期刊
SUSTAINABILITY
卷 13, 期 16, 页码 -出版社
MDPI
DOI: 10.3390/su13169457
关键词
built environment; multi-risk; GIS; cluster analysis
资金
- MIUR (the Italian Ministry of Education, University, and Research) [2017LR75XK]
This study identified five groups of open spaces through GIS data collection and non-hierarchical cluster analysis, and then matched these characteristics to nine final Built Environment Typologies based on risk combinations. The multi-risk scenarios identified in this statistical analysis lay the foundation for future risk assessments of Italian towns' built environments.
Planning for preparedness, in terms of multi-hazard disasters, involves testing the relevant abilities to mitigate damage and build resilience, through the assessment of deterministic disaster scenarios. Among risk-prone assets, open spaces (OSs) play a significant role in the characterization of the built environment (BE) and represent the relevant urban portion on which to develop multi-risk scenarios. The aim of this paper is to elaborate ideal scenarios-namely, Built Environment Typologies (BETs)-for simulation-based risk assessment actions, considering the safety and resilience of BEs in emergency conditions. The investigation is conducted through the GIS data collection of the common characteristics of OSs (i.e., squares), identified through five parameters considered significant in the scientific literature. These data were processed through a non-hierarchical cluster analysis. The results of the cluster analysis identified five groups of OSs, characterized by specific morphological, functional, and physical characteristics. Combining the outcomes of the cluster analysis with a critical analysis, nine final BETs were identified. The resulting BETs were linked to characteristic risk combinations, according to the analysed parameters. Thus, the multi-risk scenarios identified through the statistical analysis lay the basis for future risk assessments of BEs, based on the peculiar characteristics of Italian towns.
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