An enhancement of constraint feasibility in BPN based approximate optimization

Volume: 196, Issue: 17-20, Pages: 2147 - 2160
Published: Mar 1, 2007
Abstract
Back-propagation neural networks (BPN) have been extensively used as global approximation tools in the context of approximate optimization. A traditional BPN is normally trained by minimizing the absolute difference between target outputs and approximate outputs. When BPN is used as a meta-model for inequality constraint function, approximate optimal solutions are sometimes actually infeasible in a case where they are active at the constraint...
Paper Details
Title
An enhancement of constraint feasibility in BPN based approximate optimization
Published Date
Mar 1, 2007
Volume
196
Issue
17-20
Pages
2147 - 2160
Citation AnalysisPro
  • Scinapse’s Top 10 Citation Journals & Affiliations graph reveals the quality and authenticity of citations received by a paper.
  • Discover whether citations have been inflated due to self-citations, or if citations include institutional bias.