Online citations, reference lists, and bibliographies.

Urban Sprawl: A Case Study For Project Gigalopolis Using SLEUTH Model

M. Caglioni, Mattia Pelizzoni, G. Rabino
Published 2006 · Computer Science

Cite This
Download PDF
Analyze on Scholarcy
Share
A brief approach through a CA-based model is perfect for modelling of different urban phenomena at different observation scales SLEUTH model, situated in Project Gigalopolis, is a powerful tool for description of urban agglomeration and spatial dynamics In this paper, new applications of this model, other methodological analyses, and sensitivity studies allow us to improve our comprehension of model parameters, taking advantage of this type of synthetic description of reality Many deductions are possible thanks to the comparison of our studies with other precious databases, already existent, about results of this model.
This paper references



This paper is referenced by
10.1007/978-3-319-21470-2_58
A Quantitative Prediction of Soil Consumption in Southern Italy
Federico Amato (2015)
10.3390/SU8040297
The Effects of Urban Policies on the Development of Urban Areas
Federico Amato (2016)
10.1177/0885412210361571
Artificial Intelligence Solutions for Urban Land Dynamics: A Review
Ning Wu (2010)
10.2495/UT130631
A comparison of urban planning systems between the UK and Italy: commercial development and city logistic plan
Francis Cirianni (2013)
10.1038/s41597-019-0048-z
High-resolution global urban growth projection based on multiple applications of the SLEUTH urban growth model
Y. Zhou (2019)
―SmartCitySIM‖: Urban Simulator of Smart Cities
Fatimazahra Barramou (2015)
10.1080/00330124.2019.1674668
Modeling Urban Growth and Land Cover Change in Albuquerque Using SLEUTH
P. Bajracharya (2020)
10.20944/preprints201712.0187.v1
A New Model Transfer Mechanism Framework for SLEUTH Model Performance Evaluation
Fang Liu (2017)
10.1007/978-3-319-21470-2_31
Application of SLEUTH Model to Predict Urbanization Along the Emilia-Romagna Coast (Italy): Considerations and Lessons Learned
Ivan Sekovski (2015)
10.1680/UDAP.12.00014
Selecting artificial intelligence urban models using waves of complexity
Ning Xiang Wu (2013)
10.4236/JGIS.2014.66053
Spatial Effects of Varying Model Coefficients in Urban Growth Modeling in Nairobi, Kenya
Kenneth Mubea (2014)
Urban DNA: Exploring the Biological Metaphor of Urban Evolution with DG-ABC Model
N. Wu (2011)
10.1016/J.RSASE.2018.12.012
Capturing heterogeneous urban growth using SLEUTH model
Ankita Saxena (2019)
10.1016/J.SBSPRO.2016.05.247
The Effects of Socio-Economic Variables in Urban Growth Simulations
Benedetto Manganelli (2016)
10.5075/epfl-thesis-4761
Conception et évaluation d"un prototype de simulation de la morphogenèse urbaine par agents vecteurs multi-échelles
V. Silva (2010)
10.5194/NHESS-15-2331-2015
Coupling scenarios of urban growth and flood hazards along the Emilia-Romagna coast (Italy)
Ivan Sekovski (2015)
10.1117/1.JRS.6.061709
Simulating urban expansion using an improved SLEUTH model
Xinsheng Liu (2012)
10.22069/IJERR.2013.1688
The SLEUTH Land Use Change Model: A Review
G. Chaudhuri (2013)
10.33945/sami/ijashss.2019.4.7
Analysis of Urban Planning Changes by Biological Metaphor (Case of DG-ABC Model)
Mohammad Rahim Rahnama (2013)
10.1016/j.compenvurbsys.2017.04.005
Utilizing a cellular automaton model to explore the influence of coastal flood adaptation strategies on Helsinki's urbanization patterns
Athanasios Votsis (2017)
10.1016/J.HABITATINT.2017.09.009
A new perspective for urban development boundary delineation based on SLEUTH-InVEST model
Jianguo Liu (2017)
Semantic Scholar Logo Some data provided by SemanticScholar