Title of article :
A study on the optimization of integral fuel burnable absorbers using the genetic algorithm based cigaro fuel management system
Author/Authors :
Haibach، نويسنده , , Brian Vincent; Feltus، نويسنده , , Madeline A، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1997
Abstract :
The CIGARO fuel management code, a genetic algorithm based
optimization code developed by DeChaine was used in conjunction with
deterministic studies to optimize Integral Fuel Burnable Absorbers (lFBA)
assembly designs for Pressurized Water Reactors (PWRs). Penn Stateʹs IFBA
assembly designs were compared to typical Westinghouse IFBA assembly
designs of 64, 80, and 160 IFBA pins per assembly. The goal of this research is
to load the core with various IFBA pin enrichments and various IFBA
assembly designs to determine whether the IFBA pin configurations developed
by the authors or those typically used by the vendor produce the best core
performance when a real depletion is simulated. To further test the Penn State
IFBA designs, a benchmark core loading modeled after Beaver Valley Cycle 10
was optimized with the CIGARO genetic algorithm code. When incorporated
in a real depletion using CASMO-3 and SIMULATE-3 the Penn State and
vendorʹs 64 IFBA) assembly designs with 2.5 wt% lOB and 1.875 wt% lOB,
respectively, indicated good performance in terms of maximum core Normalized
Power (NP) during depletion. All of the Penn State 80 IFBA assembly
designs developed showed good performance in terms of maximum core NP
during depletion. The vendorʹs 80 IFBA assembly with 1.25 wt% boron was
very comparable to the Penn State 80 IFBA assembly design with 1.25 wt%
boron in terms of NP performance. The core loadings generated by the
CIGARO code provides evidence that optimizing BP placement directly by the
Haling method predictions is not the most advantageous solution; however,
the Haling method does provide a very good starting point to determine the
number of IFBA assemblies needed in a core loading. This research advances
the CIGARO optimization tool by including IFBA loading evaluations
directly without any Haling Principle approximations
Journal title :
Annals of Nuclear Energy
Journal title :
Annals of Nuclear Energy