On False Data Injection Attacks Against Railway Traction Power Systems

S. Lakshminarayana, Zhan-Teng Teo, Rui Tan, David K. Y. Yau, P. Arboleya
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引用次数: 8

Abstract

Modern urban railways extensively use computerized-sensing and control technologies to achieve safe, reliable, and well-timed operations. However, the use of these technologies may provide a convenient leverage to cyber-attackers who have bypassed the air gaps and aim at causing safety incidents and service disruptions. In this paper, we study false data injection (FDI) attacks against railways' traction power systems (TPSes). Specifically, we analyze two types of FDI attacks on the train-borne voltage, current, and position sensor measurements -- which we call efficiency attack and safety attack -- that (i) maximize the system's total power consumption and (ii) mislead trains' local voltages to exceed given safety-critical thresholds, respectively. To counteract, we develop a global attack detection system that serializes a bad data detector anda novel secondary attack detector designed based on unique TPS characteristics. With intact position data of trains, our detection system can effectively detect the FDI attacks ontrains' voltage and current measurements even if the attacker has full and accurate knowledge of the TPS, attack detection, and real-time system state. Extensive simulations driven by realistic running profiles of trains verify that a TPS setup isvulnerable to the FDI attacks, but these attacks can be detected effectively by the proposed global monitoring.
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铁路牵引电力系统虚假数据注入攻击研究
现代城市铁路广泛采用计算机传感和控制技术,实现安全、可靠、准时运行。然而,这些技术的使用可能为网络攻击者提供了一个方便的杠杆,这些攻击者绕过了空气间隙,旨在造成安全事故和服务中断。本文研究了针对铁路牵引电力系统的虚假数据注入(FDI)攻击。具体来说,我们分析了两种对列车载电压、电流和位置传感器测量的FDI攻击——我们称之为效率攻击和安全攻击——它们分别(i)最大化系统的总功耗和(ii)误导列车的局部电压超过给定的安全临界阈值。为此,我们开发了一个全局攻击检测系统,该系统序列化了一个坏数据检测器和基于独特TPS特征设计的新型辅助攻击检测器。我们的检测系统具有完整的列车位置数据,即使攻击者对TPS、攻击检测和实时系统状态有充分准确的了解,也可以有效地检测到FDI攻击控制列车的电压和电流测量。由真实列车运行概况驱动的大量模拟验证了TPS设置容易受到FDI攻击,但这些攻击可以通过提议的全局监控有效地检测到。
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