Joint Optimization of Cooperative Edge Caching and Radio Resource Allocation in 5G-Enabled Massive IoT Networks

2021 
The fifth-generation of wireless communication (5G) is a promising paradigm towards massive interconnectivity within Internet of Things (IoT) networks. However, because the data traffic throughput sharply increases with the number of IoT devices, a tremendous burden on the backhaul links and core networks results. With this in mind, mobile edge caching is an effective method that can relieve stress of the backhaul links, while decreasing the service latency. The purpose of this study is to analyze the problem of jointly optimizing cooperative edge caching and radio resource allocation in 5G-enabled massive IoT networks. For that, a joint optimization long-term non-linear integer programming (LT-NLIP) problem is posed. This class of problems is known to be NP-hard, thus, to reduce the problem complexity, a divide and conquer scheme will be applied – the task at hand will be divided into two subproblems: cooperative edge caching and radio resource allocation. The cooperative edge caching subproblem is formulated as a constrained Markov decision process. Herein, a deep reinforcement learning method to optimize the caching decisions for all the edge nodes. Then, based on the resulting optimal caching decisions, the radio resource allocation subproblem for each edge node is posed as a NLIP problem, and an improved branch-and-bound method is proposed, to yield the optimal radio resource allocation decisions for each edge node. Extensive simulations were performed to confirm that the proposed methods have the capability of enhancing the content caching hit ratio, while lessening the content retrieving delays for 5G-Enabled Massive IoT Networks – improving over various baseline algorithms.
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