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Measuring urban sprawl using land use data
Institution:1. University of Graz, Austria;2. Joanneum Research, Austria;1. School of Spatial Planning and Development, Faculty of Engineering, Aristotle University of Thessaloniki Campus, 1st Floor, 54124, Greece;2. School of Spatial Planning and Development, Faculty of Engineering, Aristotle University of Thessaloniki Campus, 54124, Greece;1. Department of Geography, Planning and Environment, Concordia University Montreal, 1455 de Maisonneuve Boulevard West, Suite H1255, Montréal, QC, H3G 1M8, Canada;1. Department of Geography and Environmental studies, Debre Tabor University, P.O.Box 272, Ethiopia;2. Department of Marine Geology, Mangalore University, Mangalagangothri, Karnataka, India;1. Department of Geography, Planning and Environment, Concordia University, Montréal, Québec, Canada;2. Swiss Federal Research Institute WSL, Birmensdorf & ETH Zürich, Switzerland;3. GISAT and the European Centre on Urban, Land and Soil systems (ETC-ULS) of the European Environment Agency, Prague, Czech Republic
Abstract:Digital land use data, generally derived by remote sensing operations, have become widely available for even the most remote areas of the globe. Here we investigate how to use land use data to measure three of the most characteristic aspects of urban sprawl: low density, low continuity of land use type (scatteredness), and low compactness of the shape of the city. For each of these categories we present multiple urban sprawl indicators. Some of these indicators have been used in the literature before, others we developed ourselves. For density measurements we illustrate how simple changes to common density indicators can improve their meaningfulness. With respect to scatteredness we show that the interpretation of entropy measures can be ambiguous. A variant on Moran’s I index does a better job at measuring scatteredness than entropy metrics. A problem that has not yet been discussed in the literature is that the grid structure of land use data can inflate the boundary of the measured area. This is particularly a problem when measuring urban compactness. We introduce new compactness indices that correct for this problem. To illustrate the discussed indices, we apply them to Graz, the second largest city in Austria, using data from the CORINE Land Cover (CLC) Project (European Environment Agency, 2010).
Keywords:Urban sprawl  Density  Entropy  GIS  Remote sensing  Urban dynamics  Spatial analysis  Compactness
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