Prediction of Precipitation using Multiscale Geographically Weighted Regression

Murat Taşyürek, Mete Çelik, Ali Ümran Kömüşçü, Filiz Dadaser-celik
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Abstract

Prediction of precipitation at locations which lack meteorological measurements is a challenging task in hydrological applications. In this study we aimed to demonstrate potential use of multiscale geographically weighted regression (MGWR) method used to predict precipitation based on relevant meteorological parameters. Geographically weighted regression (GWR) is a regression technique proposed to explore spatial non-stationary relationships. Compared to the linear regression technique, GWR considers the dynamics of local behaviour and, therefore provides an improved representation of spatial variations in relationships. Multiscale geographically weighted regression (MGWR) is a modified version of GWR that examines multiscale processes by providing a scalable and flexible framework. In this study, the MGWR model was used to predict precipitation, which is an essential problem not only in meteorology and climatology, but also in many other disciplines, such as geography and ecology. A meteorological dataset including elevation, precipitation, air temperature, air pressure, relative humidity, and cloud cover data belonging to Türkiye was used, and the performance of the MGWR was assessed in comparison with that of global regression and classical GWR. Experimental evaluations demonstrated that the MGWR model outperformed other approaches in precipitation prediction.
利用多尺度地理加权回归预测降水量
在水文应用中,对缺乏气象测量数据的地点进行降水预测是一项具有挑战性的任务。在这项研究中,我们旨在展示基于相关气象参数预测降水的多尺度地理加权回归(MGWR)方法的潜在用途。地理加权回归(GWR)是一种用于探索空间非平稳关系的回归技术。与线性回归技术相比,地理加权回归考虑了局部行为的动态变化,因此能更好地反映空间关系的变化。多尺度地理加权回归(MGWR)是 GWR 的改进版,通过提供一个可扩展的灵活框架来研究多尺度过程。在这项研究中,MGWR 模型被用于预测降水量,这不仅是气象学和气候学的一个基本问题,也是地理学和生态学等许多其他学科的一个基本问题。研究使用了图尔基耶的气象数据集,包括海拔、降水、气温、气压、相对湿度和云量数据,并将 MGWR 的性能与全球回归和经典 GWR 的性能进行了比较评估。实验评估表明,MGWR 模型在降水预测方面的表现优于其他方法。
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