Multiple model adaptive postprandial glucose control of type 1 diabetes

In this work, the adaptive regulation of blood glucose (BG) in type I diabetic (T1D) patients is considered by developing a Multiple Model Adaptive Control (MMAC), where its estimation is based on Magdelaine's long-term glucose-insulin Model. The (MMAC) is built using a bank of Kalman- Bucy Fil...

Full description

Bibliographic Details
Main Authors: Safanah M. Raafat, Ban K. Abd-AL Amear, Ayman Al-Khazraji
Format: Article
Language:English
Published: Elsevier 2021-02-01
Series:Engineering Science and Technology, an International Journal
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2215098620342592
id doaj-62f0d42ee76645b8a1a83eed04a0d032
record_format Article
spelling doaj-62f0d42ee76645b8a1a83eed04a0d0322021-02-01T04:13:27ZengElsevierEngineering Science and Technology, an International Journal2215-09862021-02-012418391Multiple model adaptive postprandial glucose control of type 1 diabetesSafanah M. Raafat0Ban K. Abd-AL Amear1Ayman Al-Khazraji2Control and System Eng. Dept., University of Technology, Baghdad, IraqControl and System Eng. Dept., University of Technology, Baghdad, IraqElectrical and Electronics Eng. Dept., University of Bahrain, Manama, Bahrain; Corresponding author at: University of Bahrain, Isa Town Campus, Building 14, Bahrain.In this work, the adaptive regulation of blood glucose (BG) in type I diabetic (T1D) patients is considered by developing a Multiple Model Adaptive Control (MMAC), where its estimation is based on Magdelaine's long-term glucose-insulin Model. The (MMAC) is built using a bank of Kalman- Bucy Filters (KBFs)with optimal state feedback controllers. Each KBF is based on a particular value of the equilibrium point for which, the optimal Linear Quadratic Servo (LQ-Servo) controller is designed. The total state estimation is resolved by the probabilistic weighted sum of the produced outputs of all filters based on measured glucose signal. Simulation results show that MMAC is capable of providing reliable estimation and regulation of insulin delivery. Moreover, the performance of the controlled glucose/insulin is improved by 99% compared with that when using a single KBF. The MMAC has accurately identified the glucose signal corresponding to the hypothesis models with an average accuracy of 96.4% for 5 tested patients. Robust performance has been tested with different initial conditions and disturbance.http://www.sciencedirect.com/science/article/pii/S2215098620342592Artificial pancreasDiabetes controlOptimal controlMultiple Model Adaptive Control (MMAC)Kalman-Bucy Filter (KBF)Biomedical engineering
collection DOAJ
language English
format Article
sources DOAJ
author Safanah M. Raafat
Ban K. Abd-AL Amear
Ayman Al-Khazraji
spellingShingle Safanah M. Raafat
Ban K. Abd-AL Amear
Ayman Al-Khazraji
Multiple model adaptive postprandial glucose control of type 1 diabetes
Engineering Science and Technology, an International Journal
Artificial pancreas
Diabetes control
Optimal control
Multiple Model Adaptive Control (MMAC)
Kalman-Bucy Filter (KBF)
Biomedical engineering
author_facet Safanah M. Raafat
Ban K. Abd-AL Amear
Ayman Al-Khazraji
author_sort Safanah M. Raafat
title Multiple model adaptive postprandial glucose control of type 1 diabetes
title_short Multiple model adaptive postprandial glucose control of type 1 diabetes
title_full Multiple model adaptive postprandial glucose control of type 1 diabetes
title_fullStr Multiple model adaptive postprandial glucose control of type 1 diabetes
title_full_unstemmed Multiple model adaptive postprandial glucose control of type 1 diabetes
title_sort multiple model adaptive postprandial glucose control of type 1 diabetes
publisher Elsevier
series Engineering Science and Technology, an International Journal
issn 2215-0986
publishDate 2021-02-01
description In this work, the adaptive regulation of blood glucose (BG) in type I diabetic (T1D) patients is considered by developing a Multiple Model Adaptive Control (MMAC), where its estimation is based on Magdelaine's long-term glucose-insulin Model. The (MMAC) is built using a bank of Kalman- Bucy Filters (KBFs)with optimal state feedback controllers. Each KBF is based on a particular value of the equilibrium point for which, the optimal Linear Quadratic Servo (LQ-Servo) controller is designed. The total state estimation is resolved by the probabilistic weighted sum of the produced outputs of all filters based on measured glucose signal. Simulation results show that MMAC is capable of providing reliable estimation and regulation of insulin delivery. Moreover, the performance of the controlled glucose/insulin is improved by 99% compared with that when using a single KBF. The MMAC has accurately identified the glucose signal corresponding to the hypothesis models with an average accuracy of 96.4% for 5 tested patients. Robust performance has been tested with different initial conditions and disturbance.
topic Artificial pancreas
Diabetes control
Optimal control
Multiple Model Adaptive Control (MMAC)
Kalman-Bucy Filter (KBF)
Biomedical engineering
url http://www.sciencedirect.com/science/article/pii/S2215098620342592
work_keys_str_mv AT safanahmraafat multiplemodeladaptivepostprandialglucosecontroloftype1diabetes
AT bankabdalamear multiplemodeladaptivepostprandialglucosecontroloftype1diabetes
AT aymanalkhazraji multiplemodeladaptivepostprandialglucosecontroloftype1diabetes
_version_ 1724315758170734592