Zhang Ning, Tan Qinyue, Song Wancong, Li Qiuying
College of Water Resources and Architectural Engineering, Northwest A & F University, Yangling, Shaanxi Province, 712100, PR China.
College of Optics and Electronic Technology, China JILIANG University, Hangzhou, Zhejiang Province, 310018, PR China.
Heliyon. 2024 Jun 19;10(12):e33036. doi: 10.1016/j.heliyon.2024.e33036. eCollection 2024 Jun 30.
The greenhouse environment represents a dynamic, nonlinear system characterized by hysteresis and is influenced by a myriad of interacting environmental parameters, posing a complex multi-variable optimization challenge. This study proposes a multi-objective adaptive annealing genetic algorithm to optimize above-ground environmental factors in greenhouses, addressing the challenges of variable environmental conditions and extensive heating and humidity infrastructure. Initially, after analyzing the multi-objective model of greenhouse above-ground environmental factors, including temperature, relative humidity, and CO concentration, a comprehensive multi-objective, multi-constraint model was developed to encapsulate these factors in greenhouse environments. Subsequently, the model optimization incorporated multi-parameter coding of decision variables, a fitness function, and an annealing dynamic penalty factor. Validation conducted at Yangling Agricultural Demonstration Park revealed that the application of multi-objective adaptive annealing genetic algorithms (schemes 1 and 2) significantly outperformed the single-objective genetic algorithm (scheme 3) and the traditional genetic algorithm (scheme 4). Specifically, the improvements included a reduction in average temperature rise by 2.64 °C and 5.29 °C for schemes 1 and 2, respectively, equating to 20 % and 34 % decreases. Additionally, average humidification reductions of 2.39 % and 3.9 % were observed, alongside decreases in the total lengths of heating and humidification pipes by up to 2.99 km and 0.443 km, respectively, with a maximum reduction of 14 % in heating pipes. The integration of an annealing dynamic penalty factor enhanced the adaptive climbing ability of schemes 1 and 2, improving static stability and robustness. Furthermore, the number of iterations required to achieve convergence was reduced by approximately 170-240 times compared to schemes 3 and 4. This reduction in iterations also resulted in a significant decrease in running time by 5-13 min, corresponding to time savings of 31 %-56 %, thereby achieving further optimization.
温室环境是一个动态的非线性系统,具有滞后特性,受众多相互作用的环境参数影响,构成了一个复杂的多变量优化挑战。本研究提出一种多目标自适应退火遗传算法,用于优化温室的地上环境因素,应对环境条件多变以及加热和加湿基础设施庞大的挑战。最初,在分析温室地上环境因素的多目标模型(包括温度、相对湿度和二氧化碳浓度)之后,开发了一个综合的多目标、多约束模型,以将这些因素纳入温室环境。随后,模型优化纳入了决策变量的多参数编码、适应度函数和退火动态惩罚因子。在杨凌农业示范园进行的验证表明,多目标自适应退火遗传算法(方案1和方案2)的应用明显优于单目标遗传算法(方案3)和传统遗传算法(方案4)。具体而言,改进包括方案1和方案2的平均温度上升分别降低2.64°C和5.29°C,相当于分别降低20%和34%。此外,观察到平均加湿量分别减少2.39%和3.9%,同时加热和加湿管道的总长度分别最多减少2.99公里和0.443公里,加热管道最多减少14%。退火动态惩罚因子的整合增强了方案1和方案2的自适应爬坡能力,提高了静态稳定性和鲁棒性。此外,与方案3和方案4相比,实现收敛所需的迭代次数减少了约170 - 240倍。迭代次数的减少还导致运行时间显著减少5 - 13分钟,节省时间31% - 56%,从而实现了进一步优化。