Agent-Based Urban Modeling: Simulating Urban Growth and Subsequent Landscape Change in Suzhou, China

2011 ◽  
pp. 347-357 ◽  
Author(s):  
Yichun Xie ◽  
Xining Yang
Author(s):  
Andrew Crooks ◽  
Alison Heppenstall ◽  
Nick Malleson ◽  
Ed Manley

AbstractAgent-based modeling is a powerful simulation technique that allows one to build artificial worlds and populate these worlds with individual agents. Each agent or actor has unique behaviors and rules which govern their interactions with each other and their environment. It is through these interactions that more macro-phenomena emerge: for example, how individual pedestrians lead to the emergence of crowds. Over the past two decades, with the growth of computational power and data, agent-based models have evolved into one of the main paradigms for urban modeling and for understanding the various processes which shape our cities. Agent-based models have been developed to explore a vast range of urban phenomena from that of micro-movement of pedestrians over seconds to that of urban growth over decades and many other issues in between. In this chapter, we introduce readers to agent-based modeling from simple abstract applications to those representing space utilizing geographical data not only for the creation of the artificial worlds but also for the validation and calibration of such models through a series of example applications. We will then discuss how big data, data mining, and machine learning techniques are advancing the field of agent-based modeling and demonstrate how such data and techniques can be leveraged into these models, giving us a new way to explore cities.


Cities ◽  
2013 ◽  
Vol 32 ◽  
pp. 33-42 ◽  
Author(s):  
Jamal Jokar Arsanjani ◽  
Marco Helbich ◽  
Eric de Noronha Vaz

2013 ◽  
Vol 45 ◽  
pp. 104-115 ◽  
Author(s):  
Hazel R. Parry ◽  
Christopher J. Topping ◽  
Marc C. Kennedy ◽  
Nigel D. Boatman ◽  
Alistair W.A. Murray

2018 ◽  
Vol 7 (4.11) ◽  
pp. 17 ◽  
Author(s):  
Feri Nugroho ◽  
Omar Ismael Al-Sanjary ◽  
. .

Urban development has become a problem in many cities, especially in developing countries. The availability of areas for development is needed to deal with rapid population growth and urbanization. The purpose of this study was to identify urban growth models. Due to urban growth planning, the city will be more manageable and organized. From the conclusions of urban modeling identification can provide an idea of what model is appropriate for use in urban growth studies. The results of this urban growth model identification could be a reference in urban growth modeling in better urban planning.  


Author(s):  
Felix S. K. Agyemang ◽  
Elisabete Silva ◽  
Sean Fox

The global urban population is expected to grow by 2.5 billion over the next three decades, and 90% of this growth will occur in African and Asian countries. Urban expansion in these regions is often characterised by ‘informal urbanization’ whereby households self-build without planning permission in contexts of ambiguous, insecure or disputed property rights. Despite the scale of informal urbanization, it has received little attention from scholars working in the domains of urban analytics and city science. Towards addressing this gap, we introduce TI-City, an urban growth model designed to predict the locations, legal status and socio-economic status of future residential developments in an African city. In a bottom-up approach, we use agent-based and cellular automata modelling techniques to predict the geospatial behaviour of key urban development actors, including households, real estate developers and government. We apply the model to the city-region of Accra, Ghana, drawing on local data collection, including a household survey, to parameterise the model. Using a multi-spatial-scale validation technique, we compare TI-City’s ability to simulate historically observed built-up patterns with SLEUTH, a highly popular urban growth model. Results show that TI-City outperforms SLEUTH at each scale, suggesting the model could offer a valuable decision support tool in similar city contexts.


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