Early Prediction of Crop Yield Using Machine Learning Techniques
Author:
Publisher
Springer Nature Singapore
Link
https://link.springer.com/content/pdf/10.1007/978-981-99-9707-7_26
Reference18 articles.
1. Kumar R, Singh MP, Kumar P, Singh JP (2015) Crop selection method to maximize crop yield rate using machine learning technique. In: Journal of international conference on smart technologies and management for computing, communication, controls, energy and materials (ICSTM). IEEE, pp 138–145
2. Jones AD, Ngure FM, Pelto G, Young SL (2013) What are we assessing when we measure food security? A compendium and review of current metrics. J Adv Nutr 4(5):481–505
3. Ogutu GE, Franssen WH, Supit I, Omondi P, Hutjes RW (2018) Probabilistic maize yield prediction over East Africa using dynamic ensemble seasonal climate forecasts. J Agricult For Meteorol 250:243–261
4. Holzman ME, Carmona F, Rivas R, Niclòs R (2018) Early assessment of crop yield from remotely sensed water stress and solar radiation data. ISPRS J Photogram Remote Sens 145:297–308
5. Singh A, Ganapathysubramanian B, Singh AK, Sarkar S (2016) Machine learning for high-throughput stress phenotyping in plants. J Trends Plant Sci 21(2):110–124
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