Abstract

An early and reliable estimation of crop yield is essential in quantitative and financial evaluation at the field level for determining strategic plans in agricultural commodities for import-export policies and doubling farmer’s incomes. Crop yield predictions are carried out to estimate higher crop yield through the use of machine learning algorithms which are one of the challenging issues in the agricultural sector. Due to this developing significance of crop yield prediction, this article provides an exhaustive review on the use of machine learning algorithms to predict crop yield with special emphasis on palm oil yield prediction. Initially, the current status of palm oil yield around the world is presented, along with a brief discussion on the overview of widely used features and prediction algorithms. Then, the critical evaluation of the state-of-the-art machine learning-based crop yield prediction, machine learning application in the palm oil industry and comparative analysis of related studies are presented. Consequently, a detailed study of the advantages and difficulties related to machine learning-based crop yield prediction and proper identification of current and future challenges to the agricultural industry is presented. The potential solutions are additionally prescribed in order to alleviate existing problems in crop yield prediction. Since one of the major objectives of this study is to explore the future perspectives of machine learning-based palm oil yield prediction, the areas including application of remote sensing, plant’s growth and disease recognition, mapping and tree counting, optimum features and algorithms have been broadly discussed. Finally, a prospective architecture of machine learning-based palm oil yield prediction has been proposed based on the critical evaluation of existing related studies. This technology will fulfill its promise by performing new research challenges in the analysis of crop yield prediction and the development of an extremely effective model for the prediction of palm oil yields with the most minimal computational difficulty.

Highlights

  • Agriculture is one of the main sectors of social concern since it provides a significant amount of food

  • This paper differentiates from various recent review works as it emphasizes on palm oil yield prediction using machine learning approaches

  • The findings of this study showed that the performance of support vector machine (SVM) was much better than that of the BPNN and random forest (RF)

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Summary

INTRODUCTION

Agriculture is one of the main sectors of social concern since it provides a significant amount of food. Chong et al [17] presented a comprehensive review on remote sensing application for palm oil cultivations, including tree counting, change detection, age estimation, pest and disease identification, AGB and carbon production estimation as well as yield prediction They have discovered the potential research gap and recommended possible solutions. 5) Expanding the areas of future research on machine learning based crop yield prediction as driven by proper identification of current and projected future technological challenges in the palm oil industry. This paper differentiates from various recent review works as it emphasizes on palm oil yield prediction using machine learning approaches. This is done by gathering the required information from the latest research works and conceptualizing directions for future research work.

ARTICLE SELECTION
FUNDAMENTALS ASPECTS OF CROP YIELD PREDICTION PROCESS
PALM OIL GROWTH MONITORING
Findings
CONCLUSION

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