Simulation optimization research and development
Royce O. Bowden,John D. Hall +1 more
- 01 Dec 1998
- Vol. 2, pp 1693-1698
TL;DR: Six domains that are common to any automated simulation optimization tool are identified and are the cornerstones for a unified strategy for simulation optimization and should guide future research in the field and development of next generation simulation optimization tools.
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Abstract: Simulation optimization is rapidly becoming a mainstream tool for simulation practitioners. Simulation optimization is the practice of linking an optimization method with a simulation model to determine appropriate settings of certain input parameters so as to maximize the performance of the simulated system. Requirements for an automated simulation optimization tool for practitioners were formulated in the early 1970s and the first widely used commercial product appeared in 1995. The paper identifies six domains that are common to any automated simulation optimization tool. The domains are Methods, Classification, Strategy and Tactics, Intelligence, Interfaces, and Problem Formulation. These domains are the cornerstones for a unified strategy for simulation optimization and should guide future research in the field and development of next generation simulation optimization tools. This paper describes the six domains, presents recent research, and discusses research issues for two-phased optimization techniques.
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Citations
A mesh adaptive direct search algorithm for multiobjective optimization
TL;DR: In this paper, a new algorithm called M ulti M ads (multiobjective mesh adaptive direct search) for MOP is proposed, which generates an approximation of the Pareto front by solving a series of single-objective formulations of MOP.
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A survey of recent advances in discrete input parameter discrete-event simulation optimization
TL;DR: This paper presents a survey of the literature on discrete-event simulation optimization published in recent years, with a particular focus on discrete input parameter optimization.
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Future of simulation optimization
Justin Boesel,Royce O. Bowden,Fred Glover,James P. Kelly,E. Westwig +4 more
- 01 Jan 2001
TL;DR: This panel, which includes developers of simulation-optimization packages, will discuss this untapped potential, barriers to broader applicability, and approaches for overcoming these barriers.
Simulation Optimization: A Review on Theory and Applications
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TL;DR: A tutorial introduction and review of simulation optimization are given and some important techniques for simulation optimize are discussed in detail, including their principles, implementation procedures, advantages and disadvantages, and applications.
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Studying Lean-Kanban Approach Using Software Process Simulation
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