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Control of Type 1 Diabetes Mellitus using Particle Swarm Optimization driven Receding Horizon Controller ?

机译:控制1型糖尿病使用粒子群优化驱动后退地平线控制器

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Receding Horizon Control (RHC), also known as Model Predictive Control (MPC) is one of the most intensively researched areas of control algorithms applied in the artificial pancreas concept. Nevertheless, MPC algorithms have not yet been implemented in commercially available insulin pumps, mainly due to their high computational demand, their less robust nature, and their instability on account of model’s uncertainty. In this paper, we present a robust adjustable RHC. The proposed RHC controller was tested under known food inputs by applying a high degree of parameter uncertainty to the virtual patient implemented in the controller to test the robustness of the architecture. A particle swarm optimization method was applied to tune the controller. The so-called identifiable virtual patient (IVP) model was used in the tests, supplemented with food absorption and continuous glucose monitoring sensor model. The implementation was performed in Julia. The results showed that the proposed RHC is sufficiently robust under high food intake and parameter uncertainty.
机译:后退地平线控制(RHC),也称为模型预测控制(MPC)是在人工胰腺概念中应用的控制算法中最强烈的研究领域之一。然而,MPC算法尚未在市售的胰岛素泵中实现,主要是由于它们的高计算需求,其较低的强大性质,而不是模型的不确定性。在本文中,我们呈现了一个坚固的可调RHC。通过对在控制器中实现的虚拟患者应用高度的参数不确定性来测试所提出的RHC控制器,以测试架构的稳健性。应用粒子群优化方法来调整控制器。所谓的可识别虚拟患者(IVP)模型用于测试,补充有食物吸收和连续葡萄糖监测传感器模型。实施是在朱莉娅进行的。结果表明,在高食物摄入和参数不确定性下,所提出的RHC是足够稳健的。

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