2005
DOI: 10.1007/s10287-004-0011-z
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Performance analysis of distributed solution approaches in simulation-based optimization

Abstract: Applying computationally expensive simulations in design or process optimization results in long-running solution processes even when using a state-of-the-art distributed algorithm and hardware. Within these simulation-based optimization problems the optimizer has to treat the simulation systems as black-boxes. The distributed solution of this kind of optimization problem demands efficient utilization of resources (i.e. processors) and evaluation of the solution quality. Analyzing the parallel performance is t… Show more

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Cited by 3 publications
(2 citation statements)
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References 22 publications
(24 reference statements)
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“…In these cases, efficiency in the Monte Carlo approach is still a vital issue. Hence, our goal is to improve the efficiency of simulation and this goal is consistent with others, Berman (1997Berman ( /1998), Nelson and Goldsman (2001), Fu (2002), Boesel et al (2003) and Gerdes et al (2005). In another study Pan, Jarrett and Mangiamelli (2001) explored the use of the geometric distribution to calculate the mean and standard deviation of run length.…”
Section: Introduction and Purposesupporting
confidence: 62%
“…In these cases, efficiency in the Monte Carlo approach is still a vital issue. Hence, our goal is to improve the efficiency of simulation and this goal is consistent with others, Berman (1997Berman ( /1998), Nelson and Goldsman (2001), Fu (2002), Boesel et al (2003) and Gerdes et al (2005). In another study Pan, Jarrett and Mangiamelli (2001) explored the use of the geometric distribution to calculate the mean and standard deviation of run length.…”
Section: Introduction and Purposesupporting
confidence: 62%
“…As explained before, one of the prerequisites of the submodel exploration technique required also for agent identification is a table containing data vectors describing the behaviour of the system concerned. This data set can be collected by production control systems connected to manufacturing equipment or can be typically generated by a simulation model (Gerdes, et al, 2005).…”
Section: Especially Important Is the Main Basis Of The Analogue Namementioning
confidence: 99%