Novelty search for global optimization

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摘要

Novelty search is a tool in evolutionary and swarm robotics for maintaining the diversity of population needed for continuous robotic operation. It enables nature-inspired algorithms to evaluate solutions on the basis of the distance to their k-nearest neighbors in the search space. Besides this, the fitness function represents an additional measure for evaluating the solution, with the purpose of preserving the so-named novelty solutions into the next generation. In this study, a differential evolution was hybridized with novelty search. The differential evolution is a well-known algorithm for global optimization, which is applied to improve the results obtained by the other solvers on the CEC-14 benchmark function suite. Furthermore, functions of different dimensions were taken into consideration, and the influence of the various novelty search parameters was analyzed. The results of experiments show a great potential for using novelty search in global optimization.

论文关键词:Novelty search,Differential evolution,Swarm intelligence,Evolutionary robotics,Artificial life

论文评审过程:Received 27 September 2018, Revised 12 November 2018, Accepted 20 November 2018, Available online 5 December 2018, Version of Record 5 December 2018.

论文官网地址:https://doi.org/10.1016/j.amc.2018.11.052