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2018-Akman-EtAl-Parameter Estimation in Ordinary Differential Equations Modeling via Particle Swarm Optimization

Author(s): Devin Akman1, Olcay Akman1, Elsa Schaefer1

NA

Keywords: epidemic Particle Swarm Optimization optimize parameters

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Abstract

Resource Image We demonstrate Particle Swarm Optimization efficacy by showing that it outstrips evolutionary computing methods previously used to analyze an epidemic model.

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Akman, Devin, Olcay Akman, and Elsa Schaefer. 2018.  Parameter Estimation in Ordinary Differential Equations Modeling via Particle Swarm Optimization. Journal of Applied Mathematics. Volume 2018. pp 1-10.

See https://econpapers.repec.org/article/hinjnljam/9160793.htm . Accessed 29 March 2023.

Abstract: Researchers using ordinary differential equations to model phenomena face two main challenges among others: implementing the appropriate model and optimizing the parameters of the selected model. The latter often proves difficult or computationally expensive. Here, we implement Particle Swarm Optimization, which draws inspiration from the optimizing behavior of insect swarms in nature, as it is a simple and efficient method for fitting models to data. We demonstrate its efficacy by showing that it outstrips evolutionary computing methods previously used to analyze an epidemic model.

 

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Authors

Author(s): Devin Akman1, Olcay Akman1, Elsa Schaefer1

NA

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