Multi Objective Nonlinear Model Predictive Control of Diabetes Models Considering the Effects of Insulin and Exercise

Researc H Article, Rico Mayaguez Lakshmi, N. Sridhar, L. Sridhar
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Abstract

Rigorous multiobjective nonlinear model predictive control on the diabetes model incorporating single and multiple control strategies. The amount of glucose is minimized with the Bergman model considering the effects of insulin and exercise. The optimization language pyomo is used in conjunction with the state-of-the-art global optimization solvers IPOPT and Baron. Pareto surfaces are generated. When some optimal control profiles were found to exhibit sharp spikes, an activation factor involving the hyperbolic tangent function was used. It is observed that a greater amount of glucose minimization is achieved when more control procedures were incorporated. This demonstrates that it is more beneficial to use multiple control strategies
考虑胰岛素和运动影响的糖尿病模型多目标非线性预测控制
结合单、多控制策略的糖尿病模型严格多目标非线性模型预测控制。考虑到胰岛素和运动的影响,Bergman模型将葡萄糖的量最小化。优化语言pyomo与最先进的全局优化求解器IPOPT和Baron一起使用。生成帕累托曲面。当发现一些最优控制曲线表现出尖锐的峰值时,使用涉及双曲正切函数的激活因子。我们观察到,当加入更多的控制程序时,实现了更大的葡萄糖最小化量。这表明使用多种控制策略更有益
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