Artificial bee colony (ABC) algorithm is a new global stochastic optimization algorithm
which mimics the intelligent behavior of honeybee swarms.It has been used to solve various optimization problems successfully.In order to further improve the performance of artificial bee colony algorithm
a mind evolutionary artificial bee colony algorithm (MEABC) based on the idea of mind evolutionary is proposed.Two strategies based on opposition learning and dimension updating are applied to MEABC algorithm
and the convergence of the MEABC algorithm is analyzed.Experimental results on four benchmark functions show that the MEABC algorithm can effectively avoid the premature convergence
greatly enhance the global optimization ability and improve the convergence speed.
HMM Structure Optimization Based on Genetic Nonparametric MDL-BW Method
An Analysis on Convergence and Convergence Rate Estimate of Genetic Algorithms in Noisy Environments
Variable Step-Size Blind Source Separation Algorithm with an Auxiliary Separation System
Differential Evolution Without the Scale Factor F
Genetic-Algorithm-Based Model Parameter Extraction for Sub-100nm SOI MOSFET
Related Author
XU Jia-wei
LUO Qian
LI Jun-hua
LI Ming
OU Shi-feng
ZHAO Xiao-hui
GAO Ying
ZHANG Xiao-wei
Related Institution
College of Information and Communication Engineering, Beijing Information Science & Technology University
Key Laboratory of the Ministry of Education for Optoelectronic Measurement Technology and Instrument, Beijing Information Science & Technology University
Key Laboratory of Nondestructive Testing (Ministry of Education), Nanchang Hangkong University
Laboratory of Information ScienceCollege of Communication EngineeringJilin UniversityChangchunJilin 130012China
Institute of Science and Technology for Opto-electronic InformationYantai UniversityYantaiShandong 264005China