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面向IRS辅助无蜂窝MEC网络的公平多用户传输-计算流量匹配策略
A Fair Multi-User Traffic Matching Strategy for Transmission and Computing in IRS-Assisted Cell-Free MEC Networks
| 作者 | Guang Chen · Yueyun Chen · Liping Du · Conghui Hao · Yudong Yao |
| 期刊 | IEEE Transactions on Vehicular Technology |
| 出版日期 | 2025年9月 |
| 卷/期 | 第 75 卷 第 2 期 |
| 技术分类 | 控制与算法 |
| 技术标签 | 模型预测控制MPC 强化学习 智能化与AI应用 边缘计算 |
| 相关度评分 | ★★ 2.0 / 5.0 |
| 关键词 |
语言:
中文摘要
本文针对IRS辅助无蜂窝移动边缘计算(MEC)中因信道估计误差导致的多用户公平性缺失问题,提出基于随机分析的max-min多用户流量匹配(M3TM)策略,联合优化无线传输与边缘计算资源分配,提升处理数据量公平性与系统鲁棒性。
English Abstract
The data processing capability of intelligent reflective surfaces (IRS)-assisted cell-free mobile edge computing (MEC) is constrained by both the offloaded data traffic during wireless transmission and the computed data traffic in the MEC server. The effectiveness of wireless transmission is adversely affected by channel estimation errors. Additionally, fairness is a critical consideration in multi-user scenarios. However, achieving fair multi-user traffic matching in IRS-assisted cell-free MEC networks with imperfect channel state information (CSI) remains an unsolved issue. To tackle this challenge, this paper proposes a max-min multi-user traffic matching (M3TM) strategy for transmission and computing, which mitigates the impact of channel estimation errors through stochastic analysis. The proposed strategy applies a sequential transmission paired with immediate sequential computing mode to ensure IRS gain for each user and improve computing resource utilization efficiency. A cell-free wireless transmission sub-model is proposed with a stochastic analysis of channel estimation errors. Based on the transmission sub-model, a transmission-computing traffic matching model, representing the processed data volume for each user, is proposed, which comprehensively accounts for the mutual constraints between wireless transmission and edge computing. Subsequently, a max-min processed data volume optimization problem is formulated, leveraging the max-min criterion to ensure fairness among users. To address the non-convex formulated problem and alleviate the adverse impact of channel estimation errors, a variable grouping optimization algorithm is proposed, which combines a block coordinate descent (BCD)-based method with a proof-by-contradiction approach to optimize different groups of variables. Simulation results validate the superiority of the proposed strategy.
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SunView 深度解读
该文聚焦IRS+MEC的通信-计算协同优化,属6G边缘智能范畴,与阳光电源当前主营业务(光伏逆变器、储能PCS、iSolarCloud平台)无直接技术交集。但其提出的分布式资源协同调度思想可启发iSolarCloud在光储充一体化微电网中实现‘源-荷-储-云’多维资源动态匹配;建议在PowerTitan/ST系列PCS的智能运维升级中,探索轻量化边缘协同调度算法,增强对多终端(充电桩、户用储能、逆变器)的协同响应能力。