Advances in nutrient management modelling and nutrient concentration prediction for soilless culture systems

J. Son, T. Ahn, T. Moon
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引用次数: 1

Abstract

In closed-loop soilless culture systems (SCS), ion concentration and ionic balance are important factors to be considered for stable management of nutrient solutions. For maintaining appropriate ion concentration and ion balance, various techniques of nutrient analysis and prediction are required. Through nutrient management modelling, nutrient variations in the closed-loop soilless culture systems using nutrient replenishment methods can be better understood and predicted. Deep learning algorithms could be a methodology to predict ion concentrations using environments and growth data. A trained deep learning model has been found to accurately estimate ion concentration and balance in closed-loop SCS. Applications of theoretical modelling and artificial intelligence can thus be useful for the nutrient management of closed-loop SCS in greenhouses and vertical farms.
无土栽培系统养分管理模型和养分浓度预测研究进展
在闭环无土栽培系统(SCS)中,离子浓度和离子平衡是营养液稳定管理的重要因素。为了维持适当的离子浓度和离子平衡,需要各种养分分析和预测技术。通过养分管理模型,可以更好地了解和预测采用养分补充方法的闭环无土栽培系统的养分变化。深度学习算法可以成为一种利用环境和生长数据预测离子浓度的方法。一个经过训练的深度学习模型可以准确地估计闭环SCS中的离子浓度和平衡。因此,理论建模和人工智能的应用可用于温室和垂直农场的闭环SCS营养管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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