SINR-Aware Deep Reinforcement Learning for Distributed Dynamic Channel Allocation in Cognitive Interference Networks

IF 10.7 1区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Wireless Communications Pub Date : 2024-11-11 DOI:10.1109/TWC.2024.3491035
Yaniv Cohen;Tomer Gafni;Ronen Greenberg;Kobi Cohen
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Abstract

We consider the problem of dynamic channel allocation (DCA) in cognitive communication networks with the goal of maximizing a global signal-to-interference-plus-noise ratio (SINR) measure under a specified target quality of service (QoS)-SINR for each network. The shared bandwidth is partitioned into K channels with frequency separation. In contrast to the majority of existing studies that assume perfect orthogonality or a one-to-one user-channel allocation mapping, this paper focuses on practical systems experiencing inter-carrier interference (ICI) and channel reuse by multiple large-scale networks. This realistic scenario significantly increases the problem dimension, rendering existing algorithms inefficient. We propose a novel multi-agent reinforcement learning (RL) framework for distributed DCA, named Channel Allocation RL To Overlapped Networks (CARLTON). The CARLTON framework is based on the Centralized Training with Decentralized Execution (CTDE) paradigm, utilizing the DeepMellow value-based RL algorithm. To ensure robust performance in the interference-laden environment we address, CARLTON employs a low-dimensional representation of observations, generating a QoS-type measure while maximizing a global SINR measure and ensuring the target QoS-SINR for each network. Our results demonstrate exceptional performance and robust generalization, showcasing superior efficiency compared to alternative state-of-the-art methods, while achieving a marginally diminished performance relative to a fully centralized approach.
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认知干扰网络中面向分布式动态信道分配的 SINR 感知深度强化学习
我们考虑认知通信网络中的动态信道分配(DCA)问题,其目标是在每个网络的指定目标服务质量(QoS)-SINR下最大化全局信噪比(SINR)。通过频率分离,将共享带宽划分为K个通道。与大多数现有研究假设完全正交性或一对一用户信道分配映射相反,本文侧重于实际系统经历载波间干扰(ICI)和多个大规模网络的信道重用。这种现实场景显著增加了问题的维度,使现有算法效率低下。我们提出了一种新的分布式DCA多智能体强化学习(RL)框架,称为信道分配RL到重叠网络(CARLTON)。CARLTON框架基于集中式训练与分散执行(CTDE)范式,利用DeepMellow基于值的强化学习算法。为了确保在我们所处理的充满干扰的环境中具有稳健的性能,CARLTON采用低维观测表示,生成qos类型的测量,同时最大化全局SINR测量并确保每个网络的目标QoS-SINR。我们的研究结果展示了卓越的性能和稳健的泛化,与其他最先进的方法相比,展示了卓越的效率,同时相对于完全集中的方法,实现了略微降低的性能。
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来源期刊
CiteScore
18.60
自引率
10.60%
发文量
708
审稿时长
5.6 months
期刊介绍: The IEEE Transactions on Wireless Communications is a prestigious publication that showcases cutting-edge advancements in wireless communications. It welcomes both theoretical and practical contributions in various areas. The scope of the Transactions encompasses a wide range of topics, including modulation and coding, detection and estimation, propagation and channel characterization, and diversity techniques. The journal also emphasizes the physical and link layer communication aspects of network architectures and protocols. The journal is open to papers on specific topics or non-traditional topics related to specific application areas. This includes simulation tools and methodologies, orthogonal frequency division multiplexing, MIMO systems, and wireless over optical technologies. Overall, the IEEE Transactions on Wireless Communications serves as a platform for high-quality manuscripts that push the boundaries of wireless communications and contribute to advancements in the field.
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