Learning to Optimize Resource Allocation in Dynamic Wireless Environments: Embracing the New While Engaging the Old

IF 10.7 1区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Wireless Communications Pub Date : 2025-04-18 DOI:10.1109/TWC.2025.3560116
Zhenrong Liu;Yang Li;Yik-Chung Wu;Yi Gong
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Abstract

Wireless resource allocation is a critical component in modern communication systems, and deep neural networks (DNNs) have shown great promise in addressing this challenge. However, the conventional DNNs assume that testing data follows the same distribution as that of the training data, which is incongruent with the dynamic nature of real-world wireless environments. This paper introduces a new training algorithm designed specifically for dynamic wireless environments where channel distribution exhibits variability. This method helps DNNs adapt to new environments while preserving previously learned information. The proposed approach distinguishes itself by updating the DNN parameters in the null space of the low-rank covariance of previous data, which reduces memory needs and boosts training efficiency. Additionally, to counter the problem of DNNs hitting their model capacity during continuous adaptation, a selective forgetting mechanism is proposed. This mechanism allows DNNs to discard the unimportant knowledge over time, freeing up model capacity for more effective adaptation. The effectiveness of the algorithm is validated by integrating it with graph neural networks and multilayer perceptrons for weighted sum-rate maximization. Through a comprehensive evaluation that includes synthetic and ray-tracing-based datasets, superior performance is demonstrated compared to existing methods.
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学习如何在动态无线环境中优化资源分配:拥抱新事物,同时融入旧事物
无线资源分配是现代通信系统的关键组成部分,深度神经网络(dnn)在解决这一挑战方面显示出巨大的希望。然而,传统的深度神经网络假设测试数据遵循与训练数据相同的分布,这与真实无线环境的动态性不一致。本文介绍了一种新的训练算法,专门针对信道分布具有可变性的动态无线环境设计。这种方法有助于dnn适应新环境,同时保留先前学习的信息。该方法通过更新先验数据的低秩协方差零空间中的深度神经网络参数,降低了记忆需求,提高了训练效率。此外,为了解决dnn在连续适应过程中影响其模型容量的问题,提出了一种选择性遗忘机制。这种机制允许深度神经网络随着时间的推移丢弃不重要的知识,释放模型的能力以进行更有效的适应。将该算法与图神经网络和多层感知器相结合,实现加权和率最大化,验证了算法的有效性。通过综合评估,包括合成和基于光线跟踪的数据集,与现有方法相比,证明了优越的性能。
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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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