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Intelligent Jamming Defense Using DNN Stackelberg Game in Sensor Edge Cloud

Jian Hua Liu, Xin Wang, Shigen Shen, Zhaoxi Fang, Shui Yu, Guangxue Yue, Minglu Li

2021IEEE Internet of Things Journal39 citationsDOI

Abstract

To ensure an accurate power allocation against increasing intelligent jamming attacks on the offloading link of computation tasks, we investigate interactions between a cluster head node and an intelligent jammer using a Stackelberg game framework, under the constraint of the total power to use and the limited knowledge of its own channel gain for each player. In this game, the intelligent jammer gathers channel gain information and processes it using a deep neural network (DNN) to infer the accurate jamming power as an attack strategy. The cluster head node also exploits DNN to infer an accurate transmission power as a defense strategy according to the varying channel gain. We model the optimization of the attack and defense strategies using single channel jamming DNN (SJnet), multiple channel jamming DNN (MJnet), single channel sensor DNN (SSnet), and multiple channel sensor DNN (MSnet) for the single (multiple) channel jamming attacks. In addition, we extend the design to the scenario where the intelligent jammer can launch a hybrid mode jamming attack, and propose a DNN Stackelberg game-based defense scheme. Numerical simulation results demonstrate that our proposed mechanism is superior to other power allocation mechanisms under different scenarios in the sensor edge cloud.

Topics & Concepts

JammingStackelberg competitionComputer scienceChannel (broadcasting)Computer networkCloud computingEnhanced Data Rates for GSM EvolutionArtificial intelligenceMathematical economicsMathematicsOperating systemThermodynamicsPhysicsSecurity in Wireless Sensor NetworksWireless Communication Security TechniquesNetwork Security and Intrusion Detection
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