Take a sneak peek at the new NIST.gov and let us know what you think!
(Please note: some content may not be complete on the beta site.).
NIST Authors in Bold
|Author(s):||Jean-Louis Vigouroux; Laurent Deshayes; Sebti Foufou; James J. Filliben; Lawrence A. Welsch; M A. Donmez;|
|Title:||Robust Design of an Evolutionary Algorithm for Machining Optimization Problems|
|Abstract:||In this paper, a methodology for the robust design of an evolutionary algorithm is presented. The evolutionary algorithm (EA) is studied with the intention to solve machining optimization problems having highly non linear constraints and uncertainties. A turning optimization problem, solved previously with classic optimization algorithms, serves as a basis for the investigation of the EA. The parameters of the problem now can be modified in a certain range, and statistical engineering methods are used to find a unique set of algorithm parameters giving robust results.|
|Citation:||Journal of Computing and Information Science in Engineering|
|Keywords:||evolutionary algorithms,experimental algorithmics,optimization of machining parameters|