10.5120/17559-8172 |
Md. Wasi Ul Kabir and Mohammad Shafiul Alam. Article: Bat Algorithm with Self-adaptive Mutation: A Comparative Study on Numerical Optimization Problems. International Journal of Computer Applications 100(10):7-13, August 2014. Full text available. BibTeX
@article{key:article, author = {Md. Wasi Ul Kabir and Mohammad Shafiul Alam}, title = {Article: Bat Algorithm with Self-adaptive Mutation: A Comparative Study on Numerical Optimization Problems}, journal = {International Journal of Computer Applications}, year = {2014}, volume = {100}, number = {10}, pages = {7-13}, month = {August}, note = {Full text available} }
Swarm intelligence is an emerging research field that tries to mimic the collective intelligent behavior found in swarms of insects and animals. Many algorithms have been proposed that simulate these intelligent swarm models to solve a wide range of scientific and engineering problems. The Bat algorithm is one of the most recent swarm intelligence based algorithms that simulates the intelligent hunting behavior of the bats found in nature. In this paper, we present an improved self-adaptive Bat algorithm (BA SAM) for the problem of global numerical optimization over continuous domains. We have introduced two improved solution search equations — the BA/Normal/1 and BA/Cauchy/1 schemes. We have also used a selection probability to control the frequency of employing BA/Normal/1 and BA/Cauchy/1, which leads to a new self-adaptive search mechanism for the Bat algorithm. Experiments are conducted on both unimodal and multimodal continuous benchmark functions. The results demonstrate the improved performance of the BA SAM algorithm in comparison to the original Bat algorithm and another recently introduced improved variant of the Bat algorithm.