Bifurcation Analysis and Multiobjective Nonlinear Model Predictive Control of Drug Addiction Models

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Lakshmi N Sridhar*

Abstract

Abstract


Bifurcation analysis and nonlinear model predictive control were performed on drug addiction models. Rigorous proof showing the existence of bifurcation (branch) points is presented along with computational validation. It is also demonstrated (both numerically and analytically) that the presence of the branch points was instrumental in obtaining the Utopia solution when the multiobjective nonlinear model prediction calculations were performed. Bifurcation analysis was performed using the MATLAB software MATCONT while the multi-objective nonlinear model predictive control was performed by using the optimization language PYOMO.

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Lakshmi N Sridhar*. (2024). Bifurcation Analysis and Multiobjective Nonlinear Model Predictive Control of Drug Addiction Models. Journal of Cardiovascular Medicine and Cardiology, 11(4), 096–102. https://doi.org/10.17352/2455-2976.000215
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Copyright (c) 2024 Sridhar LN.

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