Artigo Acesso aberto Revisado por pares

A Classification of Multidimensional Open Data for Urban Morphology

2016; Alexandrine Press; Volume: 42; Issue: 3 Linguagem: Inglês

10.2148/benv.42.3.382

ISSN

0263-7960

Autores

Alexandros Alexiou, Alex Singleton, Paul Longley,

Tópico(s)

Land Use and Ecosystem Services

Resumo

Identifying socio-spatial pa erns through geodemographic classification has provenutility over a range of disciplines. While most of these spatial classification systems include a plethora of socioeconomic attributes, there is arguably little to no input regarding attributes of the built environment or physical space, and their relationship to socioeconomic profiles within this context has not been evaluated in any systematic way. This research explores the generation of neighbourhood characteristics and other attributes using a geographic data science approach, taking advantage of the increasing availability of such spatial data from open data sources. We adopt a SOM (Self-Organizing Maps) methodology to create a classification of Multidimensional Open Data Urban Morphology (MODUM) and test the extent to which this output systematically follows conventional socioeconomic profiles. Such an analysis can also provide a simplified structure of the physical properties of geographic space that can be further used as input to more complex socioeconomic models.

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