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Solution to the quadratic assignment problem usingsemi-Lagrangian relaxation
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作者 huizhen zhang cesar beltran-royo +2 位作者 bo wang liang ma ziying zhang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2016年第5期1063-1072,共10页
The semi-Lagrangian relaxation (SLR), a new exactmethod for combinatorial optimization problems with equality constraints,is applied to the quadratic assignment problem (QAP).A dual ascent algorithm with finite co... The semi-Lagrangian relaxation (SLR), a new exactmethod for combinatorial optimization problems with equality constraints,is applied to the quadratic assignment problem (QAP).A dual ascent algorithm with finite convergence is developed forsolving the semi-Lagrangian dual problem associated to the QAP.We perform computational experiments on 30 moderately difficultQAP instances by using the mixed integer programming solvers,Cplex, and SLR+Cplex, respectively. The numerical results notonly further illustrate that the SLR and the developed dual ascentalgorithm can be used to solve the QAP reasonably, but also disclosean interesting fact: comparing with solving the unreducedproblem, the reduced oracle problem cannot be always effectivelysolved by using Cplex in terms of the CPU time. 展开更多
关键词 quadratic assignment problem (QAP) semi-Lagrangian relaxation (SLR) Lagrangian relaxation dual ascentalgorithm.
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