Fr. 102.00

Predicting future spatial distributions of population and employment - for South East Queensland A spatial disaggregation approach

English, German · Paperback / Softback

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Description

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The spatial distribution of future population and employment has become a focus of recent academic enquiry and planning policy concerns. At a national level forecasts for population and employment are produced for large geographic regions; however, appropriate planning for the urban growth needs forecasts for fine-grained spatial units for growth management within regions. In this book, Tiebei Li presents a spatial based technique to break large regional forecasts down to a disaggregated geographic scale using South East Queensland (SEQ) as the experimental context. He demonstrates that spatial disaggregation methodologies can be used to enhance the forecasts for urban planning purposes and to derive a deeper understanding of the urban spatial structure under growth conditions.

About the author










Dr. Li finished his PhD in the area of urban geography at the University of Queensland, and now he works for Urban Research Program, Griffith University. Dr Li''s research interests focus on the quantitiative research in urban systems; in particular the regional growth and transport dynamics within a spatial context.

Product details

Authors Tiebei Li
Publisher LAP Lambert Academic Publishing
 
Languages English, German
Product format Paperback / Softback
Released 01.01.2010
 
EAN 9783838364346
ISBN 978-3-8383-6434-6
No. of pages 204
Dimensions 150 mm x 220 mm x 10 mm
Weight 287 g
Subject Social sciences, law, business > Sociology > Urban and regional sociology

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