Adaptive Nonlinear Model Predictive Control algorithm for blood glucose regulation in type 1 diabetic patients

Alaa A. Embaby, Zaki B. Nosseir, Hesham Badr
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引用次数: 2

Abstract

The pancreas of patients with Type 1 Diabetes Mellitus (T1DM) is unable to produce insulin. Thus, insulin therapy is required for T1DM to maintain Blood Glucose (BG) levels within the normal range. The Artificial Pancreas (AP) is a closed-loop control system that is used by T1D patients to maintain their BG levels at the normal range during daily life. In this work, an Adaptive Nonlinear Model Predictive Control (AMPC) algorithm for BG regulation in T1D patients is developed. The proposed technique uses the Feed Forward Neural Network (FFNN) as a nonlinear blood glucose prediction model to handle the delay between the moment of insulin injection and the moment of insulin interaction with the blood glucose. Also, it uses the Fuzzy Logic Controller (FLC) as a control algorithm to determine the amount of insulin required for regulating the BG level. An adaptation method is also included to adjust the proposed system to compensate for physiological differences among patients. The limits of the output membership functions for the FLC are optimized using the Genetic algorithm (GA). Simulation results for a 36h scenario are demonstrated in nine virtual adult patients. The master findings are the average percentages of these patients for the time spent in the normal range, hypo-, and hyperglycemia. Our results indicate that the proposed closed-loop control system increases the time that BG is in the normal range and causes less hyperglycemia as compared to a published technique studied in a similar scenario and population.
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1型糖尿病患者血糖调节的自适应非线性模型预测控制算法
1型糖尿病(T1DM)患者的胰腺不能产生胰岛素。因此,T1DM患者需要胰岛素治疗以维持血糖(BG)在正常范围内。人工胰腺(Artificial pancreatic, AP)是T1D患者在日常生活中将血糖维持在正常范围的闭环控制系统。在这项工作中,开发了一种用于T1D患者血糖调节的自适应非线性模型预测控制(AMPC)算法。该技术采用前馈神经网络(FFNN)作为非线性血糖预测模型来处理胰岛素注射时刻和胰岛素与血糖相互作用时刻之间的延迟。此外,它使用模糊逻辑控制器(FLC)作为控制算法来确定调节血糖水平所需的胰岛素量。本文还提出了一种适应方法来调整系统以补偿患者之间的生理差异。利用遗传算法对FLC的输出隶属函数的极限进行了优化。在9名虚拟成人患者中演示了36小时场景的模拟结果。主要发现是这些患者在正常、低血糖和高血糖范围内的平均百分比。我们的研究结果表明,与在类似场景和人群中研究的已发表技术相比,所提出的闭环控制系统增加了BG处于正常范围的时间,并减少了高血糖症的发生。
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