Machine Learning-Based Bias Correction of Precipitation Measurements at High Altitude

Accurate precipitation measurements are essential for understanding hydrological processes in high-altitude regions. Conventional gauge measurements often yield large underestimations of actual precipitation, prompting the development of statistical methods to correct the measurement bias. However,...

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Main Authors: Hongyi Li, Yang Zhang, Huajin Lei, Xiaohua Hao
Format: Article
Language:English
Published: MDPI AG 2023-04-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/15/8/2180
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author Hongyi Li
Yang Zhang
Huajin Lei
Xiaohua Hao
author_facet Hongyi Li
Yang Zhang
Huajin Lei
Xiaohua Hao
author_sort Hongyi Li
collection DOAJ
description Accurate precipitation measurements are essential for understanding hydrological processes in high-altitude regions. Conventional gauge measurements often yield large underestimations of actual precipitation, prompting the development of statistical methods to correct the measurement bias. However, the complex conditions at high altitudes pose additional challenges to the statistical methods. To improve the correction of precipitation measurements in high-altitude areas, we selected the Yakou station, situated at an altitude of 4147 m on the Tibetan plateau, as the study site. In this study, we employed the machine learning method XGBoost regression to correct precipitation measurements using meteorological variables and remote sensing data, including Global Satellite Mapping of Precipitation (GSMaP), Integrated Multi-satellitE Retrievals for GPM (IMERG) and Climate Hazards Group InfraRed Precipitation with Station data (CHIRPS). Additionally, we examined the transferability of this method between different stations in our study site, Norway, and the United States. Our results show that the Yakou station experiences a large underestimation of precipitation, with a magnitude of 51.4%. This is significantly higher than similar measurements taken in the Arctic or lower altitudes. Furthermore, the remote sensing precipitation datasets underestimated precipitation when compared to the Double Fence Intercomparison Reference (DFIR) precipitation observation. Our findings suggest that the machine learning method outperformed the traditional statistical method in accuracy metrics and frequency distribution. Introducing remote sensing data, especially the GSMaP precipitation, could potentially replace the role of in situ wind speed in precipitation correction, highlighting the potential of remote sensing data for correcting precipitation rather than in situ meteorological observation. Moreover, our results indicate that the machine learning method with remote sensing data demonstrated better transferability than the traditional statistical method when we cross-validated the method with sites located in different countries. This study offers a promising strategy for obtaining more accurate precipitation measurements in high-altitude regions.
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spelling doaj.art-3d97ba9672954db3a7d01b49a2bc3b442023-11-17T21:13:10ZengMDPI AGRemote Sensing2072-42922023-04-01158218010.3390/rs15082180Machine Learning-Based Bias Correction of Precipitation Measurements at High AltitudeHongyi Li0Yang Zhang1Huajin Lei2Xiaohua Hao3Northwest Institute of Eco-Environment and Resources, Chinese Academy of Sciences, Lanzhou 730000, ChinaNorthwest Institute of Eco-Environment and Resources, Chinese Academy of Sciences, Lanzhou 730000, ChinaState Key Laboratory of Hydraulics and Mountain River Engineering, College of Water Resource and Hydropower, Sichuan University, Chengdu 610065, ChinaNorthwest Institute of Eco-Environment and Resources, Chinese Academy of Sciences, Lanzhou 730000, ChinaAccurate precipitation measurements are essential for understanding hydrological processes in high-altitude regions. Conventional gauge measurements often yield large underestimations of actual precipitation, prompting the development of statistical methods to correct the measurement bias. However, the complex conditions at high altitudes pose additional challenges to the statistical methods. To improve the correction of precipitation measurements in high-altitude areas, we selected the Yakou station, situated at an altitude of 4147 m on the Tibetan plateau, as the study site. In this study, we employed the machine learning method XGBoost regression to correct precipitation measurements using meteorological variables and remote sensing data, including Global Satellite Mapping of Precipitation (GSMaP), Integrated Multi-satellitE Retrievals for GPM (IMERG) and Climate Hazards Group InfraRed Precipitation with Station data (CHIRPS). Additionally, we examined the transferability of this method between different stations in our study site, Norway, and the United States. Our results show that the Yakou station experiences a large underestimation of precipitation, with a magnitude of 51.4%. This is significantly higher than similar measurements taken in the Arctic or lower altitudes. Furthermore, the remote sensing precipitation datasets underestimated precipitation when compared to the Double Fence Intercomparison Reference (DFIR) precipitation observation. Our findings suggest that the machine learning method outperformed the traditional statistical method in accuracy metrics and frequency distribution. Introducing remote sensing data, especially the GSMaP precipitation, could potentially replace the role of in situ wind speed in precipitation correction, highlighting the potential of remote sensing data for correcting precipitation rather than in situ meteorological observation. Moreover, our results indicate that the machine learning method with remote sensing data demonstrated better transferability than the traditional statistical method when we cross-validated the method with sites located in different countries. This study offers a promising strategy for obtaining more accurate precipitation measurements in high-altitude regions.https://www.mdpi.com/2072-4292/15/8/2180bias correction of precipitation measurementremotely sensed precipitationmachine learningXGBoostTibetan plateau
spellingShingle Hongyi Li
Yang Zhang
Huajin Lei
Xiaohua Hao
Machine Learning-Based Bias Correction of Precipitation Measurements at High Altitude
Remote Sensing
bias correction of precipitation measurement
remotely sensed precipitation
machine learning
XGBoost
Tibetan plateau
title Machine Learning-Based Bias Correction of Precipitation Measurements at High Altitude
title_full Machine Learning-Based Bias Correction of Precipitation Measurements at High Altitude
title_fullStr Machine Learning-Based Bias Correction of Precipitation Measurements at High Altitude
title_full_unstemmed Machine Learning-Based Bias Correction of Precipitation Measurements at High Altitude
title_short Machine Learning-Based Bias Correction of Precipitation Measurements at High Altitude
title_sort machine learning based bias correction of precipitation measurements at high altitude
topic bias correction of precipitation measurement
remotely sensed precipitation
machine learning
XGBoost
Tibetan plateau
url https://www.mdpi.com/2072-4292/15/8/2180
work_keys_str_mv AT hongyili machinelearningbasedbiascorrectionofprecipitationmeasurementsathighaltitude
AT yangzhang machinelearningbasedbiascorrectionofprecipitationmeasurementsathighaltitude
AT huajinlei machinelearningbasedbiascorrectionofprecipitationmeasurementsathighaltitude
AT xiaohuahao machinelearningbasedbiascorrectionofprecipitationmeasurementsathighaltitude