Probabilistic yield forecasting of robusta coffee at the farm scale using agroclimatic and remote sensing derived indices
Autor: | Nathaniel K. Newlands, Vivekananda Byrareddy, Alidou Sawadogo, Louis Kouadio |
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Rok vydání: | 2021 |
Předmět: |
0106 biological sciences
Atmospheric Science Global and Planetary Change 010504 meteorology & atmospheric sciences Mean squared error business.industry Yield (finance) Growing season Forestry Statistical model 01 natural sciences Mean absolute percentage error Agriculture Evapotranspiration Statistics business Scale (map) Agronomy and Crop Science 010606 plant biology & botany 0105 earth and related environmental sciences Mathematics |
Zdroj: | Agricultural and Forest Meteorology. 306:108449 |
ISSN: | 0168-1923 |
DOI: | 10.1016/j.agrformet.2021.108449 |
Popis: | Timely and reliable coffee yield forecasts using agroclimatic information are pivotal to the success of agricultural climate risk management throughout the coffee value chain. The capability of statistical models to forecast coffee yields at different lead times during the growing season at the farm scale was assessed. Using data collected during a 10-year period (2008-2017) from 558 farmers across the four major coffee-producing provinces in Vietnam (Dak Lak, Dak Nong, Gia Lai, and Lam Dong), the models were built through a robust statistical modelling approach involving Bayesian and machine learning methods. Overall, coffee yields were estimated with reasonable accuracies across the four study provinces based on agroclimate variables, satellite-derived actual evapotranspiration, and crop and farm management information. Median values of prediction mean absolute percentage error (MAPE) ranged generally from 8% to 13%, and median root mean square errors (RMSE) between 295 kg ha−1 and 429 kg ha−1. For forecasts at four to one month before harvest, errors did not vary markedly when comparing the median MAPE and RMSE values. For farms in Dak Lak, Dak Nong, and Lam Dong, the median forecasting MAPE and RMSE varied between 13% and 16% and between 420 kg ha−1 and 456 kg ha−1, respectively. Using readily and freely available data, the modelling approach explored in this study appears flexible for an application to a larger number of coffee farms across the Vietnamese coffee-producing regions. Moreover, the study can serve as basis for developing a coffee yield predicting forecasting system that will offer substantial benefits to the entire coffee industry through better supply chain management in coffee-producing countries worldwide. |
Databáze: | OpenAIRE |
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