会议专题

Data Driven Multivariate Adaptive Regression Splines Based Simulation Optimization

  This paper proposes a data driven based optimization approach which combines augmented Lagrangian method,MARS with effective data processing.In the approach,an expensive simulation run is required if and only if a nearby data point does not exist in the cumulatively growing database.Over time the database matures and is enriched as more and more optimizations have been performed.MARS is a self-adaptive regression process,which fits in with the multidimensional problems,and uses a modified recursive partitioning strategy to simplify high-dimensional problems into smaller yet highly accurate models.Combining the local response surface of MARS and augmented Lagrangian method improve sequential approximation optimization and reduce simulation times by effective data processing,yet maintain a low computational cost.The approach is applied to a six dimensional test function,a ten dimensional engineering problem and a two dimensional global test functions to demonstrate its feasibility and convergence,and yet some limiting properties.

Data driven Multivariate adaptive regression splines (MARS) Simulation optimization Augmented Lagrangian method Trust region

MAO Huping WU Yizhong CHEN Liping

National CAD Supported Software Engineering Centre of Huazhong University of Science & Technology, W National CAD Supported Software Engineering Centre of Huazhong University of Science & Technology, W

国际会议

the 2010 International Conference on Frontiers of Manufacturing and Design Science(第一届制造与设计科学国际会议(ICFMD 2010))

重庆

英文

3800-3806

2010-12-11(万方平台首次上网日期,不代表论文的发表时间)