Log In
New user? Click here to register. Have you forgotten your password?
NC State University Libraries Logo
    Communities & Collections
    Browse NC State Repository
Log In
New user? Click here to register. Have you forgotten your password?
  1. Home
  2. Browse by Author

Browsing by Author "Pope, Scott R."

Filter results by typing the first few letters
Now showing 1 - 1 of 1
  • Results Per Page
  • Sort Options
  • No Thumbnail Available
    Parameter Identification in Lumped Compartment Cardiorespiratory Models
    (2009-04-13) Pope, Scott R.; C. T. Kelley, Committee Chair; Mette Olufsen, Committee Member; Shu-Cherng Fang, Committee Member; Ilse Ipsen, Committee Member
    The parameter identification problem attempts to find parameter values that cause the solution of a predictive model to match data. In this work, parameters in cardiovascular and respiratory models are identified. This work’s main contribution is in its application of gradient based optimization techniques and insight into methods to identify parameters that can be estimated given subject specific data. The models presented in this paper are lumped compartment models of the cardiovascular and respiratory systems. Lumped compartment models treat the cardiovascular and respiratory systems as collections of interconnected compartments transporting blood and exchanging oxygen and carbon dioxide. Using these compartments, a system of ordinary differential equations (ODE) is generated that incorporates several physiological parameters representing vascular resistances, compliances, and tissue metabolic rates. The solution to this ODE system is used to predict cerebral blood flow, systemic arterial blood pressure, and expired carbon dioxide partial pressures, which are then compared to subject data. Minimizing the two-norm difference between between the result of the predictive model and the experimental data is a non-linear least squares problem. Although the least squares problem is overdetermined, the data do not contain enough information to determine all model parameters. A combination of sensitivity analysis, expert knowledge, and subset selection techniques reduce the number of model parameters estimated.

Contact

D. H. Hill Jr. Library

2 Broughton Drive
Campus Box 7111
Raleigh, NC 27695-7111
(919) 515-3364

James B. Hunt Jr. Library

1070 Partners Way
Campus Box 7132
Raleigh, NC 27606-7132
(919) 515-7110

Libraries Administration

(919) 515-7188

NC State University Libraries

  • D. H. Hill Jr. Library
  • James B. Hunt Jr. Library
  • Design Library
  • Natural Resources Library
  • Veterinary Medicine Library
  • Accessibility at the Libraries
  • Accessibility at NC State University
  • Copyright
  • Jobs
  • Privacy Statement
  • Staff Confluence Login
  • Staff Drupal Login

Follow the Libraries

  • Facebook
  • Instagram
  • Twitter
  • Snapchat
  • LinkedIn
  • Vimeo
  • YouTube
  • YouTube Archive
  • Flickr
  • Libraries' news

ncsu libraries snapchat bitmoji

×