Artificial Immune Clonal Selection Algorithms: A Comparative Study of CLONALG, opt-IA, and BCA with Numerical Optimization Problems
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چکیده
This paper presents a comparative study the performance of three important Clonal Selection Algorithms (CSAs): CLONALG, optIA, and BCA with numerical optimization problems. Four possible versions of CLONALG have been tested. The experimental results show a global better performance of BCA with respect to CLONALG and opt-IA.
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تاریخ انتشار 2010