Moon Taewon, Ahn Tae In, Son Jung Eek
Department of Plant Science, Research Institute of Agriculture and Life Sciences, Seoul National University, Seoul, South Korea.
Front Plant Sci. 2018 Jun 21;9:859. doi: 10.3389/fpls.2018.00859. eCollection 2018.
In existing closed-loop soilless cultures, nutrient solutions are controlled by the electrical conductivity (EC) of the solution. However, the EC of nutrient solutions is affected by both growth environments and crop growth, so it is hard to predict the EC of nutrient solution. The objective of this study was to predict the EC of root-zone nutrient solutions in closed-loop soilless cultures using recurrent neural network (RNN). In a test greenhouse with sweet peppers ( L.), data were measured every 10 s from October 15 to December 31, 2014. Mean values for every hour were analyzed. Validation accuracy () of a single-layer long short-term memory (LSTM) was 0.92 and root-mean-square error (RMSE) was 0.07, which were the best results among the different RNNs. The trained LSTM predicted the substrate EC accurately at all ranges. Test accuracy () was 0.72 and RMSE was 0.08, which were lower than values for the validation. Deep learning algorithms were more accurate when more data were added for training. The addition of other environmental factors or plant growth data would improve model robustness. A trained LSTM can control the nutrient solutions in closed-loop soilless cultures based on predicted future EC. Therefore, the algorithm can make a planned management of nutrient solutions possible, reducing resource waste.
在现有的闭环无土栽培中,营养液由溶液的电导率(EC)控制。然而,营养液的电导率受生长环境和作物生长的影响,因此难以预测营养液的电导率。本研究的目的是使用递归神经网络(RNN)预测闭环无土栽培中根区营养液的电导率。在一个种植甜椒(L.)的试验温室中,于2014年10月15日至12月31日每隔10秒测量一次数据。分析了每小时的平均值。单层长短期记忆(LSTM)的验证准确率()为0.92,均方根误差(RMSE)为0.07,这是不同RNN中最好的结果。训练后的LSTM在所有范围内都能准确预测基质电导率。测试准确率()为0.72,RMSE为0.08,低于验证值。当添加更多数据进行训练时,深度学习算法更准确。添加其他环境因素或植物生长数据将提高模型的稳健性。训练后的LSTM可以根据预测的未来电导率控制闭环无土栽培中的营养液。因此,该算法可以实现营养液的计划性管理,减少资源浪费。