Home           Contact us           FAQs           
     Journal Home     |     Aim & Scope    |    Author(s) Information      |     Editorial Board     |     MSP Download Statistics
2012 (Vol. 4, Issue: 13)
Article Information:

An Unprecedented Automated Fuzzy Model for Diabetes Mellitus

Mohammad Hassan Khooban and Davood Nazari Maryam Abadi
Corresponding Author:  Mohammad Hassan Khooban 

Key words:  Automated methods, fuzzy model, Recursive Least Squares Algorihtm (RLSA), , , ,
Vol. 4 , (13): 1973-1977
Submitted Accepted Published
March 05, 2012 March 24, 2012 July 01, 2012

Finding an expert fuzzy model for glucose-insulin system seems to be essential because this model is always changeable according to parameters such as body weight, individual age, time and numbers of meals, physical activities and etc. In this study we try to obtain a fuzzy model for diabetes mellitus. At first a certain diet is introduced and the amount of carbohydrate in each meal is calculated, then by introduced diet the amount of blood glucose and insulin as outputs of diabetes mellitus system are determined. Although there are some models about glucose-insulin system but in this study we use automated method, recursive least squares, in order to find a fuzzy relation between inputs and outputs of system for producing a fuzzy model of glucoseinsulin system. At last the performance of obtained model with regard to the same inputs is compared with responses of 21st order metabolic model of Sorensen.
Abstract PDF HTML
  Cite this Reference:
Mohammad Hassan Khooban and Davood Nazari Maryam Abadi, 2012. An Unprecedented Automated Fuzzy Model for Diabetes Mellitus.  Research Journal of Applied Sciences, Engineering and Technology, 4(13): 1973-1977.
    Advertise with us
ISSN (Online):  2040-7467
ISSN (Print):   2040-7459
Submit Manuscript
   Current Information
   Sales & Services
Home  |  Contact us  |  About us  |  Privacy Policy
Copyright © 2015. MAXWELL Scientific Publication Corp., All rights reserved