外文摘要:Compared with open-field cultivation, greenhouses can provide favorable conditions for crops to grow through environmental control. The prediction of greenhouse microclimates is a way to reduce environmental monitoring costs. This study used several recurrent neural network models, including long short-term memory (LSTM), gated recurrent unit, and bi-directional LSTM, with varying numbers of hidden layers and units, to establish a temperature forecasting model for a plastic greenhouse. To assess the generalizability of the proposed model, the most accurate forecasting model was used to predict the temperature in a greenhouse with different specifications. During a test period of four months, the best proposed model's R2, MAPE, and RMSE values were 0.962, 3.216%, and 1.196 degrees C, respectively. Subsequently, the outputs of the temperature forecasting model were used to calculate growing degree days (GDDs), and the predicted GDDs were used as an input variable for the sigmoid growth models to simulate the leaf area index, fresh fruit weight, and aboveground dry matter of tomatoes. The R2 values of the growth model for the three growth traits were all higher than 0.80. Moreover, the fitted values and the parameter estimates of the growth models were similar, irrespective of whether the observed GDD (calculated using the actual observed data) or the predicted GDD (calculated using the temperature forecasting model output) was used. These results indicated that the proposed temperature forecasting model could accurately predict the temperature changes inside a greenhouse and could subsequently be used for the growth prediction of greenhouse tomatoes.
外文关键词:Greenhouse;Tomato;recurrent neural network;temperature forecasting;sigmoid growth model
作者:Lin, Yi-Shan;Fang, Shih-Lun;Kang, Le;Chen, Chu-Chung;Yao, Min-Hwi;Kuo, Bo-Jein
作者单位:Natl Chung Hsing Univ;Agr Res Inst Taiwan;Smart Sustainable New Agr Res Ctr SMARTer
期刊名称:HORTICULTURAE
期刊影响因子:0.0
出版年份:2024
出版刊次:10(3)
原文传递申请:江苏省科技资源(工程技术文献)统筹服务平台