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Gaussian processes based bivariate control parameters optimization of variable-rate granular fertilizer applicator

机译:基于高斯过程的可变速率颗粒施肥机双变量控制参数优化

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Taking into account the scarcity of feasible fertilizing rate feedback from on-board sensors and the limited computation power of controller mounted on the variable-rate granular fertilizer applicator, optimum control index chart is a good option for controller design to achieve accurate variable-rate fertilizing control. The index chart contains a list of optimum control parameters optimized to meet combined objectives: fertilizing accuracy, energy saving and fertilizing consistency. To generate such list, the probabilistic meta-model based on Gaussian Processes (GP) is firstly utilized to identify the variable-rate fertilizing process with the indoor experimental data. Consequently, the meta-model-based optimization process is presented with the given fertilizing rate, previous opening length and its adjusting direction. The optimal control parameters chart is obtained by the iterative multi-objectives optimization based on Genetic Algorithm (GA). Thus, the fertilizing prescription can be converted to the controller's actions by searching the optimum control parameters chart. The well-trained GP models predict the fertilizing rate and the fertilizing coefficient of variation with limiting mean relative error to 0.014 and 0.089, respectively. Finally, by considering four main error sources, the verified fertilizing model improves the average fertilizing rate error to no more than 5% at given management zone scale in field test.
机译:考虑到来自车载传感器的可行施肥速率反馈的缺乏以及安装在可变速率颗粒施肥机上的控制器的有限计算能力,最佳控制指标图是控制器设计实现精确可变速率施肥的一个不错的选择。控制。索引表包含优化控制参数的列表,这些参数经过优化可满足多个目标:施肥精度,节能和施肥一致性。为了产生这样的列表,首先利用基于高斯过程(GP)的概率元模型来识别室内实验数据的可变速率施肥过程。因此,在给定的施肥量,前期开放长度及其调整方向的基础上,提出了基于元模型的优化过程。通过基于遗传算法(GA)的迭代多目标优化,获得最优控制参数图。因此,可以通过搜索最佳控制参数表将施肥处方转换为控制器的动作。训练有素的GP模型可预测施肥速率和施肥变异系数,其平均相对误差分别限制为0.014和0.089。最后,通过考虑四个主要误差源,在田间试验中,经过验证的施肥模型将给定管理区规模下的平均施肥率误差提高到不超过5%。

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