Crop yield prediction using machine learning: A systematic literature review

被引:749
作者
van Klompenburg, Thomas [1 ]
Kassahun, Ayalew [1 ]
Catal, Cagatay [2 ]
机构
[1] Wageningen Univ & Res, Informat Technol Grp, Wageningen, Netherlands
[2] Bahcesehir Univ, Dept Comp Engn, Istanbul, Turkey
关键词
Crop yield prediction; Decision support system; Systematic literature review; Machine learning; Deep learning; NEURAL-NETWORKS; WHEAT YIELD; FORECAST; PROVINCE; MODEL;
D O I
10.1016/j.compag.2020.105709
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
Machine learning is an important decision support tool for crop yield prediction, including supporting decisions on what crops to grow and what to do during the growing season of the crops. Several machine learning algorithms have been applied to support crop yield prediction research. In this study, we performed a Systematic Literature Review (SLR) to extract and synthesize the algorithms and features that have been used in crop yield prediction studies. Based on our search criteria, we retrieved 567 relevant studies from six electronic databases, of which we have selected 50 studies for further analysis using inclusion and exclusion criteria. We investigated these selected studies carefully, analyzed the methods and features used, and provided suggestions for further research. According to our analysis, the most used features are temperature, rainfall, and soil type, and the most applied algorithm is Artificial Neural Networks in these models. After this observation based on the analysis of machine learning-based 50 papers, we performed an additional search in electronic databases to identify deep learning-based studies, reached 30 deep learning-based papers, and extracted the applied deep learning algorithms. According to this additional analysis, Convolutional Neural Networks (CNN) is the most widely used deep learning algorithm in these studies, and the other widely used deep learning algorithms are Long-Short Term Memory (LSTM) and Deep Neural Networks (DNN).
引用
收藏
页数:18
相关论文
共 103 条
[11]  
Baldi P, 2012, P ICML WORKSH UNS TR, P37
[12]  
Baral S., 2011, YIELD PREDICTION USI, P315, DOI [10.1007/978-3-642-19542-6_57., DOI 10.1007/978-3-642-19542-6_57]
[13]  
Beulah R., 2019, Int J Comput Sci Eng, V7, P738, DOI 10.26438/ijcse/v7i1.738744
[14]   Wheat crop yield prediction using new activation functions in neural network [J].
Bhojani, Shital H. ;
Bhatt, Nirav .
NEURAL COMPUTING & APPLICATIONS, 2020, 32 (17) :13941-13951
[15]  
Bose P., SPIKING NEURAL NETWO
[16]  
Brownlee J, 2016, Deep learning with Python: develop deep learning models on Theano and TensorFlow using Keras: Machine Learning Mastery
[17]  
Brownlee J., 2017, LONG SHORT TERM MEMO
[18]  
Brownlee J, 2019, A tour of machine learning algorithms
[19]  
Çakir Y, 2014, INT CONF AGRO-GEOINF, P212
[20]   Sugarcane Yield Grade Prediction Using Random Forest with Forward Feature Selection and Hyper-parameter Tuning [J].
Charoen-Ung, Phusanisa ;
Mittrapiyanuruk, Pradit .
RECENT ADVANCES IN INFORMATION AND COMMUNICATION TECHNOLOGY 2018, 2019, 769 :33-42