Quantum deep reinforcement learning for dynamic resource allocation in mobile edge computing-based IoT systems

James Adu Ansere, Eric Gyamfi, Vishal Sharma, Hyundong Shin, Octavia A. Dobre, Trung Q. Duong

Research output: Contribution to journalArticlepeer-review

9 Citations (Scopus)

Abstract

This paper exploits a quantum-empowered machine learning algorithm to enhance computation learning speed. We leverage quantum phenomena such as superposition and entanglement to work on large-scale multi-dimensional data represented by quantum states. Under stochastic behaviors and quantum uncertainty, we examine the offloading problem to maximize the computational task processing efficiency, considering the computation latency, energy consumption, and quantum network adaptability. From the Markov decision process, the paper proposes a novel quantum-empowered deep reinforcement learning (Qe-DRL) approach, combining quantum computing theory and machine learning to achieve exploration and exploitation trade-off via quantum parallelism significantly. Furthermore, we develop a modified Grover’s algorithm with exponential convergence speed to provide a searching strategy for transition quantum states probabilities. Simulation results establish the effectiveness of the proposed Qe-DRL algorithm and its superior computational learning speed. Our proposed Qe-DRL algorithm outperforms other benchmarks in terms of energy efficiency performance.
Original languageEnglish
Pages (from-to)6221 - 6233
JournalIEEE Transactions on Wireless Communications
Volume23
Issue number6
Early online date14 Nov 2023
DOIs
Publication statusPublished - Jun 2024

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