Beatrice Sonzogni , José María Manzano , Marco Polver , Fabio Previdi , Antonio Ferramosca
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引用次数: 0
摘要
这项工作提出了一个模型预测控制(MPC)的人工胰腺,它能够自主管理基础胰岛素注射1型糖尿病患者。具体而言,MPC的目标是将患者的血糖水平维持在70-180 mg/dL的安全范围内,对胰岛素量起作用,尊重所有规定的限制,同时考虑到机上胰岛素(insulin on Board, IOB),避免胰岛素输注过量。MPC使用一个模型来预测系统的行为。在这项工作中,由于糖尿病疾病的复杂性使一般生理模型的识别变得复杂,因此采用了数据驱动的学习方法。采用Componentwise Hölder Kinky Inference (CHoKI)方法,为每个患者定制一个控制器。在数据收集阶段,为了测试所提出的控制器,利用了fda认可的UVA/Padova模拟器的虚拟患者。MPC还在模拟胰岛素敏感性变化和体育锻炼中进行了测试。最终的结果是令人满意的,因为与没有IOB约束的结果相比,所提出的控制器是保守的,并且减少了低血糖(更危险)的时间。
CHoKI-based MPC for blood glucose regulation in Artificial Pancreas
This work presents a Model Predictive Control (MPC) for the artificial pancreas, which is able to autonomously manage basal insulin injections in type 1 diabetic patients. Specifically, the MPC goal is to maintain the patients’ blood glucose level inside the safe range of 70-180 mg/dL, acting on the insulin amount and respecting all the imposed constraints, taking into consideration also the Insulin On Board (IOB), to avoid excess of insulin infusion. MPC uses a model to make predictions of the system behavior. In this work, due to the complexity of the diabetes disease that complicates the identification of a general physiological model, a data-driven learning method is employed instead. The Componentwise Hölder Kinky Inference (CHoKI) method is adopted, to have a customized controller for each patient. For the data collection phase and also to test the proposed controller, the virtual patients of the FDA-accepted UVA/Padova simulator are exploited. The MPC is also tested on simulations with variability of the insulin sensitivity and with physical activity sessions. The final results are satisfying since the proposed controller is conservative and reduces the time in hypoglycemia (which is more dangerous) if compared to the outcomes obtained without the IOB constraints.