4.7 Article

Projection of future drought and its impact on simulated crop yield over South Asia using ensemble machine learning approach

Journal

SCIENCE OF THE TOTAL ENVIRONMENT
Volume 807, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.scitotenv.2021.151029

Keywords

Drought; Crop yield; Ensemble machine learning; South Asia

Funding

  1. CAS Strategic Priority Research Program [XDA19030402]
  2. Natural Science Foundation of China [42071425, 41871253]
  3. Key Basic Research Project of Shandong Natural Science Foundation of China [2018GNC110025, ZR2017ZB0422]
  4. Taishan Scholar Project of Shandong Province [TSXZ201712]
  5. CAS-TWAS President's Fellowship Program

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This study assesses the future drought situation and its impact on crop yield in South Asia using climate models and crop models. The results indicate that some regions in South Asia will experience severe and prolonged drought, leading to significant reductions in rice, wheat, and maize production.
Understanding the development mechanism of drought events, characterization of future drought metrics, and its impact on crop yield is crucial to ensure food security globally, and more importantly, in South Asia. Therefore, the present study assessed the changes in future projected drought metrics and evaluated the future risk of yield reduction under drought intensity. We characterized the magnitude, intensity, and duration of future drought by means of the SPEI drought index using CMIP6 (Coupled Model Inter-comparison Phase-6) climate models. The impact of future drought on crop yield was quantified from the ISI-MP (Inter-Sectoral Impact Model Intercomparison Project) crop model by a proposed non-linear ensemble of Random Forest (RF) and Gradient Boosting Machine (GBM). Results suggested that high drought magnitude with a longer drought duration is projected in some regions of South Asia while high drought intensity comes with a shorter duration. It was also found that Afghanistan, Pakistan, and India will experience a longer drought duration in the future. Our proposed ensemble machine learning (EML) approach had high predictive skill with a minimum value of RMSE (0.358-0.390), MAE (0.222-0.299), and a maximum value of R2 (0.705-0.918) compared to the stand-alone methods of RF and GBM for yield loss risk projection. The drought-driven impact on crop yield demonstrates a high risk of yield loss under extreme drought events, which will encounter 54.15%, 29.30%, and 50.66% loss in the future for rice, wheat, and maize crops, respectively. Furthermore, drought and yield loss risk dynamics sug-gested a one unit decrease in SPEI value would lead to a 14.2%, 7.5%, and 10.9% decrease in yield for rice, wheat, and maize crops, respectively. This study will provide a notable direction for policy agencies to build resistance to crop production against the drought impact in the regions that are critical to climate change. (c) 2021 Elsevier B.V. All rights reserved.

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