Optimization of High-dimensional Simulation Models Using Synthetic Data
- URL: http://arxiv.org/abs/2009.02781v1
- Date: Sun, 6 Sep 2020 17:21:41 GMT
- Title: Optimization of High-dimensional Simulation Models Using Synthetic Data
- Authors: Thomas Bartz-Beielstein, Eva Bartz, Frederik Rehbach, Olaf Mersmann
- Abstract summary: We introduce the BuB simulator, which requires only the specification of plausible intervals for the simulation parameters.
A detailed statistical analysis can be performed, which allows deep insights into the most important model parameters.
The study explicitly covers difficulties caused by the COVID-19 pandemic.
- Score: 0.1529342790344802
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Simulation models are valuable tools for resource usage estimation and
capacity planning. In many situations, reliable data is not available. We
introduce the BuB simulator, which requires only the specification of plausible
intervals for the simulation parameters. By performing a surrogate-model based
optimization, improved simulation model parameters can be determined.
Furthermore, a detailed statistical analysis can be performed, which allows
deep insights into the most important model parameters and their interactions.
This information can be used to screen the parameters that should be further
investigated. To exemplify our approach, a capacity and resource planning task
for a hospital was simulated and optimized. The study explicitly covers
difficulties caused by the COVID-19 pandemic. It can be shown, that even if
only limited real-world data is available, the BuB simulator can be
beneficially used to consider worst- and best-case scenarios. The BuB simulator
can be extended in many ways, e.g., by adding further resources (personal
protection equipment, staff, pharmaceuticals) or by specifying several cohorts
(based on age, health status, etc.).
Keywords: Synthetic data, discrete-event simulation, surrogate-model-based
optimization, COVID-19, machine learning, artificial intelligence, hospital
resource planning, prediction tool, capacity planning.
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