Fuzzy systems based on multispecies PSO method in spatial analysis

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Abstract

We present a method by using the hierarchical cluster-based Multispecies particle swarm optimization to generate a fuzzy system of Takagi-Sugeno-Kang type encapsulated in a geographical information system considered as environmental decision support for spatial analysis. We consider a spatial area partitioned in subzones: the data measured in each subzone are used to extract a fuzzy rule set of above mentioned type. We adopt a similarity index (greater than a specific threshold) for comparing fuzzy systems generated for adjacent subzones. © 2012 Ferdinando Di Martino et al.

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APA

Di Martino, F., Loia, V., & Sessa, S. (2012). Fuzzy systems based on multispecies PSO method in spatial analysis. Advances in Fuzzy Systems. https://doi.org/10.1155/2012/808361

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