College of Computer Science & Technology, Zhejiang University of Technology, Hangzhou, P.R. China.
Institut Agro, University Angers, Angers, France.
PLoS One. 2020 Dec 17;15(12):e0243717. doi: 10.1371/journal.pone.0243717. eCollection 2020.
How to increase crop yield is the most important issue in agricultural production. Many studies have been devoted to optimizing spatial distribution of crops, to improve light interception and increase photosynthetic assimilation. However, finding an optimal solution based on field experiments is almost impossible since the large number of combinations of factors that are related, and the cost in terms of finances and time are prohibitive. A new optimization strategy was proposed in this study, integrating a Functional-Structural Model of rice with a workflow based on a Mixed Particle Swarm Optimization (MPSO) algorithm. The 3D modelling platform GroIMP was used to implement the model and optimization workflow. MPSO is a new Particle Swarm Optimization-based algorithm with multistage disturbances, which has improved abilities to get rid of local optima and to explore solution space. Spacing between plants was used as optimization target in the first example. An optimal plant spacing was obtained within the model framework of current environmental settings together with the functional and structural modules. Simulation results indicate that the optimized plant spacing could increase rice yield, and that the optimization results remain stable.
如何提高作物产量是农业生产中最重要的问题。许多研究致力于优化作物的空间分布,以提高光截获率并增加光合作用。然而,基于田间试验找到最佳解决方案几乎是不可能的,因为相关因素的组合数量众多,而且在财务和时间方面的成本是巨大的。本研究提出了一种新的优化策略,将水稻功能-结构模型与基于混合粒子群优化(MPSO)算法的工作流程相结合。3D 建模平台 GroIMP 用于实现模型和优化工作流程。MPSO 是一种基于粒子群优化的新型算法,具有多阶段干扰,能够更好地摆脱局部最优并探索解空间。在第一个示例中,植物之间的间距被用作优化目标。在当前环境设置的模型框架内,以及功能和结构模块,获得了最佳的植物间距。模拟结果表明,优化后的植物间距可以提高水稻产量,并且优化结果保持稳定。