MULTI-OBJECTIVE SIMULATION OPTIMIZATION: A CASE STUDY IN HEALTHCARE MANAGEMENT

Authors

  • Felipe E Baesler Department ofIndustrial Engineering Universidad del BioBio
  • Jose A Sepulveda Department of Industrial Engineering and Management Systems University of Central Florida

DOI:

https://doi.org/10.23055/ijietap.2006.13.2.433

Keywords:

Simulation, Optimization, Multi-Objective, Genetic Algorithms, Healthcare

Abstract

This study presents an approach to solve multi-response simulation optimization problems. This approach integrates a

simulation model with a genetic algorithm heuristic and a goal programming model. This method was modified to perform

the search considering the mean and the variance of the responses. This way, the selection process of the genetic algorithm

is performed stochastically, and not deterministically like most of the approaches reported in the literature. The

methodology was tested using a simulation model of a cancer treatment facility created by the authors. The multi-objective

optimization heuristic was successfully used to improve the performance of the model relative to four different system

objectives. Empirical results show that the methodology is capable of generating an important part of the Pareto optimal

'frontier, mostly concentrated in the center portion, where practical solutions are generally located.

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Published

2022-02-24

How to Cite

Baesler, F. E., & Sepulveda, J. A. (2022). MULTI-OBJECTIVE SIMULATION OPTIMIZATION: A CASE STUDY IN HEALTHCARE MANAGEMENT. International Journal of Industrial Engineering: Theory, Applications and Practice, 13(2), 156–165. https://doi.org/10.23055/ijietap.2006.13.2.433

Issue

Section

Modelling and Simulation