Resumen
This work addresses the increasing complexity of urban mobility by proposing an intelligent optimization and resource-allocation framework for Vehicle-to-Infrastructure (V2I) communications. The model integrates a macroscopic mobility analysis, an Integer Linear Programming (ILP) formulation for optimal Road-Side Unit (RSU) placement, and a Smart Generic Network Controller (SGNC) based on Q-learning for dynamic radio-resource allocation. Simulation results in a realistic georeferenced urban scenario with 380 candidate sites show that the ILP model activates only 2.9% of RSUs while guaranteeing more than 90% vehicular coverage. The reinforcement-learning-based SGNC achieves stable allocation behavior, successfully managing 10 antennas and 120 total resources, and maintaining efficient operation when the system exceeds 70% capacity by reallocating resources dynamically through the λ-based alert mechanism. Compared with static allocation, the proposed method improves resource efficiency and coverage consistency under varying traffic demand, demonstrating its potential for scalable V2I deployment in next-generation intelligent transportation systems.
| Título traducido de la contribución | Agente inteligente para la asignación de recursos desde infraestructura móvil hacia vehículos en entornos dinámicos, escalable bajo demanda |
|---|---|
| Idioma original | Inglés estadounidense |
| Número de artículo | 1 |
| Páginas (desde-hasta) | 1-30 |
| Número de páginas | 30 |
| Publicación | Sensors |
| Volumen | 26 |
| N.º | 2 |
| DOI | |
| Estado | Publicada - 11 ene. 2026 |
Palabras clave
- AI
- dynamic coverage
- Q-learning
- resource allocation
- smart generic network controller
- vanet
Tipos de Productos Minciencias
- Artículos de investigación con calidad A1 / Q1