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Deep Neural Network Based Control Algorithm for Maintaining Electrical Conductivity and Water Content of Substrate in Closed-Soilless Cultivation

机译:基于深度神经网络的控制算法,用于维持闭合栽培衬底电导率和水含量

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One of the most commonly used soilless techniques is a substrate-based cultivation method which uses a substrate containing nutrient solution continuously fed to the root of crop. However, since the crop roots are strongly influenced by various substrate properties, such as water content, electrical conductivity EC (electrical conductivity) and temperature, the substrate status needs to be accurately monitoredprior to optimal nutrient replenishment and irrigation. The objectives of this research were1) to suggest a feedback-neural network (FBNN) model that predict environmental changes in rockwool substrates such as water content and EC, and 2) to apply a reinforcement learning model for irrigation management with tomato cultivation in greenhouse.The FBNN model includes an environmental prediction and an irrigation control optimization model by using a modified feedback cost function. During the network related operations, the calculated cost of output layer is again feed back to the additional layer at each optimization step. The reinforcement learning was designed to find the best combination of the EC levels and the specific volumes of nutrient solution to be injected. In order to apply these control models, we built an environmental monitoring system based on Raspberry Pi 3 board, and the algorithms were installed on the board to determine the behavior of the actuators to adjust the conditions of the injected nutrient solution. Finally, the performance of each developed models are comparedwith a commercial nutrient controller. The results show that deep neural network based models are successfully applied to the fertigation system, and the performance to maintain EC and water content of the root zone section was better than the conventional controller.
机译:其中一种最常用的无土技术是一种基于基的培养方法,其使用含有营养溶液的衬底连续送入作物的根部。然而,由于作物根部受到各种基材性质的强烈影响,例如含水量,导电态(导电性)和温度,因此需要准确地监测基板状态以最佳的营养补充和灌溉。这项研究的目的were1)表明,预测岩棉基材如水分含量和EC,以及2环境变化)反馈神经网络(FBNN)模型在温室申请灌溉管理的强化学习模型番茄栽培。 FBNN模型通过使用修改的反馈成本函数包括环境预测和灌溉控制优化模型。在网络相关操作期间,计算出的输出层的成本再次在每个优化步骤中返回到附加层。钢筋学习旨在找到EC水平的最佳组合和要注入的营养液的特定体积。为了应用这些控制模型,我们建立了基于Raspberry PI 3板的环境监测系统,并且在电路板上安装了算法以确定致动器的行为来调节注射营养溶液的条件。最后,将每个开发模型的性能与商业营养控制器进行比较。结果表明,基于深度神经网络的模型成功应用于灌溉系统,维护根区截面EC和含水量的性能优于传统控制器。

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