Using artificial intelligence algorithms to reconstruct the heat transfer coefficient during heat conduction modeling

Author:

Gawronska Elzbieta,Zych Maria,Dyja Robert,Domek Grzegorz

Abstract

AbstractThe article shows the usage of swarming algorithms for reconstructing the heat transfer coefficient regarding the continuity boundary condition. Numerical calculations were performed using the authors’ own application software with classical forms of swarm algorithms implemented. A functional determining error of the approximate solution was used during the numerical calculations. It was minimized using the artificial bee colony algorithm (ABC) and ant colony optimization algorithm (ACO). The considered in paper geometry comprised a square (the cast) in a square (the casting mold) separated by a heat-conducting layer with the coefficient $$\kappa $$ κ . Due to the symmetry of that geometry, for calculations, only a quarter of the cast-mold system was considered. A Robin’s boundary condition was assumed outside the casting mold. Both regions’ inside boundaries were insulated, but between the regions, a continuity boundary condition with nonideal contact was assumed. The coefficient of the thermally conductive layer was restored using the swarm algorithms in the interval $$900{-}1500 \; [\mathrm{W/m}^{2}\textrm{K} $$ 900 - 1500 [ W / m 2 K ] and compared with a reference value. Calculations were carried out using two finite element meshes, one with 111 nodes and the other with 576 nodes. Simulations were conducted using 15, 17, and 20 individuals in a population with 2 and 6 iterations, respectively. In addition, each scenario also considered disturbances at 0$$\%$$ % , 1$$\%$$ % , 2$$\%$$ % , and 5$$\%$$ % of the reference values. The tables and figures present the reconstructed value of the $$\kappa $$ κ coefficient for ABC and ACO algorithms, respectively. The results show high satisfaction and close agreement with the predicted values of the $$\kappa $$ κ coefficient. The numerical experiment results indicate significant potential for using artificial intelligence algorithms in the context of optimization production processes, analyze data, and make data-driven decisions.

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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