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Weather dataset choice introduces uncertainty to estimates of crop yield responses to climate variability and change:

Author

Listed:
  • Parkes, Ben
  • Higginbottom, Thomas P.
  • Hufken, Koen
  • Ceballos, Francisco
  • Kramer, Berber
  • Foster, Timothy

Abstract

Extreme weather events, such as heatwaves, droughts, and excess rainfall, are a major cause of crop yield losses and food insecurity worldwide. Statistical or process-based crop models can be used to quantify how yields will respond to extreme weather and future climate change. However, the accuracy of weather-yield relationships derived from crop models, whether statistical or process-based, is dependent on the quality of the underlying input data used to run these models. In this context, a major challenge in many developing countries is the lack of accessible and reliable meteorological datasets. Gridded weather datasets, derived from combinations of in-situ gauges, remote sensing, and climate models, provide a solution to fill this gap, and have been widely used to evaluate climate impacts on agriculture in data-scarce regions worldwide. However, these reference datasets are also known to contain important biases and uncertainties. To date, there has been little research to assess how the choice of reference datasets in influences projected sensitivity of crop yields to weather. We compare multiple freely available gridded datasets that provide daily weather data over the Indian sub-continent over the period 1983- 2005, and explore their implications for estimates of yield responses to weather variability for key crops grown in the region (wheat and rice). Our results show that individual gridded weather datasets vary in their representation of historic spatial and temporal temperature and precipitation patterns across India. We show that these differences create large uncertainties in estimated crop yield responses and exposure to extreme weather events, which highlight the need for improved consideration of input data uncertainty in statistical studies that explore impacts of climate variability and change on agriculture.

Suggested Citation

  • Parkes, Ben & Higginbottom, Thomas P. & Hufken, Koen & Ceballos, Francisco & Kramer, Berber & Foster, Timothy, 2019. "Weather dataset choice introduces uncertainty to estimates of crop yield responses to climate variability and change:," IFPRI discussion papers 1870, International Food Policy Research Institute (IFPRI).
  • Handle: RePEc:fpr:ifprid:1870
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    Cited by:

    1. Enrico Biffis & Erik Chavez & Alexis Louaas & Pierre Picard, 2022. "Parametric insurance and technology adoption in developing countries," The Geneva Risk and Insurance Review, Palgrave Macmillan;International Association for the Study of Insurance Economics (The Geneva Association), vol. 47(1), pages 7-44, March.
    2. Huang, Mingxia & Wang, Jing & Wang, Bin & Liu, De Li & Feng, Puyu & Yu, Qiang & Pan, Xuebiao & Li, Siyi & Jiang, Tengcong, 2022. "Dominant sources of uncertainty in simulating maize adaptation under future climate scenarios in China," Agricultural Systems, Elsevier, vol. 199(C).
    3. Araghi, Alireza & Jaghargh, Majid Rajabi & Maghrebi, Mohsen & Martinez, Christopher J. & Fraisse, Clyde W. & Olesen, Jørgen E. & Hoogenboom, Gerrit, 2021. "Investigation of satellite-related precipitation products for modeling of rainfed wheat production systems," Agricultural Water Management, Elsevier, vol. 258(C).
    4. Jha, P.K. & Araya, A. & Stewart, Z.P. & Faye, A. & Traore, H. & Middendorf, B.J. & Prasad, P.V.V., 2021. "Projecting potential impact of COVID-19 on major cereal crops in Senegal and Burkina Faso using crop simulation models," Agricultural Systems, Elsevier, vol. 190(C).
    5. Randell, Heather & Gray, Clark & Shayo, Elizabeth H., 2022. "Climatic conditions and household food security: Evidence from Tanzania," Food Policy, Elsevier, vol. 112(C).
    6. Kamini Yadav & Hatim M. E. Geli, 2021. "Prediction of Crop Yield for New Mexico Based on Climate and Remote Sensing Data for the 1920–2019 Period," Land, MDPI, vol. 10(12), pages 1-27, December.

    More about this item

    Keywords

    INDIA; SOUTH ASIA; ASIA; climate change; crop modelling; weather; yields;
    All these keywords.

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