The error of numerical solutions of the IEFG method for different α

The error of numerical solutions of the IEFG method for different α

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In this paper, we considered the improved element-free Galerkin (IEFG) method for solving 2D anisotropic steady-state heat conduction problems. The improved moving least-squares (IMLS) approximation is used to establish the trial function, and the penalty method is applied to enforce the boundary conditions, thus the final discretized equations of...

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... They revealed that PdSe possesses a better optical adsorption ability for visible light (VI) than those of Pd 2 Se 4 and Pd 4 Se 6 monolayers [25]. However, transport properties is an important physical quantities [28,29], and the electrical and thermal transport properties of this new type PdSe monolayer is still unknown and needed to be explored. ...
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... In order to get rid of the complexity of mesh generation and reduce the time of preprocessing, various meshless methods have devoted considerable attention. These approaches include the elementfree Galerkin method [8][9][10][11], the reproducing kernel particle method [12][13][14][15], the meshless local Petrov-Galerkin method [16,17], the radial basis function collocation method (RBFCM) [18,19], the generalized finite difference method (GFDM) [20][21][22][23], the singular boundary method (SBM) [24,25], the method of fundamental solutions (MFS) [26,27] and the boundary knot method (BKM) [28,29], etc. The successful application of these meshless methods fully demonstrates their development prospect. ...
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