Department of Computer Science, Changchun Normal University, Changchun, Jilin Province, China.
Department of Computer Science, Guangxi Normal University, Guilin, Guangxi Province, China.
Sci Rep. 2023 Jan 20;13(1):1142. doi: 10.1038/s41598-023-27990-w.
Sustainable intensification needs to optimize irrigation and fertilization strategies while increasing crop yield. To enable more precision and effective agricultural management, a bi-level screening and bi-level optimization framework is proposed. Irrigation and fertilization dates are obtained by upper-level screening and upper-level optimization. Subsequently, due to the complexity of the problem, the lower-level optimization uses a data-driven evolutionary algorithm, which combines the fast non-dominated sorting genetic algorithm (NSGA-II), surrogate-assisted model of radial basis function and Decision Support System for Agrotechnology Transfer to handle the expensive objective problem and produce a set of optimal solutions representing a trade-off between conflicting objectives. Then, the lower-level screening quickly finds better irrigation and fertilization strategies among thousands of solutions. Finally, the experiment produces a better irrigation and fertilization strategy, with water consumption reduced by 44%, nitrogen application reduced by 37%, and economic benefits increased by 7 to 8%.
可持续集约化需要优化灌溉和施肥策略,同时提高作物产量。为了实现更精确和有效的农业管理,提出了一个双层筛选和双层优化框架。灌溉和施肥日期通过上层筛选和上层优化获得。随后,由于问题的复杂性,下层优化使用了一种数据驱动的进化算法,该算法结合了快速非支配排序遗传算法(NSGA-II)、基于径向基函数的代理辅助模型和农业技术转让决策支持系统,以处理昂贵的目标问题,并生成一组代表冲突目标之间权衡的最优解决方案。然后,下层筛选可以在数千个解决方案中快速找到更好的灌溉和施肥策略。最后,实验产生了更好的灌溉和施肥策略,耗水量减少了 44%,氮肥施用量减少了 37%,经济效益提高了 7%至 8%。