Deep reinforcement learning-based dynamical task offloading for mobile edge computing


연구 분야: Networking



학회: The Journal of Supercomputing


초록

Edge computing holds considerable potential to augment the efficiency of computational and energy resources in mobile edge computing (MEC) through the application of task offloading technology. Task offloading involves the delegation of multiple tasks, generated by devices with limited resources, to an edge server or other devices equipped with enhanced capabilities, which facilitates more efficient processing times and energy utilization. This paper addresses significant challenges in MEC environments, particularly the issue of inaccurately perceived task rewards due to queuing delays in task offloading, which adversely affects the performance of deep reinforcement learning (DRL) strategies. We introduce the reward-aware proximal policy optimization (RAPPO) algorithm, which is specifically designed to enhance the accuracy of reward perception by refining data sampling methods. This adjustment enables RAPPO to accurately associate rewards with their respective tasks despite inherent delays, thereby enhancing decision-making and improving overall system performance in dynamic and uncertain environments. Simulation results demonstrate that the proposed algorithm achieves competitive performance compared to existing baseline schemes.


Author Profile
Bo Xie

School of Electronic Science and Engineering (School of Microelectronics) South China Normal University Foshan 528225 China

Andorra
Author Profile
Haixia Cui

School of Electronic Science and Engineering (School of Microelectronics) South China Normal University Foshan 528225 China

Andorra

📄 논문 정보

발행 연도 2024년
인용수 11
출판 국가 Andorra
사이트 Springer
좋아요 수 0

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