Precipitation Modeling Based on Spatio-Temporal Variation in Lake Urmia Basin Using Machine Learning Methods

Author:

Arbabi Sajjad1ORCID,Sattari Mohammad Taghi12ORCID,Attar Nasrin Fathollahzadeh1ORCID,Milewski Adam3ORCID,Sakizadeh Mohamad4

Affiliation:

1. Department of Water Engineering, Faculty of Agriculture, University of Tabriz, Tabriz 5166616471, Iran

2. Department of Agricultural Engineering, Faculty of Agriculture, Ankara University, Ankara 06110, Turkey

3. Department of Geology, University of Georgia, 210 Field Street, Athens, GA 30602, USA

4. Department of Environmental Sciences, Shahid Rajaee Teacher Training University, Shahid Shabanlou Avenue, Lavizan, P.O. Box 16785-163, Tehran 1678815811, Iran

Abstract

The amount of rainfall in different regions is influenced by various factors, including time, place, climate, and geography. In the Lake Urmia basin, Mediterranean air masses significantly impact precipitation. This study aimed to model precipitation in the Lake Urmia basin using monthly rainfall data from 16 meteorological stations and five machine learning methods (RF, M5, SVR, GPR, and KNN). Eight input scenarios were considered, including the monthly index, longitude, latitude, altitude, distance from stations to Lake Urmia, and distance from the Mediterranean Sea. The results revealed that the random forest model consistently outperformed the other models, with a correlation rate of 0.968 and the lowest errors (RMSE = 5.66 mm and MAE = 4.03 mm). This indicates its high accuracy in modeling precipitation in this basin. This study’s significant contribution is its ability to accurately model monthly precipitation using spatial variables and monthly indexes without measuring precipitation. Based on the findings, the random forest model can model monthly rainfall and create rainfall maps by interpolating the GIS environment for areas without rainfall measurements.

Publisher

MDPI AG

Reference38 articles.

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3. Zahedi Qara Aghaj, M., and Qavidel Rahimi, Y. (2007). Determining the Threshold of Drought and Calculating the Reliable Amount of Precipitation in the Watershed Stations of Lake Urmia Basin. Geogr. Res., 21, Available online: https://jrg.ut.ac.ir/article_18518.html?lang=en.

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