Sciweavers

ASC
2006

Simulation-based optimisation using local search and neural network metamodels

14 years 2 months ago
Simulation-based optimisation using local search and neural network metamodels
This paper presents a new algorithm for enhancing the efficiency of simulation-based optimisation using local search and neural network metamodels. The local search strategy is based on steepest ascent Hill Climbing. In contrast to many other approaches that use a metamodel for simulation optimisation, this algorithm alternates between the metamodel and its underlying simulation model, rather than using them sequentially. On-line learning of the metamodel is applied to improve its accuracy in the current region of the search space. The proposed algorithm is applied to a theoretical benchmark problem as well as a real-world manufacturing optimisation problem and initial results show good performance when compared to a standard Hill Climbing strategy. KEY WORDS Optimisation, Simulation, Local Search, Metamodel, Neural Network
Anna Persson, Henrik Grimm, Amos Ng
Added 30 Oct 2010
Updated 30 Oct 2010
Type Conference
Year 2006
Where ASC
Authors Anna Persson, Henrik Grimm, Amos Ng
Comments (0)