Oil palm yield prediction across blocks from multi-source data using machine learning and deep learning

被引:0
|
作者
Yuhao Ang
Helmi Zulhaidi Mohd Shafri
Yang Ping Lee
Shahrul Azman Bakar
Haryati Abidin
Mohd Umar Ubaydah Mohd Junaidi
Shaiful Jahari Hashim
Nik Norasma Che’Ya
Mohd Roshdi Hassan
Hwee San Lim
Rosni Abdullah
Yusri Yusup
Syahidah Akmal Muhammad
Sin Yin Teh
Mohd Na’aim Samad
机构
[1] Universiti Putra Malaysia (UPM),Department of Civil Engineering and Geospatial Information Science Research Centre (GISRC), Faculty of Engineering
[2] FGV Innovation Centre,Geoinformatics Unit, FGV R&D Sdn Bhd
[3] FGV Agri Services Sdn Bhd,Department of Computer and Communication Systems Engineering, Faculty of Engineering
[4] Universiti Putra Malaysia,Department of Agriculture Technology, Faculty of Agriculture
[5] Universiti Putra Malaysia,Department of Mechanical and Manufacturing Engineering, Faculty of Engineering
[6] Universiti Putra Malaysia,School of Physics
[7] Universiti Sains Malaysia (USM),School of Computer Sciences
[8] Universiti Sains Malaysia (USM),School of Industrial Technology
[9] Universiti Sains Malaysia (USM),School of Management
[10] Universiti Sains Malaysia (USM),undefined
来源
Earth Science Informatics | 2022年 / 15卷
关键词
Oil palm yields; Multi-source data; Machine learning; Deep learning;
D O I
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中图分类号
学科分类号
摘要
Crop yield estimates are affected by various factors including weather, nutrients and management practices. Predicting yields on a large scale in a timely and accurate manner by considering these factors is essential for preventing climate risk and ensuring food security, particularly in the light of climate change and the escalation of extreme climatic events. In this study, integrating multi-source data (i.e. satellite-derived vegetation indices (VIs), satellite-derived climatic variables (i.e. land surface temperature (LST) and rainfall precipitation, weather station and field-surveys), we built one multiple linear regression (MLR), three machine learning (XGBoost, support vector regression, and random forest) and one deep learning (deep neural network) models to predict oil palm yield at block-level within the oil palm plantation. Moreover, time-series moving average and backward elimination feature selection technique were implemented at the pre-processing stage. The yield prediction models were developed and tested using MLR, XGBoost, support vector regression (SVR), random forest (RF) and deep neural network (DNN) algorithms. Their model performances were then compared using evaluation metrics and generated the final spatial prediction map based on the best performance. DNN achieved the best model performances for both selected (R2 = 0.91; RMSE = 2.92 t ha− 1; MAE = 2.56 t ha− 1 and MAPE = 0.09 t ha− 1) and full predictors (R2 = 0.76; RMSE of 3.03 t ha− 1; MAE of 2.88 t ha− 1; MAPE of 0.10 t ha− 1). In addition, advanced ensemble machine learning (ML) techniques such as XGBoost may be utilised as a supplementary for oil palm yield prediction at the block level. Among them, MLR recorded the lowest performance. By using backward elimination to identify the most significant predictors, the performance of all models was improved by 5–26% for R2, and that decreased by 3–31% for RMSE, 7–34% for MAE, and 1–15% for MAPE. After backward elimination, the DNN achieved the highest prediction accuracy among the other models, with a 14% increase in R-squared, a 11% decrease in RMSE, a 32% decrease in MAE and a 1% decrease in MAPE. Our study successfully developed efficient and accurate yield prediction models for timely predicting oil palm yield over a large area by integrating data from multiple sources. These would be useful for plantation management estimating oil palm yields to speed up the decision-making process for sustainable production.
引用
收藏
页码:2349 / 2367
页数:18
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