A Gravitational Search Algorithm with Chaotic Neural Oscillators

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Abstract

Gravitational search algorithm (GSA) inspired from physics emulates gravitational forces to guide particles' search. It has been successfully applied to diverse optimization problems. However, its search performance is limited by its inherent mechanism where gravitational constant plays an important role in gravitational forces among particles. To improve it, this paper uses chaotic neural oscillators to adjust its gravitational constant, named GSA-CNO. Chaotic neural oscillators can generate various chaotic states according to their parameter settings. Thus, we select four kinds of chaotic neural oscillators to form distinctive chaotic characteristics. Experimental results show that chaotic neural oscillators effectively tune the gravitational constant such that GSA-CNO has good performance and stability against four GSA variants on functions. Three real-world optimization problems demonstrate the promising practicality of GSA-CNO.

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Wang, Y., Gao, S., Yu, Y., Wang, Z., Cheng, J., & Yuki, T. (2020). A Gravitational Search Algorithm with Chaotic Neural Oscillators. IEEE Access, 8, 25938–25948. https://doi.org/10.1109/ACCESS.2020.2971505

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