2018
DOI: 10.1007/978-3-319-76944-8_5
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Ecosystem Services Based Approach for Participatory Spatial Planning and Risk Management in a Multi-Level Governance System

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Cited by 4 publications
(3 citation statements)
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“…It is well-known that sat-images are sensitive to seasonal changes in the land uses, but this kind of problem also affects the digitalization process employed for a LULC dataset, which is the crucial input variable of habitat quality. Therefore, the research conducted here took the available information (input data) of HQ modeled during the Life SAM4CP research and compared the standard values with a new modeling output that is based on the utilization of the NDVI as a new proxy of sensitivity [42][43][44]. Both HQ models were produced using the latest version of InVEST (suite of models produced by the Natural Capital Project, Stanford University, Stanford, California v. 3.7.0) sharing the same catchment area of Turin to see how the two outputs differ in each zone of the city.…”
Section: Introductionmentioning
confidence: 99%
“…It is well-known that sat-images are sensitive to seasonal changes in the land uses, but this kind of problem also affects the digitalization process employed for a LULC dataset, which is the crucial input variable of habitat quality. Therefore, the research conducted here took the available information (input data) of HQ modeled during the Life SAM4CP research and compared the standard values with a new modeling output that is based on the utilization of the NDVI as a new proxy of sensitivity [42][43][44]. Both HQ models were produced using the latest version of InVEST (suite of models produced by the Natural Capital Project, Stanford University, Stanford, California v. 3.7.0) sharing the same catchment area of Turin to see how the two outputs differ in each zone of the city.…”
Section: Introductionmentioning
confidence: 99%
“…Interestingly, despite Turin is being characterized by a dense urban fabric with elevated imperviousness values, not all the urban areas have high pluvial flooding vulnerability. Excluding the hilly area and the northern ridge where the Po River meets the Stura River, characterized by high habitat quality due to their zoning (Giaimo et al, 2018), it was surprising that some of the central areas have low vulnerability. It appears that the zones of "Vanchiglia," "Vanchiglietta," "Crocetta," and "Borgo San Secondo" are characterized by a more significant "porosity" and consistency of urban greenery confirmed through the Normalized Difference Vegetation Index.…”
Section: Discussionmentioning
confidence: 99%
“…The catchment area includes 21 municipalities that border the city of Turin (Figure 1), defined as the "first ring" due to their strong interaction with the main city, namely, Baldissero Torinese, Beinasco, Borgaro Torinese, Caselle Torinese, Castiglione Torinese, Collegno, Druento, Gassino Torinese, Grugliasco, Leinì, Mappano, Moncalieri, Nichelino, Orbassano, Pecetto Torinese, Pianezza, Pino Torinese, San Mauro Torinese, San Raffaele Cimena, Settimo Torinese, Torino, Venaria Reale, and Volpiano. Despite the high administrative fragmentation, the city of Turin consists physically of a unique semi-dense continuous built-up system that from the core area shapes the surrounding zones while comprising a heterogeneous land use [37]. The average daily temperature varies from below 1.4 • C in January to 23.6 • C recorded in July, the climate is warm and temperate with significant rainfall throughout the year (about 864 mm of annual precipitation), and the driest month is January, with 38 mm, while May is the wettest month, with an average of 108 mm (https://en.climate-data.org/ accessed on 16 September 2020).…”
Section: The Turin Metropolitan Areamentioning
confidence: 99%