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Regularization networks for glucose system identification

机译:葡萄糖系统识别的正则化网络

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摘要

A framework for non-linear identification of glucose kinetics using neural networks is presented. The framework combines: recursive input-output system representation (Non-linear AutoRegressive model with eXogenous inputs (NARX)); approximation method derived from regularization theory and based on radial basis function neural networks; and validation methods for non-linear systems. System identification was performed using: (1) simulated data from a mathematical model of glucose kinetics in a diabetic state with exogenously infused soluble insulin and monomeric insulin analogues and (2) measured subcutaneous tissue glucose time-series from healthy subjects, respectively.
机译:提出了使用神经网络非线性识别葡萄糖动力学的框架。该框架组合了:递归输入输出系统表示(带有外源输入的非线性自回归模型(NARX));基于正则化理论并基于径向基函数神经网络的近似方法;和非线性系统的验证方法。使用以下方法进行系统识别:(1)来自糖尿病状态下的葡萄糖动力学数学模型的模拟数据,其中分别注入了可溶性胰岛素和单体胰岛素类似物,以及(2)分别测量了健康受试者的皮下组织葡萄糖时间序列。

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