Litcius/Paper detail

Stealthy Black-Box Attack With Dynamic Threshold Against MARL-Based Traffic Signal Control System

Yan Ren, Heng Zhang, Linkang Du, Zhikun Zhang, Jian Zhang, Hongran Li

2024IEEE Transactions on Industrial Informatics13 citationsDOI

Abstract

Multiagent reinforcement learning (MARL) promises outstanding performance for multiintersection traffic signal control systems (TSCS), enabling intelligent administration of cities. However, the vulnerability of MARL algorithms to adversarial attacks has raised concerns about the security of TSCS. In this article, we explore the robustness of MARL-based TSCS against adversarial attacks, propose a black-box multiobject attack strategy, and assign an attack budget to ensure stealthiness. We design a dynamic threshold-based selection of critical states to minimize the cumulative reward with a limited number of attacks. In addition, we present a lightweight agnostic dynamic threshold-based defense mechanism by enhancing the worst-case performance of the policy. We formulate it as a min-max optimization problem, i.e., minimizing the quantity of training sample alterations while maximizing the cumulative discount reward of policy against the perturbed states. Extensive experiments on simulation of urban mobility (SUMO) demonstrate that the proposed attack policy can significantly reduce the performance of TSCS.

Topics & Concepts

Black boxComputer scienceSIGNAL (programming language)Real-time computingComputer securityArtificial intelligenceProgramming languageNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-voting