开发人工智能 Q 代理,用于在多 RAT 无线网络中做出数据卸载决策

IF 2 Q3 TELECOMMUNICATIONS
Murk Marvi, Adnan Aijaz, Anam Qureshi, Muhammad Khurram
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引用次数: 0

摘要

数据卸载被认为是缓解无线网络拥塞和改善用户体验的潜在方法。然而,由于无线网络具有随机性,因此必须在不同条件下采取最佳行动,以便通过较低负载的 RAT 卸载数据来提高用户体验并减少重负载无线接入技术(RAT)的拥塞。由于基于人工智能(AI)的技术可以学习最佳行动并适应不同条件,因此在这项工作中,我们开发了一个支持人工智能的 Q-agent,用于在多 RAT 无线网络中做出数据卸载决策。我们采用无模型 Q 学习算法来训练 Q 代理。我们使用随机几何作为工具,通过考虑干扰的影响来估算网络在给定区域内提供的平均数据传输速率。我们使用马尔可夫过程来模拟用户的移动性,即根据用户之前的位置来估算其当前位于某一区域的概率。用户设备(UE)扮演 Q 代理的角色,负责采取一系列行动,使使用网络服务的长期贴现成本最小化。对 Q 代理的性能进行了评估,并与现有的数据卸载策略进行了比较。结果表明,在特定情况下,现有策略能提供最佳性能。然而,Q 代理学会了在不同条件下采取接近最优的行动。因此,Q 代理在不同条件下都能提供接近最佳的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of an AI-Enabled Q-Agent for Making Data Offloading Decisions in a Multi-RAT Wireless Network
Data offloading is considered as a potential candidate for alleviating congestion on wireless networks and for improving user experience. However, due to the stochastic nature of the wireless networks, it is important to take optimal actions under different conditions such that the user experience is enhanced and congestion on heavy-loaded radio access technologies (RATs) is reduced by offloading data through lower loaded RATs. Since artificial intelligence (AI)-based techniques can learn optimal actions and adapt to different conditions, in this work, we develop an AI-enabled Q-agent for making data offloading decisions in a multi-RAT wireless network. We employ a model-free Q-learning algorithm for training of the Q-agent. We use stochastic geometry as a tool for estimating the average data rate offered by the network in a given region by considering the effect of interference. We use the Markov process for modeling users’ mobility, that is, estimating the probability that a user is currently located in a region given its previous location. The user equipment (UE) plays the role of a Q-agent responsible for taking sequence of actions such that the long-term discounted cost for using network service is minimized. Q-agent performance has been evaluated and compared with the existing data offloading policies. The results suggest that the existing policies offer the best performance under specific situations. However, the Q-agent has learned to take near-optimal actions under different conditions. Thus, the Q-agent offers performance which is close to the best under different conditions.
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来源期刊
CiteScore
5.30
自引率
5.00%
发文量
18
审稿时长
15 weeks
期刊介绍: The Journal of Computer Networks and Communications publishes articles, both theoretical and practical, investigating computer networks and communications. Articles explore the architectures, protocols, and applications for networks across the full spectrum of sizes (LAN, PAN, MAN, WAN…) and uses (SAN, EPN, VPN…). Investigations related to topical areas of research are especially encouraged, including mobile and wireless networks, cloud and fog computing, the Internet of Things, and next generation technologies. Submission of original research, and focused review articles, is welcomed from both academic and commercial communities.
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