TY - JOUR
T1 - Optimal Proactive Eavesdropping Scheme Based on Stackelberg Game Framework Against State-Secrecy Encoding
T2 - A Deep Reinforcement Learning Approach
AU - Liu, Kecheng
AU - Wu, Tiejun
AU - Zhang, Ya
AU - Sun, Changyin
N1 - Publisher Copyright:
© 2025 John Wiley & Sons Ltd.
PY - 2025
Y1 - 2025
N2 - This paper studies proactive eavesdropping in remote estimation systems where the eavesdropping attacker attacks sensors' ACK channels, and all sensors defend against the eavesdropping attack according to the designed state-secrecy encoding scheme and calibration scheme. Given essential analysis and proofs, a novel dynamic Stackelberg game framework and a Markov Stackelberg game framework are developed to design proactive eavesdropping schemes for the cases when the packet loss rate is entirely random or driven by a Markovian process, respectively. Utilizing state-secrecy encoding with a calibration mechanism and deep reinforcement learning, the frameworks approximate the optimal strategy of the eavesdropper based on the best response of sensors. Specifically, the objective of the optimal strategy is to minimize the minimum mean square error (MMSE) incurred when the eavesdropper decodes the transmitted message. In reinforcement learning, the action decompositions and constraints are introduced to obtain a more efficient reduction of the action space and exploration of reasonable strategies. The superiority of the proactive eavesdropping strategies derived from both game frameworks is demonstrated through numerical simulations.
AB - This paper studies proactive eavesdropping in remote estimation systems where the eavesdropping attacker attacks sensors' ACK channels, and all sensors defend against the eavesdropping attack according to the designed state-secrecy encoding scheme and calibration scheme. Given essential analysis and proofs, a novel dynamic Stackelberg game framework and a Markov Stackelberg game framework are developed to design proactive eavesdropping schemes for the cases when the packet loss rate is entirely random or driven by a Markovian process, respectively. Utilizing state-secrecy encoding with a calibration mechanism and deep reinforcement learning, the frameworks approximate the optimal strategy of the eavesdropper based on the best response of sensors. Specifically, the objective of the optimal strategy is to minimize the minimum mean square error (MMSE) incurred when the eavesdropper decodes the transmitted message. In reinforcement learning, the action decompositions and constraints are introduced to obtain a more efficient reduction of the action space and exploration of reasonable strategies. The superiority of the proactive eavesdropping strategies derived from both game frameworks is demonstrated through numerical simulations.
KW - Stackelberg games
KW - deep reinforcement learning
KW - proactive eavesdropping
KW - remote estimation systems
KW - state-secrecy encoding
UR - https://www.scopus.com/pages/publications/105019981775
U2 - 10.1002/rnc.70260
DO - 10.1002/rnc.70260
M3 - 文章
AN - SCOPUS:105019981775
SN - 1049-8923
JO - International Journal of Robust and Nonlinear Control
JF - International Journal of Robust and Nonlinear Control
ER -