Simheuristics applications: Dealing with uncertainty in logistics, transportation, and other supply chain areas

Other authors

Juan Pérez, Ángel Alejandro

Kelton, W. David

Currie, Christine S. M.

Faulin Fajardo, Francisco Javier

Publication date

2019-07-22T09:01:23Z

2019-07-22T09:01:23Z

2019-01-31



Abstract

Optimization problems arising in real-life transportation and logistics need to consider uncertainty conditions (e.g., stochastic travel times, etc.). Simulation is employed in the analysis of complex systems under such non-deterministic environments. However, simulation is not an optimization tool, so it needs to be combined with optimization methods whenever the goal is to: (i) maximize the system performance using limited resources; or (ii) minimize its operations cost while guaranteeing a given quality of service. When the underlying optimization problem is NP-hard, metaheuristics are required to solve large-scale instances in reasonable computing times. Simheuristics extend metaheuristics by adding a simulation layer that allows the optimization component to deal with scenarios under uncertainty. This paper reviews both initial as well as recent applications of simheuristics, mainly in the area of logistics and transportation. The paper also discusses current trends and open research lines in this field.

Document Type

Working document

Language

English

Subjects and keywords

Transportation; Transport; Transporte

Publisher

Winter Simulation Conference (WSC). Proceedings

Related items

https://www.informs-sim.org/wsc18papers/includes/files/268.pdf

Rights

(c) Journal

This item appears in the following Collection(s)

Articles [361]