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Closed-Loop Control of Artificial Pancreatic -Cell in Type 1 Diabetes Mellitus Using Model Predictive Iterative Learning Control

机译:使用模型预测迭代学习控制对1型糖尿病人工胰腺细胞进行闭环控制

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摘要

A novel combination of iterative learning control (ILC) and model predictive control (MPC), referred to here as model predictive iterative learning control (MPILC), is proposed for glycemic control in type 1 diabetes mellitus. MPILC exploits two key factors: frequent glucose readings made possible by continuous glucose monitoring technology; and the repetitive nature of glucose-meal-insulin dynamics with a 24-h cycle. The proposed algorithm can learn from an individual''s lifestyle, allowing the control performance to be improved from day to day. After less than 10 days, the blood glucose concentrations can be kept within a range of 90–170 mg/dL. Generally, control performance under MPILC is better than that under MPC. The proposed methodology is robust to random variations in meal timings within $pm$60 min or meal amounts within $pm$75% of the nominal value, which validates MPILC''s superior robustness compared to run-to-run control. Moreover, to further improve the algorithm''s robustness, an automatic scheme for setpoint update that ensures safe convergence is proposed. Furthermore, the proposed method does not require user intervention; hence, the algorithm should be of particular interest for glycemic control in children and adolescents.
机译:提出了一种迭代学习控制(ILC)和模型预测控制(MPC)的新颖组合,这里称为模型预测迭代学习控制(MPILC),用于1型糖尿病的血糖控制。 MPILC利用两个关键因素:通过连续的葡萄糖监测技术,可以频繁读取葡萄糖;以及24小时周期的葡萄糖粉-胰岛素动力学的重复性。提出的算法可以从个人的生活方式中学习,从而可以每天改善控制性能。少于10天后,血糖浓度可保持在90-170 mg / dL范围内。通常,MPILC下的控制性能优于MPC下的控制性能。所提出的方法对于在$ pm $ 60分钟以内的进餐时间或名义金额在$ pm $ 75%以内的进餐量中的随机变化具有鲁棒性,这证明了MPILC与运行间控制相比具有卓越的鲁棒性。此外,为了进一步提高算法的鲁棒性,提出了一种确保安全收敛的自动更新设定值方案。此外,提出的方法不需要用户干预。因此,该算法对于控制儿童和青少年的血糖尤为重要。

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