Optimal model-based decomposition of powertrain system design

被引:0
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作者
Michelena, N.F. [1 ]
Papalambros, P.Y. [1 ]
机构
[1] Univ of Michigan, Ann Arbor, United States
关键词
Algorithms - Computational complexity - Computer simulation - Constraint theory - Graph theory - Large scale systems - Mathematical models - Nonlinear programming - Optimization - Railroad cars;
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摘要
Optimal design of large engineering systems modeled as nonlinear programming problems remains a challenge because increased size reduces reliability and speed of numerical optimization algorithms. Decomposition of the original model into smaller coordinated submodel is desirable or even necessary. The article presents a methodology for optimal model-based decomposition of design problems, whether or not initially cast as optimization models. The overall model is represented by a hypergraph that is optimally partitioned into weakly-connected subgraphs satisfying partitioning constraints. The formulation is robust enough to account for computational demands and resources, and the strength of interdependencies between the design relations contained in the model. This decomposition methodology is applied to a vehicle powertrain system design model consisting of engine, torque converter, transmission, and wheel-tire assemblies, with 87 design relations and 119 design and state/behavior variables.
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页码:499 / 505
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