Machine Learning Model-Based Retrieval of Temperature and Relative Humidity Profiles Measured by Microwave Radiometer

Author:

Luo Yuyan1,Wu Hao2ORCID,Gu Taofeng3,Wang Zhenglin14,Yue Haiyan5,Wu Guangsheng3,Zhu Langfeng2,Pu Dongyang2,Tang Pei6,Jiang Mengjiao1

Affiliation:

1. Plateau Atmospheres and Environment Key Laboratory of Sichuan Province, School of Atmospheric Sciences, Chengdu University of Information Technology, Chengdu 610225, China

2. Key Laboratory of China Meteorological Administration Atmospheric Sounding, School of Electrical Engineering, Chengdu University of Information Technology, Chengdu 610225, China

3. Guangzhou Meteorological Observatory, Guangzhou 511430, China

4. Hainan International Commercial Aerospace Launch Co., Ltd., Wenchang 571300, China

5. Guangzhou Emergency Warning Information Release Center, Guangzhou 511430, China

6. Zhongshan Meteorological Service, Zhongshan 528400, China

Abstract

The accuracy of temperature and relative humidity (RH) profiles retrieved by the ground-based microwave radiometer (MWR) is crucial for meteorological research. In this study, the four-year measurements of brightness temperature measured by the microwave radiometer from Huangpu meteorological station in Guangzhou, China, and the radiosonde data from the Qingyuan meteorological station (70 km northwest of Huangpu station) during the years from 2018 to 2021 are compared with the sonde data. To make a detailed comparison on the performance of machine learning models in retrieving the temperature and RH profiles, four machine learning algorithms, namely Deep Learning (DL), Gradient Boosting Machine (GBM), Extreme Gradient Boosting (XGBoost) and Random Forest (RF), are employed and verified. The results show that the DL model performs the best in temperature retrieval (with the root-mean-square error and the correlation coefficient of 2.36 and 0.98, respectively), while the RH of the four machine learning methods shows different excellence at different altitude levels. The integrated machine learning (ML) RH method is proposed here, in which a certain method with the minimum RMSE is selected from the four methods of DL, GBM, XGBoost and RF for a certain altitude level. Two cases on 29 January 2021 and on 10 February 2021 are used for illustration. The case on 29 January 2021 illustrates that the DL model is suitable for temperature retrieval and the ML model is suitable for RH retrieval in Guangzhou. The case on 10 February 2021 shows that the ML RH method reaches over 85% before precipitation, implying the application of the ML RH method in pre-precipitation warnings.

Funder

Guangzhou Science and Technology Bureau

National Natural Science Foundation of China

Chengdu University of Information Technology Research Fund

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

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