天-空-地一体化网络的资源分配:全面回顾

Hui Liang;Zhiqing Yang;Guobin Zhang;Hanxu Hou
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摘要

天-空-地一体化网络(SAGIN)已成为满足日益增长的全球连接和增强通信服务需求的一个重要范例。本文全面回顾了 SAGIN 中资源分配的策略和方法,重点关注其复杂结构中的挑战和解决方案。随着 6G 等技术的出现,资源优化的动态变化变得日益复杂,需要采用创新方法进行有效管理。我们研究了数学优化、博弈论、人工智能(AI)和动态优化技术在 SAGIN 中的应用,深入探讨了这些技术在确保最佳资源分配、最小化延迟、最大化网络吞吐量和稳定性方面的有效性。调查报告强调了基于人工智能的方法,特别是深度学习和强化学习,在应对 SAGIN 资源分配固有挑战方面取得的重大进展。通过对现有文献的批判性回顾,本文对各种资源分配策略进行了分类,确定了当前的研究空白,并讨论了潜在的未来方向。我们的研究结果强调了综合智能资源分配机制在实现 SAGIN 在下一代通信网络中的全部潜力方面的关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resource Allocation for Space-Air-Ground Integrated Networks: A Comprehensive Review
The space-air-ground integrated networks (SAGIN) has emerged as a critical paradigm to address the growing demands for global connectivity and enhanced communication services. This paper gives a thorough review of the strategies and methodologies for resource allocation within SAGIN, focusing on the challenges and solutions within its complex structure. With the advent of technologies such as 6G, the dynamics of resource optimization have become increasingly complex, necessitating innovative approaches for efficient management. We examine the application of mathematical optimization, game theory, artificial intelligence (AI), and dynamic optimization techniques in SAGIN, offering insights into their effectiveness in ensuring optimal resource distribution, minimizing delays, and maximizing network throughput and stability. The survey highlights the significant advances in AI-based methods, particularly deep learning and reinforcement learning, in tackling the inherent challenges of SAGIN resource allocation. Through a critical review of existing literature, this paper categorizes various resource allocation strategies, identifies current research gaps, and discusses potential future directions. Our findings highlight the crucial role of integrated and intelligent resource allocation mechanisms in realizing the full potential of SAGIN for next-generation communication networks.
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