Article (Scientific journals)
Modelling built-up expansion and densification with multinomial logistic regression, cellular automata and genetic algorithm
El Saeid Mustafa, Ahmed Mohamed; Heppenstall, Alison; Omrani, Hichem et al.
2018In Computers, Environment and Urban Systems, 67, p. 147-156
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Keywords :
Built-up density; Cellular automata; Multinomial logistic regression; Multi-objective genetic algorithm
Abstract :
[en] This paper presents a model to simulate built-up expansion and densification based on a combination of a non-ordered multinomial logistic regression (MLR) and cellular automata (CA). The probability for built-up development is assessed based on (i) a set of built-up development causative factors and (ii) the land-use of neighboring cells. The model considers four built-up classes: non built-up, low-density, medium-density and high-density built-up. Unlike the most commonly used built-up/urban models which simulate built-up expansion, our approach considers expansion and the potential for densification within already built-up areas when their present density allows it. The model is built, calibrated, and validated for Wallonia region (Belgium) using cadastral data. Three 100 × 100 m raster-based built-up maps for 1990, 2000, and 2010 are developed to define one calibration interval (1990–2000) and one validation interval (2000 − 2010). The causative factors are calibrated using MLR whereas the CA neighboring effects are calibrated based on a multi-objective genetic algorithm. The calibrated model is applied to simulate the built-up pattern in 2010. The simulated map in 2010 is used to evaluate the model's performance against the actual 2010 map by means of fuzzy set theory. According to the findings, land-use policy, slope, and distance to roads are the most important determinants of the expansion process. The densification process is mainly driven by zoning, slope, distance to different roads and richness index. The results also show that the densification generally occurs where there are dense neighbors whereas areas with lower densities retain their densities over time.
Research center :
LEMA
Disciplines :
Engineering, computing & technology: Multidisciplinary, general & others
Author, co-author :
El Saeid Mustafa, Ahmed Mohamed ;  Université de Liège - ULiège > Département ArGEnCo > LEMA (Local environment management and analysis)
Heppenstall, Alison;  University of Leeds
Omrani, Hichem;  Luxembourg Institute of Socio-Economic Research
Saadi, Ismaïl ;  Université de Liège - ULiège > Département ArGEnCo > Transports et mobilité
Cools, Mario  ;  Université de Liège - ULiège > Département ArGEnCo > Transports et mobilité
Teller, Jacques  ;  Université de Liège - ULiège > Département ArGEnCo > Urbanisme et aménagement du territoire
Language :
English
Title :
Modelling built-up expansion and densification with multinomial logistic regression, cellular automata and genetic algorithm
Publication date :
January 2018
Journal title :
Computers, Environment and Urban Systems
ISSN :
0198-9715
eISSN :
1873-7587
Publisher :
Elsevier
Volume :
67
Pages :
147-156
Peer reviewed :
Peer Reviewed verified by ORBi
Name of the research project :
ARC FloodLand
Funders :
ARC grant for Concerted Research Actions for project number 13/17-01 entitled "Land-use change and future flood risk: influence of micro-scale spatial patterns (FloodLand)" and through the Special Fund for Research for project number 5128 entitled "Assessment of sampling variability and aggregation error in transport models", both financed by the French Community of Belgium (Wallonia-Brussels Federation)
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since 10 November 2017

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