Abstract

Palm oil has become one of the most consumed vegetable oils in the world, and it is a key element in profitable global value chains. In Costa Rica, oil palm cultivation is one of the three crops with the largest occupied agricultural area. The objective of this study was to explain and predict yield in safe time lags for production management by using free-access satellite images. To this end, machine learning methods were performed to a 20-year data set of an oil palm plantation located in the Central Pacific Region of Costa Rica and the corresponding vegetation indices obtained from LANDSAT satellite images. Since the best correlations corresponded to a one-year time lag, the predictive models Random Forest (RF), Least Absolute Shrinkage and Selection Operator (LASSO), Extreme Gradient Boosting (XGBoost), Recursive Partitioning and Regression Trees (RPART), and Neural Network (NN) were built for a Time-lag 1. These models were applied to all genetic material and to the predominant variety (AVROS) separately. While NN showed the best performance for multispecies information (r2 = 0.8139, NSE = 0.8131, RMSE = 0.3437, MAE = 0.2605), RF showed a better fit for AVROS (r2 = 0.8214, NSE = 0.8020, RMSE = 0.3452, MAE = 0.2669). The most relevant vegetation indices (NDMI, MSI) are related to water in the plant. The study also determined that data distribution must be considered for the prediction and evaluation of the oil palm yield in the area under study. The estimation methods of this study provide information on the identification of important variables (NDMI) to characterize palm oil yield. Additionally, it generates a scenario with acceptable uncertainties on the yield forecast one year in advance. This information is of direct interest to the oil palm industry.

Highlights

  • IntroductionIn order to tackle the deficiencies of these methods, appropriate monthly yield forecast by means of artificial intelligence models have been created

  • The most important vegetation indices (VIs) obtained from the Landsat 5, 7 and 8 satellite images are related to water in the plant

  • The 75th and 25th percentiles of these VIs improve the performance of the models compared to other studies where they were not considered (Table 5)

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Summary

Introduction

In order to tackle the deficiencies of these methods, appropriate monthly yield forecast by means of artificial intelligence models have been created. These models describe the quantitative relation between meteorological variables with time lags and information related to the fresh fruit bunch, considering the yield of young-mature oil palm for the first six years of harvest [6]. In agricultural applications in particular, density maps allow a more advanced analysis than that of crop land coverage binary maps. This is important for oil palm plantations, where the distance between trees is known to correlate with production yield

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