NIApr 9

Beyond Static Forecasting: Unleashing the Power of World Models for Mobile Traffic Extrapolation

arXiv:2604.0819984.3
AI Analysis

This addresses mobile traffic forecasting for wireless network operators, establishing a new paradigm for digital twin-driven network management.

The paper tackles mobile traffic prediction for wireless network planning by proposing MobiWM, a world model that captures dynamics between traffic states and network parameter adjustments. Experiments on data from 31,900 cells show it achieves the best distributional fidelity, outperforming existing baselines and enabling a downstream RL-based network optimization case study.

Mobile traffic prediction is a fundamental yet challenging problem for wireless network planning and optimization. Existing models focus on learning static long-term temporal patterns in mobile traffic series, which limits their ability to capture the dynamics between mobile traffic and network parameter adjustments. In this paper, we propose MobiWM, a world model for mobile networks. Taking mobile traffic as the system state, MobiWM models the dynamics between the states and network parameter actions, including power, azimuth, mechanical tilt, and electrical tilt through a predictive backbone. It fuses multimodal environmental contexts, comprising both image and sequential data, with encoded actions, leveraging shared spatial semantics to enhance spatial understanding. Leveraging the capacity of world models to capture real-world operational dynamics, MobiWM supports unlimited-horizon rollout over continuous network-adjustment action trajectories, providing operators with an explorable counterfactual simulation environment for network planning and optimization. Extensive experiments on variable-parameter mobile traffic data covering 31,900 cells across 9 districts demonstrate that MobiWM achieves the best distributional fidelity across all evaluation scenarios, significantly outperforming existing traffic prediction baselines and representative world models. A downstream RL-based case study further validates MobiWM as a simulation environment for network optimization, establishing a new paradigm for digital twin-driven wireless network management.

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