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International Journal of Geographical Information Science

Volume 22, Issue 9, 2008

Using neural networks and cellular automata for modelling intra‐urban land‐use dynamics

Using neural networks and cellular automata for modelling intra‐urban land‐use dynamics

DOI:
10.1080/13658810701731168
C. M. Almeidaa*, J. M. Glerianib, E. F. Castejonc & B. S. Soares‐Filhod

pages 943-963

Available online: 15 Jul 2008

Abstract

Empirical models designed to simulate and predict urban land‐use change in real situations are generally based on the utilization of statistical techniques to compute the land‐use change probabilities. In contrast to these methods, artificial neural networks arise as an alternative to assess such probabilities by means of non‐parametric approaches. This work introduces a simulation experiment on intra‐urban land‐use change in which a supervised back‐propagation neural network has been employed in the parameterization of several biophysical and infrastructure variables considered in the simulation model. The spatial land‐use transition probabilities estimated thereof feed a cellular automaton (CA) simulation model, based on stochastic transition rules. The model has been tested in a medium‐sized town in the Midwest of São Paulo State, Piracicaba. A series of simulation outputs for the case study town in the period 1985–1999 were generated, and statistical validation tests were then conducted for the best results, based on fuzzy similarity measures.

Keywords

 

Details

  • Citation information:
  • Available online: 15 Jul 2008

Author affiliations

  • a National Institute for Space Research (INPE), Remote Sensing Division—DSR, Avenida dos Astronautas, 1758‐12227‐010, São José dos Campos, SP, Brazil
  • b Federal University of Viçosa (UFV), Department of Forest Engineering—DEF, Campus Universitário, s/n‐36571‐000, Viçosa, MG, Brazil
  • c National Institute for Space Research (INPE), Images Processing Division‐DPI, PO Box 515, São José dos Campos, Brazil
  • d Federal University of Minas Gerais (UFMG), Centre for Remote Sensing—CSR/IGC, Avenida Antônio Carlos, 6627‐31270‐900, Belo Horizonte, MG, Brazil

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  • 2010 Impact Factor: 1.489; Five-Year Impact Factor: 2.162
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