Cockroach Swarm Optimization Using A Neighborhood-Based Strategy

Cockroach Swarm Optimization Using A Neighborhood-Based Strategy

Le Cheng1,2, Yanhong Song1, and Yuetang Bian3

1College of Computer and Communication Engineering, Huaian Vocational College of Information Technology, China

2College of Computer and Information, Hohai University, China

3School of Business, Nanjing Normal University, China

Abstract: The original Cockroach Swarm Optimization (CSO) algorithm suffers from the problems of slow or premature convergence. This paper described a new cockroach-inspired algorithm, which is called CSO with Global and Local neighborhoods (CSOGL). In CSOGL, two kinds of neighborhood models are designed, in order to increase the diversity of promising solution. Based on above two neighborhood models, two kinds of novel chase-swarming behaviors are proposed and applied to CSOGL. Moreover, this paper also provides a formal convergence proof for the CSOGL algorithm. The comparison results show that the CSOGL algorithm outperform the existing cockroach-inspired algorithms.

Keywords: Cockroach swarm optimization, cockroach-inspired algorithm, CSO with global and local neighborhoods, premature convergence.

Received January 24, 2016; accepted June 13, 2017

Full Text   

Read 3033 times Last modified on Sunday, 23 June 2019 07:39
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…