Predicting rice diseases across diverse agro-meteorological conditions using an artificial intelligence approach

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作者
Patil, Rutuja Rajendra [1 ]
Kumar, Sumit [1 ]
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[1] Symbiosis Institute of Technology, Symbiosis International (Deemed University), Pune,Maharashtra, India
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Activation function - Activation functions - Agro-meteorological parameter - Creative Commons - Disease forecasting - Forecasting models - Meteorological condition - Meteorological parameters - Plant disease - Plant disease prediction;
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摘要
With the aid of a plant disease forecasting model, the emergence of plant diseases in a given region can be predicted ahead of time. This makes it easier to take proactive steps to reduce losses before they occur. The proposed model attempts to find an association between agrometeorological parameters and the occurrence of the four types of rice diseases. Rice is the staple food of people in Maharashtra. The four major diseases that occur on rice crops are focused on this paper (namely Rice Blast, False Smut, Bacterial Blight and Brown Spot) as these diseases spread rapidly and lead to economic loss. This research paper demonstrates the usage of artificial neural network (ANN) to detect, classify and predict the occurrence of rice diseases based on diverse agro-meteorological conditions. The results were carried out on two cases of dataset split that is 70-30% and 80-20%. The various types of activation function (AF) such as sigmoid, tanH, ReLU and softmax are implemented and compared based on various evaluation metrics such as overall Accuracy, Precision, Recall and F1 score. It can be concluded that the softmax AF applied to 70-30% split of dataset gives the highest accuracy of 92.15% in rice disease prediction. © 2021. Patil and Kumar Distributed under Creative Commons CC-BY 4.0
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