Predictive Control of the Blood Glucose Level in Type I Diabetic Patient Using Delay Differential Equation Wang Model
Because of increasing risk of diabetes, the measurement along with control of blood sugar has been of great importance in recent decades. In type I diabetes, because of the lack of insulin secretion, the cells cannot absorb glucose leading to low level of glucose. To control blood glucose (BG), the...
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Wolters Kluwer Medknow Publications
2017-01-01
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Online Access: | http://www.jmss.mui.ac.ir/article.asp?issn=2228-7477;year=2017;volume=7;issue=1;spage=8;epage=20;aulast=Esna-Ashari |
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doaj-5d3af59e5f0a4411b17802bdd300f0862020-11-25T01:39:48ZengWolters Kluwer Medknow PublicationsJournal of Medical Signals and Sensors2228-74772017-01-0171820Predictive Control of the Blood Glucose Level in Type I Diabetic Patient Using Delay Differential Equation Wang ModelMojgan Esna-AshariMaryam ZekriMasood AskariNoushin KhaliliBecause of increasing risk of diabetes, the measurement along with control of blood sugar has been of great importance in recent decades. In type I diabetes, because of the lack of insulin secretion, the cells cannot absorb glucose leading to low level of glucose. To control blood glucose (BG), the insulin must be injected to the body. This paper proposes a method for BG level regulation in type I diabetes. The control strategy is based on nonlinear model predictive control. The aim of the proposed controller optimized with genetics algorithms is to measure BG level each time and predict it for the next time interval. This merit causes a less amount of control effort, which is the rate of insulin delivered to the patient body. Consequently, this method can decrease the risk of hypoglycemia, a lethal phenomenon in regulating BG level in diabetes caused by a low BG level. Two delay differential equation models, namely Wang model and Enhanced Wang model, are applied as controller model and plant, respectively. The simulation results exhibit an acceptable performance of the proposed controller in meal disturbance rejection and robustness against parameter changes. As a result, if the nutrition of the person decreases instantly, the hypoglycemia will not happen. Furthermore, comparing this method with other works, it was shown that the new method outperforms previous studies.http://www.jmss.mui.ac.ir/article.asp?issn=2228-7477;year=2017;volume=7;issue=1;spage=8;epage=20;aulast=Esna-AshariAlgorithmsblood glucosediabetes mellitus type Iglucosehumanshypoglycemiainsulinmealsnonlinear dynamics |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mojgan Esna-Ashari Maryam Zekri Masood Askari Noushin Khalili |
spellingShingle |
Mojgan Esna-Ashari Maryam Zekri Masood Askari Noushin Khalili Predictive Control of the Blood Glucose Level in Type I Diabetic Patient Using Delay Differential Equation Wang Model Journal of Medical Signals and Sensors Algorithms blood glucose diabetes mellitus type I glucose humans hypoglycemia insulin meals nonlinear dynamics |
author_facet |
Mojgan Esna-Ashari Maryam Zekri Masood Askari Noushin Khalili |
author_sort |
Mojgan Esna-Ashari |
title |
Predictive Control of the Blood Glucose Level in Type I Diabetic Patient Using Delay Differential Equation Wang Model |
title_short |
Predictive Control of the Blood Glucose Level in Type I Diabetic Patient Using Delay Differential Equation Wang Model |
title_full |
Predictive Control of the Blood Glucose Level in Type I Diabetic Patient Using Delay Differential Equation Wang Model |
title_fullStr |
Predictive Control of the Blood Glucose Level in Type I Diabetic Patient Using Delay Differential Equation Wang Model |
title_full_unstemmed |
Predictive Control of the Blood Glucose Level in Type I Diabetic Patient Using Delay Differential Equation Wang Model |
title_sort |
predictive control of the blood glucose level in type i diabetic patient using delay differential equation wang model |
publisher |
Wolters Kluwer Medknow Publications |
series |
Journal of Medical Signals and Sensors |
issn |
2228-7477 |
publishDate |
2017-01-01 |
description |
Because of increasing risk of diabetes, the measurement along with control of blood sugar has been of great importance in recent decades. In type I diabetes, because of the lack of insulin secretion, the cells cannot absorb glucose leading to low level of glucose. To control blood glucose (BG), the insulin must be injected to the body. This paper proposes a method for BG level regulation in type I diabetes. The control strategy is based on nonlinear model predictive control. The aim of the proposed controller optimized with genetics algorithms is to measure BG level each time and predict it for the next time interval. This merit causes a less amount of control effort, which is the rate of insulin delivered to the patient body. Consequently, this method can decrease the risk of hypoglycemia, a lethal phenomenon in regulating BG level in diabetes caused by a low BG level. Two delay differential equation models, namely Wang model and Enhanced Wang model, are applied as controller model and plant, respectively. The simulation results exhibit an acceptable performance of the proposed controller in meal disturbance rejection and robustness against parameter changes. As a result, if the nutrition of the person decreases instantly, the hypoglycemia will not happen. Furthermore, comparing this method with other works, it was shown that the new method outperforms previous studies. |
topic |
Algorithms blood glucose diabetes mellitus type I glucose humans hypoglycemia insulin meals nonlinear dynamics |
url |
http://www.jmss.mui.ac.ir/article.asp?issn=2228-7477;year=2017;volume=7;issue=1;spage=8;epage=20;aulast=Esna-Ashari |
work_keys_str_mv |
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1725049051484782592 |