TY - JOUR
T1 - Collaborative Attack Sequence Generation Model Based on Multiagent Reinforcement Learning for Intelligent Traffic Signal System
AU - Wu, Yalun
AU - Xiang, Yingxiao
AU - Baker, Thar
AU - Tong, Endong
AU - Zhu, Ye
AU - Cui, Xiaoshu
AU - Zhang, Zhenguo
AU - Han, Zhen
AU - Liu, Jiqiang
AU - Niu, Wenjia
PY - 2024/10/18
Y1 - 2024/10/18
N2 - Intelligent traffic signal systems, crucial for intelligent transportation systems, have been widely studied and deployed to enhance vehicle traffic efficiency and reduce air pollution. Unfortunately, intelligent traffic signal systems are at risk of data spoofing attack, causing traffic delays, congestion, and even paralysis. In this paper, we reveal a multivehicle collaborative data spoofing attack to intelligent traffic signal systems and propose a collaborative attack sequence generation model based on multiagent reinforcement learning (RL), aiming to explore efficient and stealthy attacks. Specifically, we first model the spoofing attack based on Partially Observable Markov Decision Process (POMDP) at single and multiple intersections. This involves constructing the state space, action space, and defining a reward function for the attack. Then, based on the attack modeling, we propose an automated approach for generating collaborative attack sequences using the Multi-Actor-Attention-Critic (MAAC) algorithm, a mainstream multiagent RL algorithm. Experiments conducted on the multimodal traffic simulation (VISSIM) platform demonstrate a 15% increase in delay time (DT) and a 40% reduction in attack ratio (AR) compared to the single-vehicle attack, confirming the effectiveness and stealthiness of our collaborative attack
AB - Intelligent traffic signal systems, crucial for intelligent transportation systems, have been widely studied and deployed to enhance vehicle traffic efficiency and reduce air pollution. Unfortunately, intelligent traffic signal systems are at risk of data spoofing attack, causing traffic delays, congestion, and even paralysis. In this paper, we reveal a multivehicle collaborative data spoofing attack to intelligent traffic signal systems and propose a collaborative attack sequence generation model based on multiagent reinforcement learning (RL), aiming to explore efficient and stealthy attacks. Specifically, we first model the spoofing attack based on Partially Observable Markov Decision Process (POMDP) at single and multiple intersections. This involves constructing the state space, action space, and defining a reward function for the attack. Then, based on the attack modeling, we propose an automated approach for generating collaborative attack sequences using the Multi-Actor-Attention-Critic (MAAC) algorithm, a mainstream multiagent RL algorithm. Experiments conducted on the multimodal traffic simulation (VISSIM) platform demonstrate a 15% increase in delay time (DT) and a 40% reduction in attack ratio (AR) compared to the single-vehicle attack, confirming the effectiveness and stealthiness of our collaborative attack
KW - collaborative attack sequence generation
KW - congestion attack
KW - intelligent traffic signal system
KW - multi-agent reinforcement learning
U2 - 10.1155/2024/4734030
DO - 10.1155/2024/4734030
M3 - Article
SN - 1098-111X
VL - 2024
JO - International Journal of Intelligent Systems
JF - International Journal of Intelligent Systems
IS - 1
M1 - 4734030
ER -