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Robustly forecasting maize yields in Tanzania based on climatic predictors
AgricultureScientific Reports

Robustly forecasting maize yields in Tanzania based on climatic predictors

R. Laudien, B. Schauberger, et al.

This study presents an innovative statistical approach to forecasting maize yield in Tanzania, combining regional yield statistics with climatic predictors to deliver accurate predictions six weeks prior to harvest. Conducted by Rahel Laudien, Bernhard Schauberger, David Makowski, and Christoph Gornott, the model shows exceptional reliability in both yield anomalies and absolute yields, proving to be useful for regions facing data limitations.... show more
Abstract
Seasonal yield forecasts are important to support agricultural development programs and can contribute to improved food security in developing countries. Despite their importance, no operational forecasting system on sub-national level is yet in place in Tanzania. We develop a statistical maize yield forecast based on regional yield statistics in Tanzania and climatic predictors, covering the period 2009–2019. We forecast both yield anomalies and absolute yields at the sub-national scale about 6 weeks before the harvest. The forecasted yield anomalies (absolute yields) have a median Nash–Sutcliffe efficiency coefficient of 0.72 (0.79) in the out-of-sample cross validation, which corresponds to a median root mean squared error of 0.13 t/ha for absolute yields. In addition, we perform an out-of-sample variable selection and produce completely independent yield forecasts for the harvest year 2019. Our study is potentially applicable to other countries with short time series of yield data and inaccessible or low quality weather data due to the usage of only global climate data and a strict and transparent assessment of the forecasting skill.
Publisher
Scientific Reports
Published On
Nov 12, 2020
Authors
Rahel Laudien, Bernhard Schauberger, David Makowski, Christoph Gornott
Tags
maize yieldforecastingclimatic predictorsTanzaniastatistical modelyield anomaliesagricultural research
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