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Next-Generation Drought Forecasting: Hybrid AI Models for Climate Resilience

Jinping Liu, Liu Tie, Lei Huang, Yanqun Ren, Panxing He

2025Remote Sensing6 citationsDOIOpen Access PDF

Abstract

Droughts are increasingly threatening ecological balance, agricultural productivity, and socio-economic resilience—especially in semi-arid regions like the Inner Mongolia segment of China’s Yellow River Basin. This study presents a hybrid drought forecasting framework integrating machine learning (ML) and deep learning (DL) models with high-resolution historical and downscaled future climate data. TerraClimate observations (1985–2014) and bias-corrected CMIP6 projections (2030–2050) under SSP2-4.5 and SSP5-8.5 scenarios were utilized to develop and evaluate the models. Among the tested ML algorithms, Random Forest (RF) demonstrated the best trade-off between accuracy and interpretability and was selected for feature importance analysis. The top-ranked predictors—precipitation, solar radiation, and maximum temperature—were used to train a Long Short-Term Memory (LSTM) network. The LSTM outperformed all ML models, achieving high predictive skill (R2 = 0.766, CC = 0.880, RMSE = 0.885). Scenario-based projections revealed increasing drought severity and variability under SSP5-8.5, with mean PDSI values dropping below −3 after 2040 and deepening toward −4 by 2049. The high-emission scenario also exhibited broader uncertainty bands and amplified interannual anomalies. These findings highlight the value of hybrid AI–climate modeling approaches in capturing complex drought dynamics and supporting anticipatory water resource planning in vulnerable dryland environments.

Topics & Concepts

InterpretabilityEnvironmental scienceResilience (materials science)Climate resilienceRandom forestClimate changeAgriculturePsychological resilienceFeature (linguistics)ClimatologyEnvironmental resource managementComputer scienceResource (disambiguation)Water resourcesClimate modelInner mongoliaArtificial neural networkEnergy Load and Power ForecastingComputational Physics and Python ApplicationsHydrology and Drought Analysis