Article ID: | iaor20071512 |
Country: | Germany |
Volume: | 2 |
Issue: | 1 |
Start Page Number: | 57 |
End Page Number: | 82 |
Publication Date: | Jan 2005 |
Journal: | Computational Management Science |
Authors: | Gerdes M., Barth T., Grauer M. |
Keywords: | neural networks |
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 therefore an important task in the development of adequate distributed approaches taking into account the numerical algorithm, its implementation, and the used hardware architecture. In this paper, simulation-based optimization problems are characterized and a distributed solution algorithm is presented. Different performance analysis techniques (e.g. scalability analysis, computational complexity) are discussed and a new approach integrating parallel performance and solution quality is developed. This approach combines