2014
DOI: 10.1007/978-3-662-45261-5_5
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A Novel Learning Algorithm for Pallet Grouping Technology

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“…The following is the 2NN MEAM potential formulaE=i[ Fi(ρi)+12j(i)ϕij(Rij) ]where F is the embedding energy, which is a function of the atomic electron density ρi¯, and ϕij is the pair potential interaction. Because cross‐element parameters of 2NN MEAM potential among Nb, Mo, Ta, W, and V are not available, the parametrization by the local global search combine particle swarm optimization (LGSCPSO) [ 22 ] was used to determine the 2NN MEAM parameters for the Nb–Mo–Ta–W–V system. First, the interaction energy of atoms and the energy of the system are calculated by the DFT, and then the target function is established by using the DFT results.…”
Section: Simulation Methodsmentioning
confidence: 99%
“…The following is the 2NN MEAM potential formulaE=i[ Fi(ρi)+12j(i)ϕij(Rij) ]where F is the embedding energy, which is a function of the atomic electron density ρi¯, and ϕij is the pair potential interaction. Because cross‐element parameters of 2NN MEAM potential among Nb, Mo, Ta, W, and V are not available, the parametrization by the local global search combine particle swarm optimization (LGSCPSO) [ 22 ] was used to determine the 2NN MEAM parameters for the Nb–Mo–Ta–W–V system. First, the interaction energy of atoms and the energy of the system are calculated by the DFT, and then the target function is established by using the DFT results.…”
Section: Simulation Methodsmentioning
confidence: 99%