4.6 Article

Estimating Groundnut Yield in Smallholder Agriculture Systems Using PlanetScope Data

Journal

LAND
Volume 11, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/land11101752

Keywords

food security; yield prediction; Malawi; random forest regression; PlanetScope; vegetation indices

Funding

  1. BiodivScen ERA-Net COFUND program
  2. German Federal Ministry of Education and Research (BMBF Forderkennzeichen) [01LC11804A]
  3. Research Council of Norway [295442]
  4. National Science Foundation (NSF) [1852587]
  5. Natural Sciences and Engineering Research Council of Canada (NSERC) [523660-2018]

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The objective of this study is to assess the most appropriate method, indices, and growth stage for predicting groundnut yield in smallholder agricultural systems in northern Malawi. The results demonstrate that the random forest model and the R5 growth stage are the best approaches for predicting groundnut yield. The use of open-source remote sensing data allows for accurate yield estimation and facilitates agricultural and food security planning.
Crop yield is related to household food security and community resilience, especially in smallholder agricultural systems. As such, it is crucial to accurately estimate within-season yield in order to provide critical information for farm management and decision making. Therefore, the primary objective of this paper is to assess the most appropriate method, indices, and growth stage for predicting the groundnut yield in smallholder agricultural systems in northern Malawi. We have estimated the yield of groundnut in two smallholder farms using the observed yield and vegetation indices (VIs), which were derived from multitemporal PlanetScope satellite data. Simple linear, multiple linear (MLR), and random forest (RF) regressions were applied for the prediction. The leave-one-out cross-validation method was used to validate the models. The results showed that (i) of the modelling approaches, the RF model using the five most important variables (RF5) was the best approach for predicting the groundnut yield, with a coefficient of determination (R-2) of 0.96 and a root mean square error (RMSE) of 0.29 kg/ha, followed by the MLR model (R-2 = 0.84, RMSE = 0.84 kg/ha); in addition, (ii) the best within-season stage to accurately predict groundnut yield is during the R5/beginning seed stage. The RF5 model was used to estimate the yield for four different farms. The estimated yields were compared with the total reported yields from the farms. The results revealed that the RF5 model generally accurately estimated the groundnut yields, with the margins of error ranging between 0.85% and 11%. The errors are within the post-harvest loss margins in Malawi. The results indicate that the observed yield and VIs, which were derived from open-source remote sensing data, can be applied to estimate yield in order to facilitate farming and food security planning.

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