Potential for Early Forecast of Moroccan Wheat Yields Based on Climatic Drivers

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Date
2020
Volume
47
Issue
12
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Publisher
Hoboken, NJ [u.a.] : Wiley
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Abstract

Wheat production plays an important role in Morocco. Current wheat forecast systems use weather and vegetation data during the crop growing phase, thus limiting the earliest possible release date to early spring. However, Morocco's wheat production is mostly rainfed and thus strongly tied to fluctuations in rainfall, which in turn depend on slowly evolving climate dynamics. This offers a source of predictability at longer time scales. Using physically guided causal discovery algorithms, we extract climate precursors for wheat yield variability from gridded fields of geopotential height and sea surface temperatures which show potential for accurate yield forecasts already in December, with around 50% explained variance in an out-of-sample cross validation. The detected interactions are physically meaningful and consistent with documented ocean-atmosphere feedbacks. Reliable yield forecasts at such long lead times could provide farmers and policy makers with necessary information for early action and strategic adaptation measurements to support food security. ©2020. The Authors.

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Keywords
causal discovery algorithms, climate precursors, machine learning, seasonal forecast, teleconnections, wheat forecast
Citation
Lehmann, J., Kretschmer, M., Schauberger, B., & Wechsung, F. (2020). Potential for Early Forecast of Moroccan Wheat Yields Based on Climatic Drivers. 47(12). https://doi.org//10.1029/2020GL087516
License
CC BY 4.0 Unported