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PID control of glucose concentration in subjects with type 1 diabetes based on a simplified model: An in silico trial

机译:基于简化模型的1型糖尿病受试者的葡萄糖浓度PID控制:计算机模拟试验

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An artificial pancreas system (APS) mimics the function of a real pancreas through monitoring a diabetic's blood glucose and administering the right dose of insulin via an automatic control loop. It is hailed as a promising cure of diabetes, though this technology is still years away from commercial use due to a few technological bottlenecks. The simulation model of insulin-glucose metabolism of type 1 diabetes mellitus (T1DM) is an essential part of APS. In order to simplify the parameter identification task so that the model can be implemented electronically with ease, this paper presents a simplified model based on Routh approximation model reduction method. The results show that the approximation error between the simplified model and the original model is so small that can be neglected. Based on the simplified model, a PID controller is designed to maintain normoglycemia (90mg/dl) in subjects with T1DM. The in silico simulation results show that the glucose concentration is controlled well, the risk of hyperglycemia and hypoglycemia is reduced a lot. This suggests that the simplified model describes the insulin-glucose metabolism process accurately, and the PID control algorithm is well-suitable to guide the further development of an APS.
机译:人工胰腺系统(APS)通过监视糖尿病患者的血糖并通过自动控制回路来管理正确剂量的胰岛素,从而模仿真实胰腺的功能。尽管由于一些技术瓶颈,该技术距离商业用途还有数年之遥,但它被誉为有前途的糖尿病治疗方法。 1型糖尿病(T1DM)胰岛素-葡萄糖代谢的模拟模型是APS的重要组成部分。为了简化参数识别任务,使模型易于电子实现,本文提出了一种基于劳斯近似模型约简方法的简化模型。结果表明,简化模型与原始模型之间的近似误差很小,可以忽略不计。基于简化模型,设计了PID控制器以维持患有T1DM的受试者的正常血糖(90mg / dl)。计算机模拟结果表明,葡萄糖浓度得到很好的控制,高血糖和低血糖的风险大大降低。这表明简化的模型可以准确地描述胰岛素-葡萄糖的代谢过程,并且PID控制算法非常适合指导APS的进一步发展。

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