Sybil攻击弹性流量网络:基于物理的信任传播方法

Yasser Shoukry, Shaunak Mishra, Zutian Luo, S. Diggavi
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引用次数: 15

摘要

我们研究了一个众包辅助的道路交通估计设置,其中一小部分用户(车辆)是恶意的,并报告错误的感官信息,或者更糟糕的是,报告不存在的Sybil(幽灵)车辆的存在。这种攻击的动机在于有可能造成“虚拟”拥塞,从而影响路由算法,导致“实际”拥塞和混乱。我们提出了一种针对此类攻击具有弹性的Sybil攻击弹性流量估计和路由算法。特别是,我们的算法利用了来自传统传感基础设施的噪声信息,以及从众包数据中推断出的车辆动态和接近图。此外,我们的算法的可扩展性是基于有效的布尔可满足性(SAT)求解器。我们使用意大利博洛尼亚市的真实交通数据验证了我们的算法。我们的算法显著减少了Sybil攻击时的平均旅行时间,包括将旅行时间从大约一小时减少到几分钟的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sybil Attack Resilient Traffic Networks: A Physics-Based Trust Propagation Approach
We study a crowdsourcing aided road traffic estimation setup, where a fraction of users (vehicles) are malicious, and report wrong sensory information, or even worse, report the presence of Sybil (ghost) vehicles that do not physically exist. The motivation for such attacks lies in the possibility of creating a "virtual" congestion that can influence routing algorithms, leading to "actual" congestion and chaos. We propose a Sybil attack-resilient traffic estimation and routing algorithm that is resilient against such attacks. In particular, our algorithm leverages noisy information from legacy sensing infrastructure, along with the dynamics and proximity graph of vehicles inferred from crowdsourced data. Furthermore, the scalability of our algorithm is based on efficient Boolean Satisfiability (SAT) solvers. We validated our algorithm using real traffic data from the Italian city of Bologna. Our algorithm led to a significant reduction in average travel time in the presence of Sybil attacks, including cases where the travel time was reduced from about an hour to a few minutes.
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