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首页> 外文期刊>Neurocomputing >Reliable control of cyber-physical systems under sensor and actuator attacks: An identifier-critic based integral sliding-mode control approach
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Reliable control of cyber-physical systems under sensor and actuator attacks: An identifier-critic based integral sliding-mode control approach

机译:在传感器和执行器攻击下对网络物理系统的可靠控制:基于识别符的整体滑模控制方法

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This study focuses on reliable control problems for cyber-physical systems (CPSs), described by linear continuous time-invariant systems, under a class of time-varying state-dependent sensor and actuator attacks. According to the state-dependent property of sensor attacks, the original reliable control problem is converted into a problem to stabilise a completely unknown time-varying system with the actuator attacks. Firstly, a dynamic neural network (NN) identifier with an indicator-function term is developed to model the unknown system dynamics. Due to the indicator term, the input distribution matrix of the identifier is guaranteed to be of full column rank. It provides a technical condition for designing an effective identifier-based integral sliding-mode (I-SM) attack compensator. It is shown that, under the proposed adaptive law, the identification errors and NN weight estimation errors are uniformly ultimately bounded. Furthermore, an identifier-critic based I-SM controller, which consists of an ADP-based controller and an adaptive I-SM attack compensator, is online learned using real-time control input and compromised sensor data, such that the unknown dynamics with the actuator attacks is stable with a nearly optimal performance. Meanwhile, it is shown that, the developed control approach ensures that the states in CPSs under sensor and actuator attacks converge to a compact set around zero. Finally, the effectiveness of the proposed one is verified by two illustrative examples. (C) 2019 Elsevier B.V. All rights reserved.
机译:这项研究的重点是在一类时变状态相关的传感器和执行器攻击下,用线性连续时不变系统描述的网络物理系统(CPS)的可靠控制问题。根据传感器攻击的状态相关性,将最初的可靠控制问题转化为一个问题,以使执行器攻击稳定一个完全未知的时变系统。首先,开发了具有指标函数项的动态神经网络(NN)标识符,以对未知系统动力学进行建模。由于指标项,保证标识符的输入分布矩阵具有完整的列级。它为设计有效的基于标识符的整体滑模(I-SM)攻击补偿器提供了技术条件。结果表明,在所提出的自适应律下,识别误差和神经网络权重估计误差最终均匀一致。此外,使用实时控制输入和受损的传感器数据在线学习基于标识符批评的I-SM控制器,该控制器由基于ADP的控制器和自适应I-SM攻击补偿器组成,因此,未知的动态执行器攻击稳定,性能几乎最佳。同时表明,所开发的控制方法可确保传感器和执行器攻击下的CPS中的状态收敛到零附近的紧凑集。最后,通过两个示例性实例验证了所提出的方法的有效性。 (C)2019 Elsevier B.V.保留所有权利。

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