Exploring the Feasibility of Deep Learning Models for Long-term Disease Prediction: A Case Study for Wheat Yellow Rust in England
Zhipeng Yuan, Yu Zhang, Gaoshan Bi, Po Yang

TL;DR
This study investigates the use of deep learning models, including neural networks and LSTMs, to predict wheat yellow rust outbreaks in England, demonstrating promising accuracy for long-term disease forecasting and management.
Contribution
It introduces a novel application of deep learning for long-term wheat disease prediction using weather and disease data in England.
Findings
Deep learning models achieved up to 83.65% accuracy in disease prediction.
Models effectively captured complex interactions influencing disease dynamics.
The approach offers a promising tool for proactive disease management.
Abstract
Wheat yellow rust, caused by the fungus Puccinia striiformis, is a critical disease affecting wheat crops across Britain, leading to significant yield losses and economic consequences. Given the rapid environmental changes and the evolving virulence of pathogens, there is a growing need for innovative approaches to predict and manage such diseases over the long term. This study explores the feasibility of using deep learning models to predict outbreaks of wheat yellow rust in British fields, offering a proactive approach to disease management. We construct a yellow rust dataset with historial weather information and disease indicator acrossing multiple regions in England. We employ two poweful deep learning models, including fully connected neural networks and long short-term memory to develop predictive models capable of recognizing patterns and predicting future disease outbreaks.The…
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Taxonomy
TopicsSmart Agriculture and AI · Food Supply Chain Traceability
