Title of article
Minimizing binary functions with simulated annealing algorithm with applications to binary tomography Original Research Article
Author/Authors
Xuesong Li، نويسنده , , Lin Ma، نويسنده ,
Issue Information
ماهنامه با شماره پیاپی سال 2012
Pages
7
From page
309
To page
315
Abstract
The minimization of binary functions finds many applications in practice, and can be solved by the simulated annealing (SA) algorithm. However, the SA algorithm is designed for general combinatorial problems, not specifically for binary problems. Consequently, a direct application of the SA algorithm might not provide optimal performance and efficiency. Therefore, this study specifically investigated the performance of various implementations of the SA algorithm when applied to binary functions. Results obtained in this investigation demonstrated that 1) the SA algorithm can reliably minimize difficult binary functions, 2) a simple technique, analogous to the local search technique used in minimizing continuous functions, can exploit the special structure of binary problems and significantly improve the solution with negligible computational cost, and 3) this technique effectively reduces computational cost while maintaining reconstruction fidelity in binary tomography problems. This study also developed two classes of binary functions to represent the typical challenges encountered in minimization.
Keywords
Binary function , Simulated annealing , Discrete tomography
Journal title
Computer Physics Communications
Serial Year
2012
Journal title
Computer Physics Communications
Record number
1138487
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