Journal of Water and Climate Change (Jan 2024)

Impacts of hydroclimate change on climate-resilient agriculture at the river basin management

  • Chiranjit Singha,
  • Satiprasad Sahoo,
  • Ajit Govind,
  • Biswajeet Pradhan,
  • Shatha Alrawashdeh,
  • Taghreed Hamdi Aljohani,
  • Hussein Almohamad,
  • Abu Reza Md Towfiqul Islam,
  • Hazem Ghassan Abdo

DOI
https://doi.org/10.2166/wcc.2023.656
Journal volume & issue
Vol. 15, no. 1
pp. 209 – 232

Abstract

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This paper focuses on exploring the potential of Climate resilient agriculture (CRA) for river basin-scale management. Our analysis is based on long-term historical and future climate and hydrological datasets within a GIS environment, focusing on the Ajoy River basin in West Bengal, Eastern India. The standardized anomaly index (SAI) and slope of the linear regression (SLR) methods were employed to analyse the spatial pattern of the climate variables (precipitation, Tmax and Tmin) and hydrological variables (actual evapotranspiration (AET), runoff (Q), vapor pressure deficit (VPD), potential evapotranspiration (PET), and climate water deficit (DEF)) using the TerraClimate dataset spanning from 1958 to 2020. Future climate trend analysis spanning 2021 to 2050 was conducted using the CMIP6 based GCMs (MIROC6 and EC-Earth3) dataset under shared socio-economic pathway (SSP2-4.5, SSP5-8.5 and historical). For spatiotemporal water storage analysis, we relied on Gravity Recovery and Climate Experiment (GRACE) from the Center for Space Research (CSR) and the Jet Propulsion Laboratory (JPL) data, covering the period from 2002 to 2021. Validation was performed using regional groundwater level data, employing various machine learning classification models. Our findings revealed a negative precipitation trend (approximately −0.04 mm/year) in the southern part, whereas the northern part exhibited a positive trend (approximately 0.10 mm/year). HIGHLIGHTS The slope of the linear regression method was employed for the spatial distribution of the climatic and hydrological conditions (1958–2020).; Future climate trend analysis (2021–2100) has been executed through the CMIP6 (MIROC6 and EC-Earth3) SSP245, SSP585 and historical dataset.; A novel ensemble boosting machine learning algorithm was used for the validation of groundwater level.;

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