AI Agents 相关度: 5/10

AI-Enabled Data-driven Intelligence for Spectrum Demand Estimation

Colin Brown, Mohamad Alkadamani, Halim Yanikomeroglu
arXiv: 2603.09916v1 发布: 2026-03-10 更新: 2026-03-10

AI 摘要

该论文提出了一种利用AI和ML预测频谱需求的数据驱动方法,提高频谱资源分配效率。

主要贡献

  • 提出基于AI和ML的频谱需求估计方法
  • 利用多种代理数据(站点许可、众包数据)进行预测
  • 模型在加拿大五个城市验证,具有普适性

方法论

利用多种频谱需求代理数据,通过机器学习模型进行训练和验证,并在实际数据上进行评估。

原文摘要

Accurately forecasting spectrum demand is a key component for efficient spectrum resource allocation and management. With the rapid growth in demand for wireless services, mobile network operators and regulators face increasing challenges in ensuring adequate spectrum availability. This paper presents a data-driven approach leveraging artificial intelligence (AI) and machine learning (ML) to estimate and manage spectrum demand. The approach uses multiple proxies of spectrum demand, drawing from site license data and derived from crowdsourced data. These proxies are validated against real-world mobile network traffic data to ensure reliability, achieving an R$^2$ value of 0.89 for an enhanced proxy. The proposed ML models are tested and validated across five major Canadian cities, demonstrating their generalizability and robustness. These contributions assist spectrum regulators in dynamic spectrum planning, enabling better resource allocation and policy adjustments to meet future network demands.

标签

频谱管理 AI 机器学习 数据驱动

arXiv 分类

eess.SY cs.AI