A Dual Sequence Simulated Annealing Algorithm for Constrained Optimization

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Date

2007

Authors

Ozdamar L.

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Volume Title

Publisher

Open Access Color

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Abstract

We propose a dual sequence Simulated Annealing algorithm, DSAC, for solving constrained optimization problems. This approach eliminates the need for imposing penalties in the objective function by tracing feasible and infeasible solution sequences independently. We compare DSAC with a similar single sequence algorithm, PSAC, where the objective function is augmented by various penalty forms related to constraint infeasibilities. Numerical experiments show that DSAC is more effective than its counterpart PSAC in the worst and average case performances.

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Keywords

Constrained optimization, Feasible and infeasible solution sequences, Local search, Penalties, Simulated annealing, Algorithms, Constraint theory, Problem solving, Simulated annealing, Constrained optimization, Dual sequence simulated annealing algorithm, Local search, Optimization

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Citation

WoS Q

N/A

Scopus Q

Q4

Source

WSEAS Transactions on Mathematics

Volume

6

Issue

2

Start Page

381

End Page

388
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