基于smdp的分片请求资源分配与长期奖励最大化

Xin-lian Zhou, X. Wen, Luhan Wang, Zhaoming Lu, Wanqing Guan
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引用次数: 2

摘要

网络切片已成为5G/B5G网络中支持多业务共存的关键技术。然而,由于资源的稀缺性和切片请求的多样性,如何有效地分配资源以使基础设施网络的长期回报最大化是一个具有挑战性的问题。本文将资源分配问题建模为一个半马尔可夫决策过程(SMDP),该决策过程由状态空间、动作空间、奖励和转移概率分布定义。奖励函数综合考虑了基础设施网络的总收益、可用资源的成本和总资源的利用率。我们不关注一步决策奖励,而是应用Bellman方程通过累积来获得长期奖励。然后利用数值迭代算法,根据某一状态确定资源分配方案,使长期回报最大化。大量的仿真结果表明,与现有的启发式算法相比,所提出的SMDP算法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SMDP-Based Resource Allocation for Slice Requests with Long-term Reward Maximization
Network slicing has emerged as a key technology to support the coexistence of multi-service in the the 5G/B5G networks. However, due to the resource scarcity and the diversity of slice requests, how to allocate resources efficiently to maximize the long-term reward of the infrastructure network is a challenging issue. In this paper, we model the resource allocation problem as a semi-Markov decision process (SMDP), which is defined by state space, action space, reward and transition probability distribution. The reward function jointly considers the total income, the cost of available resource and the utilization of the total resource for the infrastructure network. Not focusing on one step decisions reward, we apply the Bellman equation to obtain long-term reward by accumulating. Then we exploit value iteration algorithm to determine the resource allocation scheme according to a certain state in such a way that the long-term reward can be maximized. Extensive simulation results show that the proposed SMDP can achieve a superior performance compared with the existing heuristic methods.
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