Stochastic level-set method for shape optimisation
Abstract
We present a new method for stochastic shape optimisation of engineering structures. The method generalises an existing deterministic scheme, in which the structure is represented and evolved by a level-set method coupled with mathematical programming. The stochastic element of the algorithm is built on the methods of statistical mechanics and is designed so that the system explores a Boltzmann-Gibbs distribution of structures. In non-convex optimisation problems, the deterministic algorithm can get trapped in local optima: the stochastic generalisation enables sampling of multiple local optima, which aids the search for the globally-optimal structure. The method is demonstrated for several simple geometrical problems, and a proof-of-principle calculation is shown for a simple engineering structure.
Cite
@article{arxiv.1612.04681,
title = {Stochastic level-set method for shape optimisation},
author = {Lester O. Hedges and H. Alicia Kim and Robert L. Jack},
journal= {arXiv preprint arXiv:1612.04681},
year = {2017}
}
Comments
17 pages, 10 figs