Title of article :
Inversion of tantalum micromechanical powder consolidation and sintering models using bayesian inference and genetic algorithms Original Research Article
Author/Authors :
Brian J. Reardon، نويسنده , , Sherri R. Bingert، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2000
Abstract :
A Bayesian enhanced genetic algorithm (GA) addresses the inverse and ill-posed problem of optimizing the 19 parameters of micromechanical powder densification models for tantalum using limited and uncertain data sets that leave the optimization problem underdetermined. Additionally, the posterior probability density evolved by the GA provides a parameter sensitivity analysis as well as a guide to experimental design which significantly assists in the development of accurate models with a minimum of experimentation.
Keywords :
Genetic algorithms , computer simulation , Hot isostatic pressing (HIP) , Powder consolidation , Sintering
Journal title :
ACTA Materialia
Journal title :
ACTA Materialia