Abstract

Wheat is one of the main crops in China, and crop yield prediction is important for regional trade and national food security. There are increasing concerns with respect to how to integrate multi-source data and employ machine learning techniques to establish a simple, timely, and accurate crop yield prediction model at an administrative unit. Many previous studies were mainly focused on the whole crop growth period through expensive manual surveys, remote sensing, or climate data. However, the effect of selecting different time window on yield prediction was still unknown. Thus, we separated the whole growth period into four time windows and assessed their corresponding predictive ability by taking the major winter wheat production regions of China as an example in the study. Firstly we developed a modeling framework to integrate climate data, remote sensing data and soil data to predict winter wheat yield based on the Google Earth Engine (GEE) platform. The results show that the models can accurately predict yield 1~2 months before the harvesting dates at the county level in China with an R2 > 0.75 and yield error less than 10%. Support vector machine (SVM), Gaussian process regression (GPR), and random forest (RF) represent the top three best methods for predicting yields among the eight typical machine learning models tested in this study. In addition, we also found that different agricultural zones and temporal training settings affect prediction accuracy. The three models perform better as more winter wheat growing season information becomes available. Our findings highlight a potentially powerful tool to predict yield using multiple-source data and machine learning in other regions and for crops.

Highlights

  • Wheat (Triticum aestivum L.), as one of the three top grains and one of the most productive cereals in the 21st century [1], provides the most calories and protein for the global food supply [2]

  • random forest (RF), Gaussian process regression (GPR), and Support vector machine (SVM) are more suitable for winter wheat yield pprerdedicitcitoinonththananotohthereralaglogroirtihthmms sininCChhinina.aM

  • We predicted winter wheat yield at the county scale based on multi-source data and multiple machine learning models

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Summary

Introduction

Wheat (Triticum aestivum L.), as one of the three top grains (wheat, rice, and corn) and one of the most productive cereals in the 21st century [1], provides the most calories and protein for the global food supply [2]. The accurate prediction of crop yields in advance plays an important role in the grain circulation market, famine prevention, and food security [3]. China is the world’s top wheat producer, accounting for 11.26% of the world’s total wheat acreage and 17.98% of the world’s total production [5]. For winter wheat, China’s production assumes an absolutely dominant role, with nearly 85% of total summer grain production [6]. Accurately and timely estimating winter wheat yield in China is highly required, considering its significant influence on agricultural development and national food security, or even global scale

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