TelePlanNet: An AI-Driven Framework for Efficient Telecom Network Planning
- URL: http://arxiv.org/abs/2505.13831v2
- Date: Tue, 27 May 2025 08:33:45 GMT
- Title: TelePlanNet: An AI-Driven Framework for Efficient Telecom Network Planning
- Authors: Zongyuan Deng, Yujie Cai, Qing Liu, Shiyao Mu, Bin Lyu, Zhen Yang,
- Abstract summary: The selection of base station sites is a critical challenge in 5G network planning.<n>Existing AI tools, despite improving efficiency in certain aspects, still struggle to meet the dynamic network conditions.<n>We propose TelePlanNet, an AI-driven framework tailored for the selection of base station sites.
- Score: 8.803399698762853
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The selection of base station sites is a critical challenge in 5G network planning, which requires efficient optimization of coverage, cost, user satisfaction, and practical constraints. Traditional manual methods, reliant on human expertise, suffer from inefficiencies and are limited to an unsatisfied planning-construction consistency. Existing AI tools, despite improving efficiency in certain aspects, still struggle to meet the dynamic network conditions and multi-objective needs of telecom operators' networks. To address these challenges, we propose TelePlanNet, an AI-driven framework tailored for the selection of base station sites, integrating a three-layer architecture for efficient planning and large-scale automation. By leveraging large language models (LLMs) for real-time user input processing and intent alignment with base station planning, combined with training the planning model using the improved group relative policy optimization (GRPO) reinforcement learning, the proposed TelePlanNet can effectively address multi-objective optimization, evaluates candidate sites, and delivers practical solutions. Experiments results show that the proposed TelePlanNet can improve the consistency to 78%, which is superior to the manual methods, providing telecom operators with an efficient and scalable tool that significantly advances cellular network planning.
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