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AI-Enhanced Spatial Cellular Traffic Demand Prediction with Contextual Clustering and Error Correction for 5G/6G Planning

arXiv cs.LG / 3/12/2026

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Key Points

  • The paper presents an AI-driven framework that reduces leakage and improves spatial generalization in cellular traffic demand prediction by employing a context-aware two-stage data split and residual spatial error correction.
  • It fuses heterogeneous geospatial and socio-economic layers to generate fine-grained demand maps for 5G NR capacity planning and future 6G scenarios.
  • The method tackles spatial autocorrelation and neighborhood leakage that undermine naive train/test splits, aiming for more reliable bandwidth provisioning and spectrum planning.
  • Experiments using crowdsourced usage indicators in five major Canadian cities report consistent MAE reductions versus location-only clustering, indicating improved planning reliability.

Abstract

Accurate spatial prediction of cellular traffic demand is essential for 5G NR capacity planning, network densification, and data-driven 6G planning. Although machine learning can fuse heterogeneous geospatial and socio-economic layers to estimate fine-grained demand maps, spatial autocorrelation can cause neighborhood leakage under naive train/test splits, inflating accuracy and weakening planning reliability. This paper presents an AI-driven framework that reduces leakage and improves spatial generalization via a context-aware two-stage splitting strategy with residual spatial error correction. Experiments using crowdsourced usage indicators across five major Canadian cities show consistent mean absolute error (MAE) reductions relative to location-only clustering, supporting more reliable bandwidth provisioning and evidence-based spectrum planning and sharing assessments.