Some guidelines for genetic algorithms with penalty functions
Proceedings of the third international conference on Genetic algorithms
New ideas in optimization
Using Genetic Algorithms in Engineering Design Optimization with Non-Linear Constraints
Proceedings of the 5th International Conference on Genetic Algorithms
Proceedings of the 5th International Conference on Genetic Algorithms
Reaction-Diffusion Model of a Honeybee Colony's Foraging Behaviour
PPSN VI Proceedings of the 6th International Conference on Parallel Problem Solving from Nature
Co-evolutionary Constraint Satisfaction
PPSN III Proceedings of the International Conference on Evolutionary Computation. The Third Conference on Parallel Problem Solving from Nature: Parallel Problem Solving from Nature
Constrained optimization via particle evolutionary swarm optimization algorithm (PESO)
GECCO '05 Proceedings of the 7th annual conference on Genetic and evolutionary computation
Evolutionary algorithms, homomorphous mappings, and constrained parameter optimization
Evolutionary Computation
Evolutionary algorithms for constrained parameter optimization problems
Evolutionary Computation
Search biases in constrained evolutionary optimization
IEEE Transactions on Systems, Man, and Cybernetics, Part C: Applications and Reviews
Stochastic ranking for constrained evolutionary optimization
IEEE Transactions on Evolutionary Computation
Artificial bee colony algorithm for the capacitated vehicle routing problem
ECC'11 Proceedings of the 5th European conference on European computing conference
Information Sciences: an International Journal
Parallelized cuckoo search algorithm for unconstrained optimization
BICA'12 Proceedings of the 5th WSEAS congress on Applied Computing conference, and Proceedings of the 1st international conference on Biologically Inspired Computation
Swarm intelligence approaches to estimate electricity energy demand in Turkey
Knowledge-Based Systems
Identification of structural models using a modified Artificial Bee Colony algorithm
Computers and Structures
Comparing particle swarm optimization variants for a cognitive radio network
Applied Soft Computing
An artificial bee colony algorithm for the maximally diverse grouping problem
Information Sciences: an International Journal
Constrained optimisation and robust function optimisation with EIWO
International Journal of Bio-Inspired Computation
Artificial bee colony algorithm: a survey
International Journal of Advanced Intelligence Paradigms
A novel artificial bee colony algorithm with Powell's method
Applied Soft Computing
An upgraded artificial bee colony (ABC) algorithm for constrained optimization problems
Journal of Intelligent Manufacturing
A new algorithm inspired in the behavior of the social-spider for constrained optimization
Expert Systems with Applications: An International Journal
A hybrid metaheuristic for the cyclic antibandwidth problem
Knowledge-Based Systems
Integrating the artificial bee colony and bees algorithm to face constrained optimization problems
Information Sciences: an International Journal
Synchronous and asynchronous Pareto-based multi-objective Artificial Bee Colony algorithms
Journal of Global Optimization
Computational Optimization and Applications
Hi-index | 0.01 |
Abstract: Artificial Bee Colony (ABC) algorithm was firstly proposed for unconstrained optimization problems on where that ABC algorithm showed superior performance. This paper describes a modified ABC algorithm for constrained optimization problems and compares the performance of the modified ABC algorithm against those of state-of-the-art algorithms for a set of constrained test problems. For constraint handling, ABC algorithm uses Deb's rules consisting of three simple heuristic rules and a probabilistic selection scheme for feasible solutions based on their fitness values and infeasible solutions based on their violation values. ABC algorithm is tested on thirteen well-known test problems and the results obtained are compared to those of the state-of-the-art algorithms and discussed. Moreover, a statistical parameter analysis of the modified ABC algorithm is conducted and appropriate values for each control parameter are obtained using analysis of the variance (ANOVA) and analysis of mean (ANOM) statistics.