基于深度学习的温室生产净光合作用预测

Y. Qu, A. Clausen, B. Jørgensen
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引用次数: 3

摘要

叶片的净光合作用量是影响植物生长的一个重要因素。因此,实时监测净光合作用对提高商品温室产品质量具有重要作用。净光合作用主要取决于三个环境参数,即光照水平、温度和二氧化碳浓度。然而,由于高度非线性关系,精确计算净光合作用是一项挑战。本文利用深度学习(DL)对这种关系进行建模,以便根据这三个输入预测净光合作用。首先,根据该问题的特点设计了深度神经网络(DNN)模型的体系结构,并考虑了三个激活函数对DNN模型的设计。其次,建立训练数据集,阐述了固定LR和指数衰减LR两种学习率调度方案;然后,为了选择DNN模型的最优超参数,分别进行了与激活函数和LR调度相关的超参数调优实验。最后,通过对训练速度和预测精度的综合评价,确定了具有ReLU激活函数和衰减LR的深度神经网络模型。该DNN模型可以在快速的训练收敛速度下实现非常高的预测精度,用于解决所提出的净光合作用预测问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Net Photosynthesis Prediction by Deep Learning for Commercial Greenhouse Production
The amount of net photosynthesis of leaves is a significate factor for the growth of plants. Therefore, monitoring the real-time net photosynthesis plays an essential role in improving the quality of productions in commercial greenhouses. Net photosynthesis mainly depends on three environmental parameters, that are light level, temperature and CO2 concentration. However, it is challenging to calculate accurate net photosynthesis due to the highly nonlinear relation. In this paper, Deep Learning (DL) is utilized to model this relationship in order to predict the net photosynthesis based on the three inputs. Firstly, the architecture of a Deep Neural Network (DNN) model is designed according to the features of this problem, and three activation functions are concerned for the DNN model design. Secondly, a training dataset is established, and two schedules of Learning Rate (LR), fixed LR and exponential decay LR, are elaborated. Then, to select the optimal hyperparameters for the DNN model, experiments of hyperparameters tuning related to activation functions and LR schedules are implemented, respectively. Finally, through a comprehensive evaluation of the training speed and the prediction accuracy, a DNN model that is with ReLU activation function and decay LR is determined. This DNN model can perform a dramatically high prediction accuracy in a fast training convergence speed for solving the proposed net photosynthesis prediction problem.
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