Water vapor density field estimation using commercial microwave link attenuation combined with temperature measurements

Accurate water vapor density (WVD) measurement is critical for weather models, health risk management, and industrial management among many other applications. A number of machine-learning based algorithms (e.g. support vector machine) for estimating water vapor density at a reference weather statio...

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Main Authors: Itay Bragin, Yoav Rubin, Pinhas Alpert, Jonatan Ostrometzky
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-01-01
Series:Frontiers in Signal Processing
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Online Access:https://www.frontiersin.org/articles/10.3389/frsip.2024.1468789/full
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author Itay Bragin
Yoav Rubin
Pinhas Alpert
Jonatan Ostrometzky
author_facet Itay Bragin
Yoav Rubin
Pinhas Alpert
Jonatan Ostrometzky
author_sort Itay Bragin
collection DOAJ
description Accurate water vapor density (WVD) measurement is critical for weather models, health risk management, and industrial management among many other applications. A number of machine-learning based algorithms (e.g. support vector machine) for estimating water vapor density at a reference weather station using the received signal level values measured at a commercial microwave link has been proposed in the past, and also was expanded to include a combination of three commercial microwave links with temperature measurements to achieve a higher estimation accuracy (with respect to the root mean square error at a given location). In this paper, we leverage on the preliminary potential presented, and propose enhanced machine learning models that utilize a larger number of CMLs combined with temperature data inside a given area to estimate a reference weather station humidity measurements. We then show how the presented approach can be expanded to estimate the water vapor density field - taking into consideration the elevation via the humidity-elevation profile. The models were evaluated using data from 32 weather stations and 505 CMLs in Germany, with performance assessed through root mean square error (RMSE) and correlation coefficients (CC). The enhanced models achieved a mean RMSE of 0.587 g/m³ for WVD field estimation, outperforming prior approaches as well as can be used as "virtual weather stations" - to estimate the water vapor density values in locations where no actual weather stations exist.
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issn 2673-8198
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publisher Frontiers Media S.A.
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spelling doaj-art-07d030966edd4eedb4c829f2942a378d2025-01-06T04:12:46ZengFrontiers Media S.A.Frontiers in Signal Processing2673-81982025-01-01410.3389/frsip.2024.14687891468789Water vapor density field estimation using commercial microwave link attenuation combined with temperature measurementsItay Bragin0Yoav Rubin1Pinhas Alpert2Jonatan Ostrometzky3School of Electrical Engineering, The Iby and Aladar Fleichman Faculty of Engineering, Tel Aviv University, Tel Aviv, IsraelPorter School for the Environment and Earth Sciences, Raymond and Beverly Sackler Faculty of Exact Sciences, Tel Aviv University, Tel Aviv, IsraelPorter School for the Environment and Earth Sciences, Raymond and Beverly Sackler Faculty of Exact Sciences, Tel Aviv University, Tel Aviv, IsraelSchool of Electrical Engineering, The Iby and Aladar Fleichman Faculty of Engineering, Tel Aviv University, Tel Aviv, IsraelAccurate water vapor density (WVD) measurement is critical for weather models, health risk management, and industrial management among many other applications. A number of machine-learning based algorithms (e.g. support vector machine) for estimating water vapor density at a reference weather station using the received signal level values measured at a commercial microwave link has been proposed in the past, and also was expanded to include a combination of three commercial microwave links with temperature measurements to achieve a higher estimation accuracy (with respect to the root mean square error at a given location). In this paper, we leverage on the preliminary potential presented, and propose enhanced machine learning models that utilize a larger number of CMLs combined with temperature data inside a given area to estimate a reference weather station humidity measurements. We then show how the presented approach can be expanded to estimate the water vapor density field - taking into consideration the elevation via the humidity-elevation profile. The models were evaluated using data from 32 weather stations and 505 CMLs in Germany, with performance assessed through root mean square error (RMSE) and correlation coefficients (CC). The enhanced models achieved a mean RMSE of 0.587 g/m³ for WVD field estimation, outperforming prior approaches as well as can be used as "virtual weather stations" - to estimate the water vapor density values in locations where no actual weather stations exist.https://www.frontiersin.org/articles/10.3389/frsip.2024.1468789/fullwater vapor densityhumiditymachine learningcommercial microwave linksopportunistic sensing
spellingShingle Itay Bragin
Yoav Rubin
Pinhas Alpert
Jonatan Ostrometzky
Water vapor density field estimation using commercial microwave link attenuation combined with temperature measurements
Frontiers in Signal Processing
water vapor density
humidity
machine learning
commercial microwave links
opportunistic sensing
title Water vapor density field estimation using commercial microwave link attenuation combined with temperature measurements
title_full Water vapor density field estimation using commercial microwave link attenuation combined with temperature measurements
title_fullStr Water vapor density field estimation using commercial microwave link attenuation combined with temperature measurements
title_full_unstemmed Water vapor density field estimation using commercial microwave link attenuation combined with temperature measurements
title_short Water vapor density field estimation using commercial microwave link attenuation combined with temperature measurements
title_sort water vapor density field estimation using commercial microwave link attenuation combined with temperature measurements
topic water vapor density
humidity
machine learning
commercial microwave links
opportunistic sensing
url https://www.frontiersin.org/articles/10.3389/frsip.2024.1468789/full
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AT yoavrubin watervapordensityfieldestimationusingcommercialmicrowavelinkattenuationcombinedwithtemperaturemeasurements
AT pinhasalpert watervapordensityfieldestimationusingcommercialmicrowavelinkattenuationcombinedwithtemperaturemeasurements
AT jonatanostrometzky watervapordensityfieldestimationusingcommercialmicrowavelinkattenuationcombinedwithtemperaturemeasurements