Digital Twin-Assisted Data-Driven Optimization for Reliable Edge Caching in Wireless Networks

Zifan Zhang;Yuchen Liu;Zhiyuan Peng;Mingzhe Chen;Dongkuan Xu;Shuguang Cui
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Abstract

Optimizing edge caching is crucial for the advancement of next-generation (nextG) wireless networks, ensuring high-speed and low-latency services for mobile users. Existing data-driven optimization approaches often lack awareness of the distribution of random data variables and focus solely on optimizing cache hit rates, neglecting potential reliability concerns, such as base station overload and unbalanced cache issues. This oversight can result in system crashes and degraded user experience. To bridge this gap, we introduce a novel digital twin-assisted optimization framework, called D-REC, which integrates reinforcement learning (RL) with diverse intervention modules to ensure reliable caching in nextG wireless networks. We first develop a joint vertical and horizontal twinning approach to efficiently create network digital twins, which are then employed by D-REC as RL optimizers and safeguards, providing ample datasets for training and predictive evaluation of our cache replacement policy. By incorporating reliability modules into a constrained Markov decision process, D-REC can adaptively adjust actions, rewards, and states to comply with advantageous constraints, minimizing the risk of network failures. Theoretical analysis demonstrates comparable convergence rates between D-REC and vanilla data-driven methods without compromising caching performance. Extensive experiments validate that D-REC outperforms conventional approaches in cache hit rate and load balancing while effectively enforcing predetermined reliability intervention modules.
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数字孪生辅助数据驱动优化,实现无线网络中的可靠边缘缓存
优化边缘缓存对下一代(nextG)无线网络的发展至关重要,可确保为移动用户提供高速、低延迟的服务。现有的数据驱动优化方法往往缺乏对随机数据变量分布的认识,只关注优化缓存命中率,而忽视了潜在的可靠性问题,如基站过载和不平衡缓存问题。这种疏忽可能导致系统崩溃和用户体验下降。为了弥补这一缺陷,我们引入了一种名为 D-REC 的新型数字孪生辅助优化框架,该框架将强化学习(RL)与多种干预模块集成在一起,以确保下一代无线网络中缓存的可靠性。我们首先开发了一种联合纵向和横向孪生方法,以高效创建网络数字孪生,然后由 D-REC 将其用作 RL 优化器和保障措施,为我们的缓存替换策略的训练和预测评估提供充足的数据集。通过将可靠性模块纳入受限马尔可夫决策过程,D-REC 可以自适应地调整行动、奖励和状态,以符合有利的约束条件,从而最大限度地降低网络故障的风险。理论分析表明,在不影响缓存性能的情况下,D-REC 与普通数据驱动方法的收敛速度相当。大量实验证明,D-REC 在缓存命中率和负载平衡方面优于传统方法,同时还能有效执行预定的可靠性干预模块。
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Table of Contents IEEE Journal on Selected Areas in Communications Publication Information Guest Editorial Integrated Ground-Air-Space Wireless Networks for 6G Mobile—Part I IEEE Communications Society Information IEEE Open Access Publishing
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