Systems and methods may include identifying an input population of parent epsilon chromosome data structures; combining genes of each selected pair of parent epsilon chromosome data structures according to at least one evolutionary operator to generate a plurality of child epsilon chromosome data structures, each child epsilon chromosome data structure providing one or more genes each having a respective candidate epsilon value representing a respective step size or spacing for the respective problem objective; and evaluating each of the plurality of child epsilon chromosome data structures according to one or more epsilon objective functions to generate respective epsilon objective function values for each child epsilon chromosome data structure, where each epsilon objective function is associated with a respective goal associated with at least one a priori criterion, where each respective epsilon objective function value indicates an extent to which each respective goal can be achieved.
Novel Method for Auto-adaptive Control Over the Converged Result for Multi-dimensional Optimization
Novel Method for Auto-adaptive Control Over the Converged Result for Multi-dimensional Optimization
Issue
Date
Publication Date
Patent No.
8,862,627
Category
Algorithm and Method
Keywords: GRIPS
International Class: G06N3/12, G06F17/30