Jawad Muhammad, Wahid Fazli, Ali Sikandar, Ma Yingliang, Alkhyyat Ahmed, Khan Jawad, Lee Youngmoon
Department of Information Technology, The University of Haripur, Haripur, 22620, Pakistan.
College of Science and Engineering, School of Computing, University of Derby, Derby, DE22 3AW, UK.
Sci Rep. 2025 Jan 11;15(1):1752. doi: 10.1038/s41598-024-84141-5.
Agriculture is an essential component of human sustenance in this world. These days, with a growing population, we must significantly increase agricultural productivity to meet demand. Agriculture moved toward technologies as a result of the demand for higher yields with less resources. Increasing awareness of the significance and influence of agricultural practices in global climate change has made the use of energy-efficient innovations a vital aspect of the agriculture sector. The use of greenhouses to provide controlled environments that encourage effective plant growth is one of the current associated approaches. If not properly maintained, the energy used to run the greenhouses' chillers, heaters, humidifiers, carbon dioxide (CO₂) generators, and carbon emissions becomes expensive. The goal of this research is to create a sustainable greenhouse model while achieving the best plant growth requirements with minimal use of energy. In order to achieve the lowest possible amount of energy consumption, the optimization model considered temperature, humidity, CO₂ levels, and sunlight as essential parameters in the environment. The Artificial Bee Colony (ABC) optimization technique was utilized for setting the environmental parameters for plant growth, considered for the suggested system. The system's inputs were plant-preferred factors, and plant comfort was achieved by applying ABC to boost the parameters' efficiency. A fuzzy controller was utilized to regulate different devices, including humidifiers, heaters, chillers, and CO₂ generators, by entering the introduced values. The overall efficacy of the fuzzy controllers that switch On/Off the actuators was obtained by minimizing the error between the best estimates of environmental factors and the ABC optimized values. Additionally, the suggested method was contrasted with other effective algorithms, such as Genetic Algorithm (GA), Firefly Algorithm (FA), and Ant Colony Optimization (ACO). Based on the results of the comparison analysis between the ABC algorithm and current practices, present procedures do not minimize the fluctuations in the inaccuracy between the target and actual environmental parameters, which is a necessary step towards increasing energy efficiency. The suggested method used 162.19 kWh for temperature control, 84.65405 kWh for Humidity, 131.2013 kWh for Sunlight, and 603.55208 kWh for CO₂ management, indicating the maximum energy efficiency. ACO needed 172.2621 kWh, 88.269 kWh, 175.7127 kWh, and 713.2125 kWh, in contrast to FA 169.7983 kWh, 86.04496 kWh, 155.8442 kWh, and 743.7986 kWh. Temperature, Humidity, Sunlight, and CO₂ were measured by GA at 164.1609 kWh, 86.19566 kWh, 174.6429 kWh, and 734.9514 kWh, respectively. In terms of Plant comfort, the suggested approach also outperformed 0.986770848 ACO (0.944043), FA (0.949832), and GA (0.946076). It is important to note that the research being done has the potential to minimize operating costs and maximize the amount of energy needed for plant growth, thereby creating a model for sustainable greenhouse agriculture.
农业是人类在这个世界上赖以生存的重要组成部分。如今,随着人口的增长,我们必须大幅提高农业生产力以满足需求。由于需要以更少的资源实现更高的产量,农业开始走向技术化。人们越来越意识到农业活动在全球气候变化中的重要性和影响,这使得采用节能创新技术成为农业部门的一个关键方面。利用温室提供可控环境以促进植物有效生长就是当前相关的方法之一。如果维护不当,用于运行温室冷却器、加热器、加湿器、二氧化碳(CO₂)发生器的能源以及碳排放成本会变得很高。本研究的目标是创建一个可持续的温室模型,同时以最少的能源消耗实现最佳的植物生长条件。为了实现尽可能低的能源消耗,优化模型将温度、湿度、CO₂水平和阳光视为环境中的关键参数。人工蜂群(ABC)优化技术被用于为所建议系统设定植物生长的环境参数。系统的输入是植物偏好因素,通过应用ABC提高参数效率来实现植物的舒适生长环境。利用模糊控制器通过输入设定值来调节包括加湿器、加热器、冷却器和CO₂发生器在内的不同设备。通过最小化环境因素的最佳估计值与ABC优化值之间的误差,获得了控制执行器开启/关闭的模糊控制器的整体效能。此外,将所建议的方法与其他有效算法进行了对比,如遗传算法(GA)、萤火虫算法(FA)和蚁群优化算法(ACO)。基于ABC算法与当前实践的对比分析结果,当前的方法未能将目标环境参数与实际环境参数之间的误差波动降至最低,而这是提高能源效率的必要步骤。所建议的方法用于温度控制的能耗为162.19千瓦时,湿度控制为84.65405千瓦时,阳光控制为131.2013千瓦时,CO₂管理为603.55208千瓦时,显示出最高的能源效率。相比之下,ACO分别需要172.2621千瓦时、88.269千瓦时、175.7127千瓦时和713.2125千瓦时,FA分别需要169.7983千瓦时、86.04496千瓦时、155.8442千瓦时和743.7986千瓦时。GA测量的温度、湿度、阳光和CO₂能耗分别为164.1609千瓦时、86.19566千瓦时、174.6429千瓦时和734.9514千瓦时。在植物舒适度方面,所建议的方法也优于ACO(0.944043)、FA(0.949832)和GA(0.946076)的0.986770848。需要注意的是,正在进行的这项研究有可能降低运营成本,并最大限度地提高植物生长所需的能源量,从而创建一个可持续温室农业的模型。