Genetic Algorithm Optimisation of a TNT Solidification Model
Author(s) -
Çiğdem Susantez,
Aldélio Bueno Caldeira
Publication year - 2019
Publication title -
defence science journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.198
H-Index - 32
eISSN - 0976-464X
pISSN - 0011-748X
DOI - 10.14429/dsj.69.14037
Subject(s) - multiphysics , genetic algorithm , fitness function , matlab , work (physics) , nanofluid , mathematics , algorithm , inverse , process (computing) , computer science , software , mathematical optimization , mechanical engineering , mechanics , engineering , finite element method , heat transfer , physics , structural engineering , geometry , programming language , operating system
The control of the solidification process of energetic materials is important to prevent manufacturing defects in high explosive ammunitions. The present work aims to propose an optimisation procedure to determine the value of the model parameter, avoiding the traditional trial and error approach. In this work, the solidification of TNT has been numerically modelled employing apparent heat capacity method and the model parameter was optimised using genetic algorithm. One dimensional numerical model has been solved in Comsol Multiphysics Modeling Software and the genetic algorithm code was written in Matlab. The Neumann’s analytical solution of the solidification front was used as a reference to build the fitness function, following the inverse problems concepts. The optimum model parameter has been predicted after 20 generations and among 30 candidate solutions for each generation. The numerical solution performed with the optimised model parameter has agreed with the analytical solution, indicating the feasibility of the proposed procedure. The discrepancy was 3.8 per cent when maximum difference between analytical and numerical solutions was observed.
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