Comparison of machine learning algorithms for merging gridded satellite and earth-observed precipitation data
Georgia Papacharalampous, Hristos Tyralis, Anastasios Doulamis,, Nikolaos Doulamis

TL;DR
This study compares eight machine learning algorithms to improve satellite precipitation data accuracy across the contiguous US over 15 years, identifying XGBoost and random forests as the most effective methods.
Contribution
It provides a comprehensive, large-scale comparison of multiple machine learning algorithms for correcting satellite precipitation data, offering generalizable insights and best practices.
Findings
XGBoost and random forests outperform other algorithms in accuracy
Gradient boosting and neural networks show competitive performance
Linear regression is the least accurate among tested methods
Abstract
Gridded satellite precipitation datasets are useful in hydrological applications as they cover large regions with high density. However, they are not accurate in the sense that they do not agree with ground-based measurements. An established means for improving their accuracy is to correct them by adopting machine learning algorithms. This correction takes the form of a regression problem, in which the ground-based measurements have the role of the dependent variable and the satellite data are the predictor variables, together with topography factors (e.g., elevation). Most studies of this kind involve a limited number of machine learning algorithms, and are conducted for a small region and for a limited time period. Thus, the results obtained through them are of local importance and do not provide more general guidance and best practices. To provide results that are generalizable and…
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Taxonomy
TopicsPrecipitation Measurement and Analysis · Meteorological Phenomena and Simulations · Geophysics and Gravity Measurements
