基于机器学习的分布式动态频谱访问

Sonia, S. Singh
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引用次数: 0

摘要

随着无线通信领域的创新,许多先进的技术应运而生,保持点数据速率和移动流量,以便用户能够有效地通信。目前,Wi-Fi与4G-LTE等长期演进技术、频谱感知技术、频谱接入方法的不同共存场景已经进行了研究、验证和仿真。本文主要研究以动态和分布式方式进行频谱接入。这可以使用深度强化学习模型来实现。它给出了应用不同策略方法的模型的总体渠道利用率和响应信息。在该方法中,利用Boltzmann分布、epsilon贪婪、上置信度界和Thompson抽样等策略函数来获得学习算法中的奖励。结果表明,Thompson抽样策略优于其他抽样策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning based Distributed Dynamic Spectrum Access
With innovations in the field of wireless communication many advanced technologies are coming up keeping in point data rates and mobile traffic so that users can efficiently communicate. Different coexistence scenarios between Wi-Fi and long-term evolution technique as 4G-LTE, spectrum-sensing techniques and spectrum-access method have been studied, proved, and simulated so far. This paper is mainly focused on performing spectrum-access in dynamic and distributed manner. This can be achieved using deep-reinforcement-learning model. It gives us information about overall channel-utilization and response of model applying different policy methods. In the proposed methodology policy functions as Boltzmann distribution, epsilon greedy, upper confidence bound, and Thompson sampling are used to obtain a reward in learning algorithm. Results shows that Thompson sampling policy performs superior than others.
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