In this research, we investigate the reinforcement learning-based control strategy for second-order continuous-time multi-agent systems (MASs) subjected to actuator cyberattacks during affine formation maneuvers. In this case, a long-term performance index is created to track the MASs tracking faults using a leader-follower structure. In order to approximate the ideal solution, which is challenging to find for systems vulnerable to cyberattacks during time-varying maneuvers, a critical neural network is used. The distributed control protocol is obtained, and the long-term performance index is minimized, using an actor neural network strengthened with critic signals. The actor-critic neural networks calculate unknown dynamics and the severit...
This paper investigates the synchronization of multiple memristive neural networks (MMNNs) under cyb...
This paper focuses on cyber-security simulations in networks modeled as a Markov game with incomplet...
Autonomic Computer Network Defence aims to achieve self-protection capability of IT networks in orde...
An autonomous and resilient controller is proposed for leader-follower multiagent systems under unce...
An autonomous and resilient controller is proposed for leader-follower multiagent systems under unce...
This article investigates the secure control problem for cyber-physical systems when the malicious d...
Cyber physical systems (CPS) integrate information technology and physical entities. The computeriza...
In this thesis we study a detection method for the false data injection (FDI) attack class on discr...
In this paper, a model-free reinforcement learning (RL) based distributed control protocol for leade...
This study presents a unified resilient model-free reinforcement learning (RL) based distributed con...
This article investigates the online learning and energy-efficient control issues for nonlinear disc...
This paper presents a control strategy for CyberPhysical System defense developed in the framework o...
This article offers an optimal control tracking method using an event-triggered technique and the in...
This paper introduces a reinforcement learning-based tracking control approach for a class of nonlin...
\u3cp\u3eThis paper focuses on cyber-security simulations in networks modeled as a Markov game with ...
This paper investigates the synchronization of multiple memristive neural networks (MMNNs) under cyb...
This paper focuses on cyber-security simulations in networks modeled as a Markov game with incomplet...
Autonomic Computer Network Defence aims to achieve self-protection capability of IT networks in orde...
An autonomous and resilient controller is proposed for leader-follower multiagent systems under unce...
An autonomous and resilient controller is proposed for leader-follower multiagent systems under unce...
This article investigates the secure control problem for cyber-physical systems when the malicious d...
Cyber physical systems (CPS) integrate information technology and physical entities. The computeriza...
In this thesis we study a detection method for the false data injection (FDI) attack class on discr...
In this paper, a model-free reinforcement learning (RL) based distributed control protocol for leade...
This study presents a unified resilient model-free reinforcement learning (RL) based distributed con...
This article investigates the online learning and energy-efficient control issues for nonlinear disc...
This paper presents a control strategy for CyberPhysical System defense developed in the framework o...
This article offers an optimal control tracking method using an event-triggered technique and the in...
This paper introduces a reinforcement learning-based tracking control approach for a class of nonlin...
\u3cp\u3eThis paper focuses on cyber-security simulations in networks modeled as a Markov game with ...
This paper investigates the synchronization of multiple memristive neural networks (MMNNs) under cyb...
This paper focuses on cyber-security simulations in networks modeled as a Markov game with incomplet...
Autonomic Computer Network Defence aims to achieve self-protection capability of IT networks in orde...