基于深度学习的双边遥操作系统攻击检测器

Yousif Ahmed Al-Wajih, Mutaz M. Hamdan, Turki Bin Mohaya, M. Mahmoud, Nezar M. Al-Yazidi
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引用次数: 0

摘要

远程操作系统是指被远程控制的工厂,它通常由一个人类操作员、一个本地主机械手和一个远程从机械手组成,所有这些都通过通信网络连接起来。双边远程操作系统(BTOS)包括主从机之间的正向和反向传输。本文在对主从机器人进行数学建模的基础上,讨论了一类以系统安全性为重点的BTOS。研究了假数据注入攻击,攻击者可能会将假数据注入到主机器人和从机器人之间交换的状态中。提出了BTOS的脆弱性,即攻击会破坏系统的稳定性。提出了一种基于深度学习的虚假数据注入攻击检测技术。考虑到攻击者对目标系统有充分的了解,能够熟练地发射和控制目标系统,对具有卷积神经网络结构的深度学习模型进行了训练和测试。该模型达到了96%的验证准确率,并在BTOS中验证了所提出的深度学习检测器的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning-based Attack Detector for Bilateral Teleoperation Systems
A teleoperation system is referred to as a plant that is controlled remotely, and it is often composed of a human operator, a local master manipulator, and a remote slave manipulator, all connected by a communication network. Bilateral teleoperation systems (BTOS) include transmissions in both the forward and backward directions between the master and slave. This paper discusses a class of (BTOS) focusing on the security of the system after modeling the master and slave robots mathematically. The false data injection attack is examined, where the attacker may inject false data into the states that are being exchanged between the master and slave robots. The vulnerability of BTOS, where the attack destabilizes the system, is presented. A deep learning-based detection technique is proposed to detect the presence of false data injection attacks. The deep learning model with convolution neural network structure is trained and tested with considering complex attacks where the attacker has full knowledge of the system and proficiency to emanate and control the target system. The proposed model achieves 96\% validation accuracy, and the efficacy of the proposed deep learning detector is demonstrated and tested into the BTOS.
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