提升 6G 网络性能:用于主动管理和动态优化路由的 AI/ML 框架

Petro Mushidi Tshakwanda;Sisay Tadesse Arzo;Michael Devetsikiotis
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引用次数: 0

摘要

随着 6G 网络的普及,它们会产生大量数据并与各种设备接触,从而挑战传统网络管理技术的极限。这些技术的局限性决定了需要向基于人工智能/移动语言的框架进行革命性转变。本文介绍了一种使用我们新颖的速度优化 LSTM(SP-LSTM)模型的变革性方法,它体现了这一至关重要的模式转变。我们提出了一种整合了预测分析和动态路由的前瞻性策略,为高效利用资源和优化网络性能奠定了基础。这一创新的双层系统结合了 SP-LSTM 网络和强化学习 (RL),用于预测和动态路由选择。SP-LSTM 模型具有超快的速度,可以预测潜在的网络拥塞情况,从而采取先发制人的行动,而 RL 则利用这些预测来优化路由选择和维护网络性能。这种由持续学习和适应驱动的尖端框架反映了 6G 网络不断发展的特性,满足了对超低延迟、超高可靠性和异构管理的严格要求。SP-LSTM 的快速训练和预测时间改变了游戏规则,尤其是在时间至关重要的动态网络环境中。我们的工作标志着在未来网络管理中整合人工智能/移动语言方面迈出了重要一步,凸显了人工智能/移动语言超越传统算法和推动 6G 网络管理创新性能的卓越能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancing 6G Network Performance: AI/ML Framework for Proactive Management and Dynamic Optimal Routing
As 6G networks proliferate, they generate vast volumes of data and engage diverse devices, pushing the boundaries of traditional network management techniques. The limitations of these techniques underpin the need for a revolutionary shift towards AI/ML-based frameworks. This article introduces a transformative approach using our novel Speed-optimized LSTM (SP-LSTM) model, an embodiment of this crucial paradigm shift. We present a proactive strategy integrating predictive analytics and dynamic routing, underpinning efficient resource utilization and optimal network performance. This innovative, two-tiered system combines SP-LSTM networks and Reinforcement Learning (RL) for forecasting and dynamic routing. SP-LSTM models, boasting superior speed, predict potential network congestion, enabling preemptive action, while RL capitalizes on these forecasts to optimize routing and uphold network performance. This cutting-edge framework, driven by continuous learning and adaptation, mirrors the evolving nature of 6G networks, meeting the stringent requirements for ultra-low latency, ultra-reliability, and heterogeneity management. The expedited training and prediction times of SP-LSTM are game-changers, particularly in dynamic network environments where time is of the essence. Our work marks a significant stride towards integrating AI/ML in future network management, highlighting AI/ML's exceptional capacity to outperform conventional algorithms and drive innovative performance in 6G network management.
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CiteScore
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