In this research we propose a GIS-based multicriteria framework that implements a hierarchical MCDA fuzzy model aimed at the detection of urban risk areas in climate hazard scenarios. The fuzzy-based multi-criteria approach adopted has the advantage of adapting to the hierarchical modeling of urban sys tems and of implementing the approximate reasoning adopted by decision makers. The criteria are defined in a hierarchical structure where the leaf nodes con sist of fuzzy numbers; each node is assigned a weight, called coefficient of rela tive significance, which represents its relevance in the generation of the parent node in the upper level. The fuzzy set in the parent node is implemented through a fuzzy operator of intersection of the fuzzy sets of the child nodes. The framework was tested on a study area including densely populated neigh borhoods in the municipality of Naples (Italy), with the aim of determining which subzones of the study area were most at risk in scenarios of heat waves in the summer months. The results obtained are consistent with the results of the eval uations carried out by experts in the field.
GIS based hierarchical fuzzy MCDA framework for detecting critical urban areas in climate scenarios / DI MARTINO, Ferdinando; Cardone, Barbara; Miraglia, Vittorio. - V(2023), pp. 345-358. (Intervento presentato al convegno Computational Science and Its Applications – ICCSA 2023 Workshops tenutosi a Atene (Grecia) nel 3-6 Luglio 2023) [10.1007/978-3-031-37117-2].
GIS based hierarchical fuzzy MCDA framework for detecting critical urban areas in climate scenarios
ferdinando di martino
;barbara cardone;vittorio miraglia
2023
Abstract
In this research we propose a GIS-based multicriteria framework that implements a hierarchical MCDA fuzzy model aimed at the detection of urban risk areas in climate hazard scenarios. The fuzzy-based multi-criteria approach adopted has the advantage of adapting to the hierarchical modeling of urban sys tems and of implementing the approximate reasoning adopted by decision makers. The criteria are defined in a hierarchical structure where the leaf nodes con sist of fuzzy numbers; each node is assigned a weight, called coefficient of rela tive significance, which represents its relevance in the generation of the parent node in the upper level. The fuzzy set in the parent node is implemented through a fuzzy operator of intersection of the fuzzy sets of the child nodes. The framework was tested on a study area including densely populated neigh borhoods in the municipality of Naples (Italy), with the aim of determining which subzones of the study area were most at risk in scenarios of heat waves in the summer months. The results obtained are consistent with the results of the eval uations carried out by experts in the field.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.