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Optimal irrigation management for large-scale arable farming using model predictive control ?

机译:使用模型预测控制对大型可耕种农业进行最佳灌溉管理

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摘要

The productivity and financial success of large-scale arable farming operations depends highly on how effectively resources are distributed among fields. Therefore, it is of interest to develop methods to determine (near optimal) resource inputs. In this paper we focus on computing the optimal irrigation policy for large-scale arable farming operations, where the number of irrigation machinery is much smaller than the number of fields that require irrigation inputs. We propose a model predictive control (MPC) framework that simultaneously computes the optimal division of irrigation over the fields and which irrigation machines should be allocated to which fields, such that the profit at the end of the season is maximized. The fact that the optimization of irrigation and allocation of irrigation machinery is done simultaneously makes our approach vastly different from strategies available in the literature. Another important novelty of our work is that we link short-term effects of crop growth to long-term effects on profit. The proposed framework has reasonable computation times when optimizing on a daily basis over many fields and irrigation machines and guarantees a feasible solution. The main principles of our approach are more widely applicable. Using simulations we demonstrate the robustness of the scheme with respect to changes in weather and benchmark it with respect to a heuristic approach.
机译:大规模可耕作农业的生产力和财务成功在很大程度上取决于资源在田间之间的有效分配。因此,开发确定(接近最佳)资源输入的方法很有意义。在本文中,我们着重于为大型可耕作农业计算最优灌溉政策,其中灌溉机械的数量远远少于需要灌溉投入的田地数量。我们提出了一种模型预测控制(MPC)框架,该框架可同时计算田间灌溉的最佳分配,以及应将灌溉机械分配给哪些田地,从而使季节末的利润最大化。灌溉的优化和灌溉机械的配置是同时完成的,这使我们的方法与文献中的策略大不相同。我们工作的另一个重要新颖之处在于,我们将作物生长的短期影响与对利润的长期影响联系在一起。在许多领域和灌溉机器上每天进行优化时,提出的框架具有合理的计算时间,并保证了可行的解决方案。我们方法的主要原理更加广泛地适用。通过仿真,我们证明了该方案针对天气变化的鲁棒性,并针对启发式方法进行了基准测试。

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