• Corpus ID: 14790038

Adjusted artificial bee colony (ABC) algorithm for engineering problems

@inproceedings{Tuba2012AdjustedAB,
  title={Adjusted artificial bee colony (ABC) algorithm for engineering problems},
  author={Milan Tuba and Neboj{\vs}a Ba{\vc}anin and Nadezda Stanarevic},
  year={2012}
}
In this paper we present a modified algorithm which integrates artificial bee colony (ABC) algorithm with adaptive guidance adjusted for constrained engineering optimization problems. The novel algorithm improves best found solutions in some cases and improves robustness i.e. mean value and variance for number of runs in other cases by improving the algorithm's exploitation/exploration balance. Even though scout bee phase is used for exploration, we introduced adaptive parameter that at… 

Figures and Tables from this paper

Artificial Bee Colony ( ABC ) Algorithm with Crossover and Mutation
TLDR
Modifications to the ABC algorithm based on genetic algorithm (GA) crossover and mutation operators applied to the creation of new candidate solutions improved performance of the algorithm, tested on standard constrained optimization benchmark functions.
A Comprehensive Survey on Variants in Artificial Bee Colony ( ABC )
TLDR
An overview of Artificial Bee Colony (ABC) algorithm and advances in ABC algorithm is provided and the neighbourhood search strategy is employed in order to find better solution around the previous one.
Constrained portfolio selection using artificial bee colony ( ABC ) algorithm
TLDR
Artificial bee colony (ABC) swarm intelligence metaheuristic for solving constrained portfolio optimization problem is presented and it is shown that the ABC algorithm obtains satisfying results.
Improved seeker optimization algorithm-based on artificial bee colony algorithm for solving optimal reactive power dispatch problem
TLDR
This paper proposes hybridization of the seeker optimization algorithm with artificial bee colony (ABC) algorithm, and modify seeker’s location by search principles from the ABC algorithm and also adjust the intersubpopulation learning phase by using the binomial crossover operator.
Artificial super-Bee enhanced Colony (AsBeC) algorithm for numerical optimization with limited function evaluations Part 1: technologies and benchmark validation
TLDR
The present article explores all the technical issues involved about AsBeC and will consider a real-like application to the engineering optimal design of turbomachinery through Computational Fluid Dynamics, environment in which the improved algorithm was originally conceived by the authors.
Hybridized Fireworks Algorithm for Global Optimization
TLDR
Preliminary results show that the hybridized fireworks algorithm has a potential when dealing with global optimization problems and it is worth of further research.
Hybrid Seeker Optimization Algorithm for Global Optimization
TLDR
Comparisons show that the proposed hybridization of the seeker optimization algorithm with the well known artificial bee colony (ABC) algorithm outperforms six state-of-the-art algorithms in terms of the quality of the resulting solutions as well as robustenss on most of the test functions.
Investigation of Modified Bee Colony Algorithm with Particle and Chaos Theory
TLDR
From the view of improving the convergence rate of the algorithm, search operators have been studied and a faster algorithm has been proposed and according to the example verification, the new algorithm is effective and the algorithm can be used in the optimization field.
Firefly Algorithm with a Feasibility-Based Rules for Constrained Optimization
TLDR
This paper presents firefly algorithm to solve constrained optimization problems, a nature-inspired metaheuristic based on the flashing patterns and behaviour of fireflies that was successfully applied to solve unconstrained optimization problems.
Optimization of Clustering Problem Using Population Based Artificial Bee Colony Algorithm: A Review
TLDR
An extensive (not exhaustive) overview of modification to the original ABC and its application in solving Clustering problems with the expectation that it would serve as a reference material to both old and new, incoming researchers in this field.
...
...

References

SHOWING 1-10 OF 51 REFERENCES
An upgraded artificial bee colony (ABC) algorithm for constrained optimization problems
TLDR
This paper introduces an upgraded artificial bee colony (UABC) algorithm for constrained optimization problems that enhances fine-tuning characteristics of the modification rate parameter and employs modified scout bee phase of the ABC algorithm.
Performance of the improved artificial bee colony algorithm on standard engineering constrained problems
TLDR
An improved version of the artificial bee colony algorithm adjusted for constrained optimization problems is presented and it uses Deb's rule, which shows a very good performance when it was applied to the same problems.
Artificial Bee Colony (ABC) Algorithm for Constrained Optimization Improved with Genetic Operators
TLDR
Modifications to the ABC algorithm for constrained optimization problems that improve performance of the algorithm are introduced based on genetic algorithm (GA) operators and are applied to the creation of new candidate solutions.
Modified artificial bee colony algorithm for constrained problems optimization
TLDR
An improved artificial bee colony algorithm for constrained problems is proposed in a form of ―smart bee‖ (SB) which uses its historical memories for the location and quality of food sources and proved to be better than the original ABC algorithm.
Gbest-guided artificial bee colony algorithm for numerical function optimization
Artificial bee colony algorithm for large-scale problems and engineering design optimization
TLDR
The ABC algorithm is applied to engineering design problems by extending the basic ABC algorithm simply by adding a constraint handling technique into the selection step of the ABC algorithm in order to prefer the feasible regions of entire search space.
Artificial Bee Colony ( ABC ) Algorithm Exploitation and Exploration Balance Milan TUBA
TLDR
In this paper exploitation/exploration balance for the artificial bee colony (ABC) algorithm is examined and some successful modifications that improved algorithm’s performance are described.
Artificial Bee Colony (ABC) Optimization Algorithm for Solving Constrained Optimization Problems
TLDR
The ABC algorithm has been extended for solving constrained optimization problems and applied to a set of constrained problems to show superior performance on these kind of problems.
...
...