Sensor attack detection for railway vehicles using topographic information

B. Yu, Y. Eun
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引用次数: 4

Abstract

Attacks on control systems have become an important issue due to recently reported actual cases. As a counter measure, attacks on sensors and their detection have been investigated. The approach of existing work is mostly based on exploiting sensor redundancies. In this work, a sensor attack detection method is suggested using topographic information for railway vehicles. The method detects sensor attack not by using redundancies, but by using topographic information of the railways. Specifically, the method detects sensor attack by comparing predicted disturbance predefined by topographic information or normal operating data, and estimated disturbance calculated by disturbance observer. We verified the method through experiment on a scale train testbed. This method is applicable not only to railway vehicles but also to systems such as vehicle-platooning that repeatedly operate on the same section.
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基于地形信息的轨道车辆传感器攻击检测
由于最近报道的实际案例,对控制系统的攻击已成为一个重要问题。作为一种应对措施,人们研究了对传感器的攻击及其检测。现有工作的方法主要是基于利用传感器冗余。本文提出了一种基于地形信息的传感器攻击检测方法。该方法不是利用冗余度,而是利用铁路的地形信息来检测传感器攻击。具体来说,该方法通过比较地形信息或正常运行数据预定义的预测干扰和干扰观测器计算的估计干扰来检测传感器攻击。并通过列车试验平台的实验验证了该方法的有效性。该方法不仅适用于轨道车辆,也适用于在同一路段重复运行的车辆队列等系统。
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