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Artificial Intelligence-Based Techniques for Rainfall Estimation Integrating Multisource Precipitation Datasets

Raihan Sayeed Khan, Md Abul Ehsan Bhuiyan

2021Atmosphere40 citationsDOIOpen Access PDF

Abstract

This study presents a comprehensive investigation of multiple Artificial Intelligence (AI) techniques—decision tree, random forest, gradient boosting, and neural network—to generate improved precipitation estimates over the Upper Blue Nile Basin. All the AI methods merged multiple satellite and atmospheric reanalysis precipitation datasets to generate error-corrected precipitation estimates. The accuracy of the model predictions was evaluated using 13 years (2000–2012) of ground-based precipitation data derived from local rain gauge networks in the Upper Blue Nile Basin region. The results indicate that merging multiple sources of precipitation substantially reduced the systematic and random error statistics in the Upper Blue Nile Basin. The proposed methods have great potential in predicting precipitation over the complex terrain region.

Topics & Concepts

PrecipitationTerrainRandom forestArtificial neural networkEnvironmental scienceStructural basinDecision treeMeteorologyQuantitative precipitation estimationRain gaugeGradient boostingComputer scienceClimatologyArtificial intelligenceGeologyGeographyCartographyPaleontologyPrecipitation Measurement and AnalysisMeteorological Phenomena and SimulationsSoil Moisture and Remote Sensing
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