Title of article
Sensitivity analysis of linear time-invariant compartmental models with steady-state constraint
Author/Authors
Suzan Gazio?lu&E. Marian Scott، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
25
From page
2485
To page
2509
Abstract
Compartmental models have been widely used in modelling systems in pharmaco-kinetics, engineering,
biomedicine and ecology since 1943 and turn out to be very good approximations for many different reallife
systems. Sensitivity analysis (SA) is commonly employed at a preliminary stage of model development
process to increase the confidence in the model and its predictions by providing an understanding of how
the model response variables respond to changes in the inputs, data used to calibrate it and model structures.
This paper concerns the application of some SA techniques to a linear, deterministic, time-invariant
compartmental model of global carbon cycle (GCC). The same approach is also illustrated with a more
complex GCC model which has some nonlinear components. By focusing on these two structurally different
models for estimating the atmospheric CO2 content in the year 2100, sensitivity of model predictions to
uncertainty attached to the model input factors is studied. The application/modification of SA techniques
to compartmental models with steady-state constraint is explored using the 8-compartment model, and
computational methods developed to maintain the initial steady-state condition are presented. In order to
adjust the values of model input factors to achieve an acceptable match between observed and predicted
model conditions, windowing analysis is used.
Keywords
Sensitivity analysis , compartmental model , steady state , global carbon cycle model
Journal title
JOURNAL OF APPLIED STATISTICS
Serial Year
2011
Journal title
JOURNAL OF APPLIED STATISTICS
Record number
712682
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