Journal Article10.1109/TEVC.2010.2050024
Erratum to “Niching Without Niching Parameters: Particle Swarm Optimization Using a Ring Topology” [Feb 10 150-169]
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TL;DR: In the above titled paper (ibid., vol. 14, no. 1, pp. 150-169, Feb. 10), some of the results in Tables IV and VI were incorrect.
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Abstract: In the above titled paper (ibid., vol. 14, no. 1, pp. 150-169, Feb. 10), some of the results in Tables IV and VI were incorrect. An explanation is presented here.
read more
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References
Niching Without Niching Parameters: Particle Swarm Optimization Using a Ring Topology
TL;DR: Experimental results suggest that PSO algorithms using the ring topology are able to provide superior and more consistent performance over some existing PSO niching algorithms that require nICHing parameters.
Erratum to “Niching Without Niching Parameters: Particle Swarm Optimization Using a Ring Topology” [Feb 10 150-169]
TL;DR: In the above titled paper (ibid., vol. 14, no. 1, pp. 150-169, Feb. 10), some of the results in Tables IV and VI were incorrect.
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