A deep learning framework for prediction of crop yield in Australia under the impact of climate change

被引:0
作者
Demirhan, Haydar [1 ]
机构
[1] RMIT Univ, Sch Sci, Math Sci Discipline, Melbourne, Vic, Australia
来源
INFORMATION PROCESSING IN AGRICULTURE | 2025年 / 12卷 / 01期
关键词
Cereal grains; Crop yield; Crop production; Deep learning; Temperature anomalies; Climate change; RICE;
D O I
10.1016/j.inpa.2024.04.004
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Accurate prediction of crop yields is essential to ensure food security. In this study, a new deep networks framework is developed to predict crop yields in Australia, considering the impact of climate fertilizer use, and crop area. It is implemented for oats, corn, rice, and wheat crops, and its forecasting performance is benchmarked against five statistical and machine learning methods. All the software for the implementation of the proposed framework are freely available. The proposed framework shows highest forecasting performance for all the considered crop types. It provides 23%, 38%, 39%, and 40% average mean absolute error than the benchmark methods for oat, corn, rice, and wheat crops, respectively. The reductions in average root mean squared error are 19%, 25%, 37%, and 29% over the benchmark methods. Then, it is used to predict yields of the considered crops in Australia towards 2025 under six different change scenarios. It is observed that although climate change has some boosting impact on crop yield, not sustainable to meet the demand. However, it is possible to keep crop yields rising while mitigating change.
引用
收藏
页码:125 / 138
页数:14
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