Journal article

Predicting China’s Maize Yield Using Multi-Source Datasets and Machine Learning Algorithms

L Miao, Y Zou, X Cui, GR Kattel, Y Shang, J Zhu

Remote Sensing | MDPI | Published : 2024

Open access

Abstract

A timely and accurately predicted grain yield can ensure regional and global food security. The scientific community is gradually advancing the prediction of regional-scale maize yield. However, the combination of various datasets while predicting the regional-scale maize yield using simple and accurate methods is still relatively rare. Here, we have used multi-source datasets (climate dataset, satellite dataset, and soil dataset), lasso algorithm, and machine learning methods (random forest, support vector, extreme gradient boosting, BP neural network, long short-term memory network, and K-nearest neighbor regression) to predict China’s county-level maize yield. The use of multi-sourced dat..

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University of Melbourne Researchers