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Main Authors: Matus-Bello, Alison, Restrepo, Silvia E., Bustos, Ricardo, Hu, Yi, Du, Fujia, Cariñe, Jaime, García, Pablo, Maldonado, Javier, Reeves, Rodrigo, Shang, Zhaohui
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.09575
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author Matus-Bello, Alison
Restrepo, Silvia E.
Bustos, Ricardo
Hu, Yi
Du, Fujia
Cariñe, Jaime
García, Pablo
Maldonado, Javier
Reeves, Rodrigo
Shang, Zhaohui
author_facet Matus-Bello, Alison
Restrepo, Silvia E.
Bustos, Ricardo
Hu, Yi
Du, Fujia
Cariñe, Jaime
García, Pablo
Maldonado, Javier
Reeves, Rodrigo
Shang, Zhaohui
contents Astronomical observations at millimeter and submillimeter wavelengths heavily depend on the amount of Precipitable Water Vapor (PWV) in the atmosphere, directly affecting the sky transparency and degrading the quality of the signals received by radio telescopes. Predictions of PWV at different forecasting horizons is crucial to support telescope operations, engineering planning, and observational scheduling and efficiency of radio observatories installed in the Chajnantor area in northern Chile. We developed and validated a Long Short-Term Memory (LSTM) deep learning-based model to predict PWV at forecasting horizons of 12, 24, 36, and 48 hours using historical data from two 183 GHz radiometers and a weather station in the Chajnantor area. We find the LSTM method is able to predict PWV in the 12 and 24 hours forecasting horizons with Mean Absolute Percentage Error (MAPE) of 22% compared to 36% of the traditional Global Forecast System (GFS) method used by Atacama Pathfinder EXperiment (APEX) and the Root Mean Square Error (RMSE) in mm are reduced by 50%. We present a first application of deep learning techniques for preliminary predictions of PWV in the Chajnantor area. The prediction performance shows significant improvements to traditional methods in 12 and 24 hours time windows. We also propose upgrades to improve our method in short (< 1 hour) and long (> 36 hours) forecasting timescales for future work.
format Preprint
id arxiv_https___arxiv_org_abs_2509_09575
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Deep-learning-based prediction of Precipitable Water Vapor in the Chajnantor area
Matus-Bello, Alison
Restrepo, Silvia E.
Bustos, Ricardo
Hu, Yi
Du, Fujia
Cariñe, Jaime
García, Pablo
Maldonado, Javier
Reeves, Rodrigo
Shang, Zhaohui
Instrumentation and Methods for Astrophysics
Astronomical observations at millimeter and submillimeter wavelengths heavily depend on the amount of Precipitable Water Vapor (PWV) in the atmosphere, directly affecting the sky transparency and degrading the quality of the signals received by radio telescopes. Predictions of PWV at different forecasting horizons is crucial to support telescope operations, engineering planning, and observational scheduling and efficiency of radio observatories installed in the Chajnantor area in northern Chile. We developed and validated a Long Short-Term Memory (LSTM) deep learning-based model to predict PWV at forecasting horizons of 12, 24, 36, and 48 hours using historical data from two 183 GHz radiometers and a weather station in the Chajnantor area. We find the LSTM method is able to predict PWV in the 12 and 24 hours forecasting horizons with Mean Absolute Percentage Error (MAPE) of 22% compared to 36% of the traditional Global Forecast System (GFS) method used by Atacama Pathfinder EXperiment (APEX) and the Root Mean Square Error (RMSE) in mm are reduced by 50%. We present a first application of deep learning techniques for preliminary predictions of PWV in the Chajnantor area. The prediction performance shows significant improvements to traditional methods in 12 and 24 hours time windows. We also propose upgrades to improve our method in short (< 1 hour) and long (> 36 hours) forecasting timescales for future work.
title Deep-learning-based prediction of Precipitable Water Vapor in the Chajnantor area
topic Instrumentation and Methods for Astrophysics
url https://arxiv.org/abs/2509.09575