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首页> 外文期刊>IEEE transactions on wireless communications >Reinforcement Learning With Network-Assisted Feedback for Heterogeneous RAT Selection
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Reinforcement Learning With Network-Assisted Feedback for Heterogeneous RAT Selection

机译:网络辅助反馈的强化学习,用于异构RAT选择

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摘要

Future wireless networks (e.g., 5G) will consist of multiple radio access technologies (RATs). In these networks, deciding which RAT users should connect to is not a trivial problem. Current fully distributed algorithms although guaranteeing convergence to equilibrium states, are often slow, require high exploration times and may converge to undesirable equilibria. To overcome these limitations, this paper develops a network feedback framework that uses limited network-assisted information to improve efficiency of distributed algorithms for RAT selection problem. We prove theoretically that a fully distributed algorithm developed within this framework is guaranteed to converge to a set of correlated equilibria. Our framework guarantees convergence in self-play even when only a single user applies the algorithm. Simulation results demonstrate that our solution: 1) is highly efficient with fast convergence time and low signaling overheads while achieving competitive, if not better, performance both in fairness and utility, as well as achieving lower per-user switchings than state-of-the-art algorithms; and 2) can flexibly support a wide range of network-assisted feedback. The simulations demonstrate the effectiveness of our solution in a heterogeneous environment, where users may potentially apply a number of different RAT selection procedures.
机译:未来的无线网络(例如5G)将由多种无线电接入技术(RAT)组成。在这些网络中,确定应连接哪些RAT用户并不是一件容易的事。当前的完全分布式算法尽管保证收敛到平衡状态,但是通常很慢,需要较长的探索时间,并且可能收敛到不期望的平衡。为了克服这些限制,本文开发了一种网络反馈框架,该框架使用有限的网络辅助信息来提高RAT选择问题的分布式算法的效率。从理论上讲,我们证明了在此框架内开发的完全分布式算法可保证收敛到一组相关均衡。即使只有一个用户使用该算法,我们的框架也可以确保自播放的融合。仿真结果表明,我们的解决方案:1)高效,快速收敛时间和低信令开销,同时在公平性和实用性方面均具有竞争优势(即使不是更好),并且实现了比当前状态更低的每用户切换先进的算法;和2)可以灵活支持广泛的网络辅助反馈。仿真证明了我们的解决方案在异构环境中的有效性,在该环境中用户可能会应用许多不同的RAT选择程序。

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