Optimizing Blood Glucose Regulation in Type 1 Diabetes Patients via Genetic Algorithm-Based Fuzzy Logic Controller Considering Substantial Meal Protocol

Isah Ndakara Abubakar, Moad Essabbar, Hajar Saikouk
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Abstract

Effective management of blood glucose levels in individuals with type 1 diabetes, especially after meals, is crucial for diabetes care. Artificial pancreas systems (APS) perform automated insulin delivery in subjects with type 1 diabetes mellitus (T1DM). In this study, an optimized fuzzy logic controller was designed to achieve a euglycemic range after a substantial meal intake. All in silico simulations were performed using the MATLAB/Simulink environment, leveraging control variability grid analysis (CVGA), and the performance of the controller was evaluated. The proposed controller is based on a fuzzy-logic control law designed in three stages. First, a nonlinear framework of the glucose-insulin regulatory system was identified based on the heavy meal protocol of three patients given as follows: for subject ID 117-1, a total of 295 gCHO; for subject ID 126-1, 236 gCHO; and subject ID 128-1, 394 gCHO over a day. Then, an iterative tree structure was employed to establish a stabilizing control rule for insulin delivery, integrating inputs from two Mamdani Fuzzy Inference System (FIS) objects. Finally, a genetic algorithm refines the control system by fine-tuning the uncertainty of the fuzzy membership functions. Two scenarios were considered for three patients to assess the performance of the proposed controller. The results indicated its effectiveness under various conditions, achieving a time in the range of 61.25%, 71% and 61.10% respectively for the three subjects. The obtained results are analyzed and compared with IMC and multi-objective output feedback controllers. The findings of the study reveal that the proposed controller shows promising advancements in tailored strategies for type 1 diabetes patients, outperforming the other controllers in terms of blood glucose regulation.
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通过基于遗传算法的模糊逻辑控制器优化 1 型糖尿病患者的血糖调节,同时考虑大量进餐方案
有效控制 1 型糖尿病患者的血糖水平,尤其是餐后血糖水平,对糖尿病护理至关重要。人工胰腺系统(APS)可为 1 型糖尿病患者自动输送胰岛素。在这项研究中,设计了一种优化的模糊逻辑控制器,以便在大量进餐后达到优生血糖范围。使用 MATLAB/Simulink 环境,利用控制变异性网格分析 (CVGA) 进行了所有硅模拟,并对控制器的性能进行了评估。所提出的控制器是基于模糊逻辑控制法设计的,分为三个阶段。首先,根据三位患者的大餐方案确定了葡萄糖-胰岛素调节系统的非线性框架:受试者编号 117-1,一天共进食 295 gCHO;受试者编号 126-1,一天共进食 236 gCHO;受试者编号 128-1,一天共进食 394 gCHO。然后,采用迭代树结构建立胰岛素输送的稳定控制规则,整合两个马姆达尼模糊推理系统(FIS)对象的输入。最后,遗传算法通过微调模糊成员函数的不确定性来完善控制系统。为评估拟议控制器的性能,对三名患者的两种情况进行了考虑。结果表明,该控制器在各种条件下都很有效,三个受试者的时间分别达到了 61.25%、71% 和 61.10%。获得的结果与 IMC 和多目标输出反馈控制器进行了分析和比较。研究结果表明,所提出的控制器在为 1 型糖尿病患者量身定制策略方面取得了可喜的进步,在血糖调节方面优于其他控制器。
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