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Reinforcement Learning Based Anti-Jamming Schedule in Cyber-Physical Systems

机译:基于Cyber​​-Manical Systems的钢化干扰时间表

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In this paper, the security issue of cyber-physical systems is investigated, where the observation data is transmitted from a sensor to an estimator through wireless channels disturbed by an attacker. The failure of this data transmission occurs, when the sensor accesses the channel that happens to be attacked by the jammer. Since the system performance measured by the estimation error depends on whether the data transmission is a success, the problem of selecting the channel to alleviate the attack effect is studied. Moreover, the state of each channel is time-variant due to various factors, such as path loss and shadowing. Motivated by energy conservation, the problem of selecting the channel with the best state is also considered. With the help of cognitive radio technique, the sensor has the ability of selecting a sequence of channels dynamically. Based on this, the problem of selecting the channel is resolved by means of reinforcement learning to jointly avoid the attack and enjoy the channel with the best state. A corresponding algorithm is presented to obtain the sequence of channels for the sensor, and its effectiveness is proved analytically. Numerical simulations further verify the derived results.
机译:在本文中,网络物理系统的安全性问题进行了研究,其中,所述观测数据从传感器通过由攻击者不安无线信道发送到估计器。该数据传输的故障发生时,当传感器访问恰好由干扰被攻击的通道。由于由估计误差测量系统的性能取决于数据传输是否是成功的,选择以减轻攻击效果通道的问题进行了研究。此外,每个信道的状态是时变的,由于各种因素,如路径损耗和阴影。通过节能激励,选择具有最佳状态的信道的问题也被考虑。随着认知无线电技术的帮助下,该传感器具有动态地选择信道的序列的能力。在此基础上,选择信道的问题通过学习,共同避免攻击,享受与最佳状态的信道增强的手段解决。相应的算法,以获得用于所述传感器信道的序列,并且其有效性分析证实。数值模拟进一步验证所导出的结果。

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