LGSPJul 21, 2025

Learning to Gridize: Segment Physical World by Wireless Communication Channel

arXiv:2507.15386v11 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work addresses the challenge of efficient large-scale network optimization for wireless communication systems by improving gridization methods, though it appears incremental as it builds on existing gridization concepts with a novel integration.

The paper tackles the problem of gridizing space for network optimization by proposing Channel Space Gridization (CSG), a framework that unifies channel estimation and gridization using only beam-level RSRP, resulting in a 30% reduction in Active MAE and 65% reduction in Overall MAE on RSRP prediction accuracy compared to baselines.

Gridization, the process of partitioning space into grids where users share similar channel characteristics, serves as a fundamental prerequisite for efficient large-scale network optimization. However, existing methods like Geographical or Beam Space Gridization (GSG or BSG) are limited by reliance on unavailable location data or the flawed assumption that similar signal strengths imply similar channel properties. We propose Channel Space Gridization (CSG), a pioneering framework that unifies channel estimation and gridization for the first time. Formulated as a joint optimization problem, CSG uses only beam-level reference signal received power (RSRP) to estimate Channel Angle Power Spectra (CAPS) and partition samples into grids with homogeneous channel characteristics. To perform CSG, we develop the CSG Autoencoder (CSG-AE), featuring a trainable RSRP-to-CAPS encoder, a learnable sparse codebook quantizer, and a physics-informed decoder based on the Localized Statistical Channel Model. On recognizing the limitations of naive training scheme, we propose a novel Pretraining-Initialization-Detached-Asynchronous (PIDA) training scheme for CSG-AE, ensuring stable and effective training by systematically addressing the common pitfalls of the naive training paradigm. Evaluations reveal that CSG-AE excels in CAPS estimation accuracy and clustering quality on synthetic data. On real-world datasets, it reduces Active Mean Absolute Error (MAE) by 30\% and Overall MAE by 65\% on RSRP prediction accuracy compared to salient baselines using the same data, while improving channel consistency, cluster sizes balance, and active ratio, advancing the development of gridization for large-scale network optimization.

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