2020
DOI: 10.1109/access.2020.2992480
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Crop Yield Prediction Using Deep Reinforcement Learning Model for Sustainable Agrarian Applications

Abstract: Predicting crop yield based on the environmental, soil, water and crop parameters has been a potential research topic. Deep-learning-based models are broadly used to extract significant crop features for prediction. Though these methods could resolve the yield prediction problem there exist the following inadequacies: Unable to create a direct non-linear or linear mapping between the raw data and crop yield values; and the performance of those models highly relies on the quality of the extracted features. Deep… Show more

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Cited by 235 publications
(83 citation statements)
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“…RNN was utilized as a DLM, whereas; Q-learning algorithm served the purpose of the RL algorithm. The proposed model excelled at the other DDMs in the training and testing periods [35]. Park et al [36] applied RL based on Deep Q-Network to select a similar day in the short-term load forecasting by deploying a backpropagation neural network.…”
Section: Introductionmentioning
confidence: 96%
See 3 more Smart Citations
“…RNN was utilized as a DLM, whereas; Q-learning algorithm served the purpose of the RL algorithm. The proposed model excelled at the other DDMs in the training and testing periods [35]. Park et al [36] applied RL based on Deep Q-Network to select a similar day in the short-term load forecasting by deploying a backpropagation neural network.…”
Section: Introductionmentioning
confidence: 96%
“…The action performed determines the reward of the agent gained by the environment. The machine is regarded as an agent, whereas the surroundings play the role of the environment [35].…”
Section: Introductionmentioning
confidence: 99%
See 2 more Smart Citations
“…These ML approaches are increasingly applied in different subject areas to solve complex problems, often those with many factors involved, to which agriculture is no exception. In fact, ML is used in a variety of contexts and all the three main categories are now applicable (Liakos et al, 2018;Elavarasan and Vincent, 2020). Recently, Liakos et al (2018) reviewed the ML approach in agriculture, highlighting that ML models had been applied in the multi-disciplinary agri-technologies domain for crop management (61%), yield prediction (20%), and disease detection (22%), but never accounting specifically for mycotoxins' cooccurrence.…”
Section: Introductionmentioning
confidence: 99%