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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Parametric recursive system identification and self-adaptive modeling of the human energy metabolism for adaptive control of fat weight
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Parametric recursive system identification and self-adaptive modeling of the human energy metabolism for adaptive control of fat weight

机译:参数递归系统识别和自适应建模的人能量代谢治疗脂肪重量

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摘要

A mathematical model has been developed to facilitate indirect measurements of difficult to measure variables of the human energy metabolism on a daily basis. The model performs recursive system identification of the parameters of the metabolic model of the human energy metabolism using the law of conservation of energy and principle of indirect calorimetry. Self-adaptive models of the utilized energy intake prediction, macronutrient oxidation rates, and daily body composition changes were created utilizing Kalman filter and the nominal trajectory methods. The accuracy of the models was tested in a simulation study utilizing data from the Minnesota starvation and overfeeding study. With biweekly macronutrient intake measurements, the average prediction error of the utilized carbohydrate intake was -23.2 +/- 53.8 kcal/day, fat intake was 11.0 +/- 72.3 kcal/day, and protein was 3.7 +/- 16.3 kcal/day. The fat and fat-free mass changes were estimated with an error of 0.44 +/- 1.16 g/day for fat and -2.6 +/- 64.98 g/day for fat-free mass. The daily metabolized macronutrient energy intake and/or daily macronutrient oxidation rate and the daily body composition change from directly measured serial data are optimally predicted with a self-adaptive model with Kalman filter that uses recursive system identification.
机译:已经开发了一种数学模型,以便于间接测量每天难以测量人能量代谢的变量。该模型利用间接量热法的能量和原理守则执行递归系统识别人能量代谢的代谢模型的参数。利用卡尔曼滤波器和标称轨迹方法采用了利用能量摄入预测,常规氧化率和日常组成变化的自适应模型。在利用明尼苏达饥饿和过度灌注研究的仿真研究中测试了模型的准确性。通过双周的Macronutrient进气量测量,使用的碳水化合物摄入的平均预测误差为-23.2 +/- 53.8千卡/天,脂肪摄入量为11.0 +/- 72.3千卡/天,蛋白质为3.7 +/- 16.3千卡/天。估计脂肪和无脂肪块的含量为0.44 +/- 1.16克/天的误差和-2.6 +/- 64.98克/天,用于无脂肪质量。每日代谢常规能量摄取和/或每日Memronurient氧化速率以及从直接测量的串行数据的日常主体组成变化是通过使用递归系统识别的自适应模型来最佳地预测。

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