Journal of Water and Climate Change (Jun 2021)

Assessment of rice yield gap under a changing climate in India

  • Subhankar Debnath,
  • Ashok Mishra,
  • D. R. Mailapalli,
  • N. S. Raghuwanshi,
  • V. Sridhar

DOI
https://doi.org/10.2166/wcc.2020.086
Journal volume & issue
Vol. 12, no. 4
pp. 1245 – 1267

Abstract

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Climate change evokes future food security concerns and needs for sustainable intensification of agriculture. The explicit knowledge about crop yield gap at country level may help in identifying management strategies for sustainable agricultural production to meet future food demand. In this study, we assessed the rice yield gap under projected climate change scenario in India at 0.25° × 0.25° spatial resolution by using the Decision Support System for Agrotechnology Transfer (DSSAT) model. The simulated spatial yield results show that mean actual yield under rainfed conditions (Ya) will reduce from 2.13 t/ha in historical period 1981–2005 to 1.67 t/ha during the 2030s (2016–2040) and 2040s (2026–2050), respectively, under the RCP 8.5 scenario. On the other hand, mean rainfed yield gap shows no change (≈1.49 t/ha) in the future. Temporal analysis of yield indicates that Ya is expected to decrease in the considerably large portion of the study area (30–60%) under expected future climate conditions. As a result, yield gap is expected to either stagnate or increase in 50.6 and 48.7% of the study area during the two future periods, respectively. The research outcome indicates the need for identifying plausible best management strategies to reduce the yield gap under expected future climate conditions for sustainable rice production in India. HIGHLIGHTS The study assessed rice yield gap in India by using the DSSAT model.; Equidistant quantile mapping technique is used for bias correction of RCM outputs.; Rice yield is expected to decrease in 30–60% of the study area in future.; Mean rainfed yield gap of 1.49 t/ha is expected in future.; The RegCM4 model performed well to simulate rice yield than other models.;

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