Chen Shuailiang, Liu Aolong, Tang Fei, Hou Pei, Lu Yanli, Yuan Pei
College New Energy, Zhengzhou University of Light Industry, Zhengzhou 450002, China.
Sensors (Basel). 2025 Feb 25;25(5):1388. doi: 10.3390/s25051388.
As crucial sites for optimizing crop growth conditions, greenhouses have gained increasing favor among scholars due to their potential to significantly enhance food production. Greenhouse control involves regulating environmental parameters such as temperature, humidity, light, and CO concentration to ensure an optimal growth environment for crops while conserving energy. This paper provides an overview of various strategies for controlling greenhouse environments, encompassing structural control, environmental parameter management, and control algorithms, and points out that the integration of artificial neural networks with various optimization algorithms is a future trend. Additionally, it delves into the exploration of greenhouse microclimate models and crop growth models, noting that current models focus on some of the internal environmental parameters and that the models rely on empirical parameters. Therefore, multi-scale coupling of greenhouse models is the way forward. Furthermore, it provides insights into how to achieve sustainable energy use in greenhouses, and the application of digital twin technology in greenhouses is promising.
作为优化作物生长条件的关键场所,温室因其显著提高粮食产量的潜力而越来越受到学者们的青睐。温室控制包括调节温度、湿度、光照和二氧化碳浓度等环境参数,以确保作物的最佳生长环境,同时节约能源。本文概述了控制温室环境的各种策略,包括结构控制、环境参数管理和控制算法,并指出将人工神经网络与各种优化算法相结合是未来的发展趋势。此外,本文深入探讨了温室小气候模型和作物生长模型,指出当前模型侧重于一些内部环境参数,且模型依赖于经验参数。因此,温室模型的多尺度耦合是未来的发展方向。此外,本文还介绍了如何在温室中实现可持续能源利用,数字孪生技术在温室中的应用前景广阔。