Saved in:
Bibliographic Details
Main Authors: Li, Xingwang, Chen, Mengyun, Liu, Jiamou, Wang, Sijie, Jin, Shuanggen, Andersson, Jafet C. M., Olsson, Jonas, Remco, de Beek, van, Habi, Hai Victor, Han, Congzheng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.02465
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911297872855040
author Li, Xingwang
Chen, Mengyun
Liu, Jiamou
Wang, Sijie
Jin, Shuanggen
Andersson, Jafet C. M.
Olsson, Jonas
Remco
de Beek, van
Habi, Hai Victor
Han, Congzheng
author_facet Li, Xingwang
Chen, Mengyun
Liu, Jiamou
Wang, Sijie
Jin, Shuanggen
Andersson, Jafet C. M.
Olsson, Jonas
Remco
de Beek, van
Habi, Hai Victor
Han, Congzheng
contents In the face of accelerating global urbanization and the increasing frequency of extreme weather events, highresolution urban rainfall monitoring is crucial for building resilient smart cities. Commercial Microwave Links (CMLs) are an emerging data source with great potential for this task.While traditional rainfall retrieval from CMLs relies on physicsbased models, these often struggle with real-world complexities like signal noise and nonlinear attenuation. To address these limitations, this paper proposes a novel hybrid deep learning architecture based on the Transformer and a Bidirectional Gated Recurrent Unit (BiGRU), which we name TabGRU. This design synergistically captures both long-term dependencies and local sequential features in the CML signal data. The model is further enhanced by a learnable positional embedding and an attention pooling mechanism to improve its dynamic feature extraction and generalization capabilities. The model was validated on a public benchmark dataset from Gothenburg, Sweden (June-September 2015). The evaluation used 12 sub-links from two rain gauges (Torp and Barl) over a test period (August 22-31) covering approximately 10 distinct rainfall events. The proposed TabGRU model demonstrated consistent advantages, outperforming deep learning baselines and achieving high coefficients of determination (R2) at both the Torp site (0.91) and the Barl site (0.96). Furthermore, compared to the physics-based approach, TabGRU maintained higher accuracy and was particularly effective in mitigating the significant overestimation problem observed in the PL model during peak rainfall events. This evaluation confirms that the TabGRU model can effectively overcome the limitations of traditional methods, providing a robust and accurate solution for CML-based urban rainfall monitoring under the tested conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2512_02465
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TabGRU: An Enhanced Design for Urban Rainfall Intensity Estimation Using Commercial Microwave Links
Li, Xingwang
Chen, Mengyun
Liu, Jiamou
Wang, Sijie
Jin, Shuanggen
Andersson, Jafet C. M.
Olsson, Jonas
Remco
de Beek, van
Habi, Hai Victor
Han, Congzheng
Machine Learning
Artificial Intelligence
In the face of accelerating global urbanization and the increasing frequency of extreme weather events, highresolution urban rainfall monitoring is crucial for building resilient smart cities. Commercial Microwave Links (CMLs) are an emerging data source with great potential for this task.While traditional rainfall retrieval from CMLs relies on physicsbased models, these often struggle with real-world complexities like signal noise and nonlinear attenuation. To address these limitations, this paper proposes a novel hybrid deep learning architecture based on the Transformer and a Bidirectional Gated Recurrent Unit (BiGRU), which we name TabGRU. This design synergistically captures both long-term dependencies and local sequential features in the CML signal data. The model is further enhanced by a learnable positional embedding and an attention pooling mechanism to improve its dynamic feature extraction and generalization capabilities. The model was validated on a public benchmark dataset from Gothenburg, Sweden (June-September 2015). The evaluation used 12 sub-links from two rain gauges (Torp and Barl) over a test period (August 22-31) covering approximately 10 distinct rainfall events. The proposed TabGRU model demonstrated consistent advantages, outperforming deep learning baselines and achieving high coefficients of determination (R2) at both the Torp site (0.91) and the Barl site (0.96). Furthermore, compared to the physics-based approach, TabGRU maintained higher accuracy and was particularly effective in mitigating the significant overestimation problem observed in the PL model during peak rainfall events. This evaluation confirms that the TabGRU model can effectively overcome the limitations of traditional methods, providing a robust and accurate solution for CML-based urban rainfall monitoring under the tested conditions.
title TabGRU: An Enhanced Design for Urban Rainfall Intensity Estimation Using Commercial Microwave Links
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2512.02465