计算机科学
匿名
访问控制
透明度(行为)
架空(工程)
计算机安全
匹配(统计)
信息隐私
数学证明
数据存取
协议(科学)
还原(数学)
控制(管理)
重写
树(集合论)
保密
路径(计算)
吞吐量
分布式计算
大方坯过滤器
任务(项目管理)
计算机网络
密码学
计算复杂性理论
互联网
分布式数据库
数据聚合器
作者
Jie Zhang,Xiaohong Li,Mengke Zhang,Ruitao Feng,Shanshan Xu,Zhé Hóu,Guangdong Bai
标识
DOI:10.1109/jiot.2026.3695861
摘要
Mobile edge computing (MEC) is a promising paradigm that provides abundant computation and storage resources at the edge close to mobile devices (MDs). In MEC networks, MDs offload compute-heavy tasks to nearby edge servers (ESs) for delay-sensitive processing, where relevant services are stored to support task execution. However, the limited computation and storage capacities of ESs make joint optimization of service caching and computation offloading challenging due to coupled decisions, a large solution space, and dynamic environments. In this paper, we investigate the joint optimization of service caching and computation offloading in MEC networks, aiming to maximize the cache hit ratio and minimize the average service latency. To tackle this problem, the original formulation is decomposed into two hierarchical subproblems, namely high-level service caching and low-level computation offloading. We propose a novel hierarchical deep reinforcement learning (DRL) algorithm with active inference, termed HADRL. At the high-level, we adopt a deep deterministic policy gradient (DDPG) based DRL approach to maximize the cache hit ratio. At the low-level, we employ an active inference based DRL approach to minimize the average service latency. Unlike conventional DRL, the active inference based DRL approach selects policies by minimizing expected free energy instead of relying only on explicit rewards, making it well suited for highly dynamic low-level computation offloading. According to the simulation outcomes, the HADRL scheme surpasses the benchmark algorithms with respect to cache hit ratio as well as average service latency.
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