TD3-based trajectory optimization for energy consumption minimization in UAV-assisted MEC system
Nov 17, 2024·
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沈凡凡
Bofan Yang
Jun Zhang
Chao Xu
Yong Chen
Yanxiang He
Abstract
Unmanned Aerial Vehicle (UAV) assisted Mobile Edge Computing (MEC) systems provide substantial benefits for task offloading and communication services, especially in situations where traditional communication infrastructure is unavailable. Current research emphasizes maintaining communication quality while minimizing total energy consumption and optimizing UAV flight trajectories. However, several issues remain:First, the energy consumption objective function lacks comprehensiveness, neglecting the impact of UAV flight energy consumption; second, an effective Deep Reinforcement Learning (DRL) algorithm has not been employed to address the non-convexity of the objective function; third, there is insufficient discussion regarding the practical significance of the proposed approach. To address these issues, this paper formulates an objective function aimed at minimizing MEC energy consumption by considering task offloading decisions, communication delays, computational energy consumption, and UAV flight energy consumption. We propose a Population Diversity-based Particle Swarm Optimization-Double Delay Deep Deterministic Policy Gradient (PDPSO-TD3) algorithm to find the optimal solution, enhance UAV flight trajectories through optimized offloading decisions, ensure efficient communication, and minimize the total energy consumption of the MEC system. Furthermore, we discuss the practical applicability of PDPSO-TD3 in detail and present the proposed scheme. Experimental results demonstrate that compared to the Deep Deterministic Policy Gradient (DDPG) algorithm, for transmission delay, MEC energy consumption, UAV flight energy consumption, and User Equipments (UEs) access rate metrics. The proposed PDPSO-TD3 algorithm can improvement the performance by about 14.3%, 10.1%, 6.1%, and 3.3%, respectively.
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Publication
Computer Networks,Volume 255,2024,110882

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博士,副教授,硕士生导师
沈凡凡,男,博士,副教授,硕士研究生导师,润泽学者,中国计算机学会高级会员,毕业于武汉大学计算机软件与理论专业。现为国际标准化组织ISO/TC295“审计数据采集标准”中国专家组成员,CCF信息存储技术专业委员会执行委员,CCF嵌入式系统专业委员会执行委员,CCF体系结构专业委员会委员,江苏省计算机学会计算机系统结构专业委员会委员、江苏省计算机学会计算机应用专业委员会委员。主持国家自然科学基金1项,省部级课题3项,参与国家自然科学基金、省部级项目多项。在《计算机学报》、《软件学报》、《计算机研究与发展》、《电子学报》、TC、CN、TJSC、Cluster、CJE等国内外重要学术刊物上发表论文20余篇。
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