The Spatio-Temporal Modeling of Urban Growth Using Remote Sensing and Intelligent Algorithms, Case of Mahabad, Iran

<p>The simulation of urban growth can be considered as a useful way for analyzing the complex process of urban physical evolution. The aim of this study is to model and simulate the complex patterns of land use change by utilizing remote sensing and artificial intelligence techniques in the fa...

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Main Authors: Alì Soltani, Davoud Karimzadeh
Format: Article
Language:English
Published: Università di Napoli Federico II 2013-06-01
Series:TeMA: Journal of Land Use, Mobility and Environment
Subjects:
Online Access:http://www.tema.unina.it/index.php/tema/article/view/1547
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spelling doaj-0adf528a45c34741b2d8f4cf17371a822020-11-25T03:58:19ZengUniversità di Napoli Federico IITeMA: Journal of Land Use, Mobility and Environment1970-98891970-98702013-06-016218920010.6092/1970-9870/15471063The Spatio-Temporal Modeling of Urban Growth Using Remote Sensing and Intelligent Algorithms, Case of Mahabad, IranAlì Soltani0Davoud Karimzadeh1Department of Urban Planning, Shiraz UniversityDepartment of Urban Planning, Shiraz University<p>The simulation of urban growth can be considered as a useful way for analyzing the complex process of urban physical evolution. The aim of this study is to model and simulate the complex patterns of land use change by utilizing remote sensing and artificial intelligence techniques in the fast growing city of Mahabad, north-west of Iran which encountered with several environmental subsequences. The key subject is how to allocate optimized weight into effective parameters upon urban growth and subsequently achieving an improved simulation. Artificial Neural Networks (ANN) algorithm was used to allocate the weight via an iteration approach. In this way, weight allocation was carried out by the ANN training accomplishing through time-series satellite images representing urban growth process. Cellular Automata (CA) was used as the principal motor of the model and then ANN applied to find suitable scale of parameters and relations between potential factors affecting urban growth. The general accuracy of the suggested model and obtained Fuzzy Kappa Coefficient confirms achieving better results than classic CA models in simulating nonlinear urban evolution process.</p>http://www.tema.unina.it/index.php/tema/article/view/1547Urban Growth, Simulation, Cellular Automata, Artificial Neural Networks, Mahabad.
collection DOAJ
language English
format Article
sources DOAJ
author Alì Soltani
Davoud Karimzadeh
spellingShingle Alì Soltani
Davoud Karimzadeh
The Spatio-Temporal Modeling of Urban Growth Using Remote Sensing and Intelligent Algorithms, Case of Mahabad, Iran
TeMA: Journal of Land Use, Mobility and Environment
Urban Growth, Simulation, Cellular Automata, Artificial Neural Networks, Mahabad.
author_facet Alì Soltani
Davoud Karimzadeh
author_sort Alì Soltani
title The Spatio-Temporal Modeling of Urban Growth Using Remote Sensing and Intelligent Algorithms, Case of Mahabad, Iran
title_short The Spatio-Temporal Modeling of Urban Growth Using Remote Sensing and Intelligent Algorithms, Case of Mahabad, Iran
title_full The Spatio-Temporal Modeling of Urban Growth Using Remote Sensing and Intelligent Algorithms, Case of Mahabad, Iran
title_fullStr The Spatio-Temporal Modeling of Urban Growth Using Remote Sensing and Intelligent Algorithms, Case of Mahabad, Iran
title_full_unstemmed The Spatio-Temporal Modeling of Urban Growth Using Remote Sensing and Intelligent Algorithms, Case of Mahabad, Iran
title_sort spatio-temporal modeling of urban growth using remote sensing and intelligent algorithms, case of mahabad, iran
publisher Università di Napoli Federico II
series TeMA: Journal of Land Use, Mobility and Environment
issn 1970-9889
1970-9870
publishDate 2013-06-01
description <p>The simulation of urban growth can be considered as a useful way for analyzing the complex process of urban physical evolution. The aim of this study is to model and simulate the complex patterns of land use change by utilizing remote sensing and artificial intelligence techniques in the fast growing city of Mahabad, north-west of Iran which encountered with several environmental subsequences. The key subject is how to allocate optimized weight into effective parameters upon urban growth and subsequently achieving an improved simulation. Artificial Neural Networks (ANN) algorithm was used to allocate the weight via an iteration approach. In this way, weight allocation was carried out by the ANN training accomplishing through time-series satellite images representing urban growth process. Cellular Automata (CA) was used as the principal motor of the model and then ANN applied to find suitable scale of parameters and relations between potential factors affecting urban growth. The general accuracy of the suggested model and obtained Fuzzy Kappa Coefficient confirms achieving better results than classic CA models in simulating nonlinear urban evolution process.</p>
topic Urban Growth, Simulation, Cellular Automata, Artificial Neural Networks, Mahabad.
url http://www.tema.unina.it/index.php/tema/article/view/1547
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