Time series prediction of insect pests in tea gardens.
Xuanyu ChenMd Mehedi HassanJinghao YuAfang ZhuZhang HanPeihuan HeQuansheng ChenHuanhuan LiQin OuyangPublished in: Journal of the science of food and agriculture (2024)
These findings suggest that different prediction lengths influence model performance in tea garden pest time series prediction. Deep learning could be applied satisfactorily to predict time series of insect pests in tea gardens based on LSTM-Attention. Thus, this study provides a theoretical basis for the research on the time series of pest and disease infestations in tea plants. © 2024 Society of Chemical Industry.