecture for mitigating sensor and actuator attacks in connected autonomous vehicle platoons
Authors:Xu Jin  Wassim M. Haddad  Zhong‐Ping Jiang  Aris Kanellopoulos  Kyriakos G. Vamvoudakis
Abstract:In this paper, we develop an adaptive control algorithm for addressing security for a class of networked vehicles that comprise a formation of urn:x-wiley:acs:media:acs3032:acs3032-math-0001 human‐driven vehicles sharing kinematic data and an autonomous vehicle in the aft of the vehicle formation receiving data from the preceding vehicles through wireless vehicle‐to‐vehicle communication devices. Specifically, we develop an adaptive controller for mitigating time‐invariant state‐dependent adversarial sensor and actuator attacks while guaranteeing uniform ultimate boundedness of the closed‐loop networked system. Furthermore, an adaptive learning framework is presented for identifying the state space model parameters based on input‐output data. This learning technique utilizes previously stored data as well as current data to identify the system parameters using a relaxed persistence of excitation condition. The effectiveness of the proposed approach is demonstrated by an illustrative numerical example involving a platoon of connected vehicles.
Keywords:adaptive control  adaptive learning  connected vehicle formations  relaxed excitation conditions  sensor and actuator attacks  uniform boundedness
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