
On-line parameter identification of the lumped arterial system model: A simulation study
Author(s) -
Feng Huang,
Shunv Ying
Publication year - 2020
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0236012
Subject(s) - model parameter , sensitivity (control systems) , aortic pressure , system identification , estimation theory , control theory (sociology) , parameter space , computer science , loop (graph theory) , line (geometry) , identification (biology) , algorithm , mathematics , blood pressure , engineering , medicine , statistics , data mining , artificial intelligence , measure (data warehouse) , control (management) , combinatorics , electronic engineering , botany , geometry , biology
A lumped model of the arterial system has been used in constructing a hybrid mock loop due to its real-time response. However, the parameters of the model are always from a general case and not adapted to a specific patient. In this study, we focused on on-line parameter identification of the lumped model of the arterial system that could be used for a specific patient. A five-element lumped arterial model is adopted in this study, in which the five parameters are to be determined. The aortic flow rate and the venous pressure are chosen as the inputs of the model, and aortic pressure as the output. An iterative optimization based on the established state space equations of the five-element model is used to seek the best parameter values by minimizing the difference between the model prediction and the previously obtained aortic pressure. The method is validated using simulated data from a complete numerical cardiovascular model. Results show that the method can track the dynamic variation of the parameters very well. Finally, a sensitivity analysis of the model parameters is conducted to interpret the effect of parameter changes. The good performance of the identification demonstrates the potential application of this method to customize a hybrid mock loop for a specific patient or clinically monitor the arterial vessel characteristics in real time.