Intelligent Observer-Based Controller Design for Nonlinear Type-1 Diabetes Model via Adaptive Neural Network Method

Elham Rahimi khoygani, Mohammad Reza Rahimi khoygani, R. Ghasemi
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引用次数: 1

Abstract

Diabetes is an increasing health problem all around the world, particularly Type 1 diabetes (T1D), people with T1D require precise glycemic control, due to a shortage of insulin production. This paper introduces a new adaptive neural observer-based controller for a class of nonlinear T1D systems. A solution is proposed to guarantees practical tracking of a desired glucose concentration by a new adaptive neural observer-based control strategy. One of the intelligence procedures is the network under online learning that the mentioned controller is learned by a back-propagation algorithm. This network is a significant class of feed-forward artificial neural networks that maps a set of inputs into a set of proper outputs. Guarantee stability of observer and controller by Lyapunov direct and training online are the merit of the method. Also, despite the presence of internal and external uncertainties, the multilayer perceptron neural observer-based controller is robust. The performance of the proposed method is hopeful based on the results.
糖尿病是全球范围内日益严重的健康问题,尤其是1型糖尿病(T1D),由于胰岛素分泌不足,T1D患者需要精确控制血糖。针对一类非线性T1D系统,提出了一种新的基于神经观测器的自适应控制器。提出了一种新的基于自适应神经观测器的控制策略,以保证实际跟踪所需的葡萄糖浓度。其中一个智能过程是在线学习下的网络,上述控制器是通过反向传播算法学习的。该网络是一类重要的前馈人工神经网络,它将一组输入映射到一组适当的输出。该方法的优点是通过李亚普诺夫直接训练和在线训练来保证观测器和控制器的稳定性。此外,尽管存在内部和外部的不确定性,多层感知器神经观测器的控制器是鲁棒的。结果表明,该方法的性能是有希望的。
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