Cellular Automata (CA) is one of the most common techniques used to simulate the urbanization process. CA-based urban models use transition rules to deliver spatial patterns of urban growth and urban dynamics over time. Determining the optimum transition rules of the CA is a critical step because of the heterogeneity and nonlinearities existing among urban growth driving forces. Recently, new CA models integrated with optimization methods based on swarm intelligence algorithms were proposed to overcome this drawback. The Artificial Bee Colony (ABC) algorithm is an advanced meta-heuristic swarm intelligence-based algorithm. Here, we propose a novel CA-based urban change model that uses the ABC algorithm to extract optimum transition rules. W...
A new intelligent algorithm of geographical cellular automata (CA) based on ant colony optimization ...
In this study, urban growth of the Atakum District in Samsun, Turkey, was simulated by Cellular Auto...
This paper couples a Forward Feature Selection algorithm with Random Forest (FFS-RF) to create a tra...
This paper presents an advanced method in urban growth modeling to discover transition rules of cell...
In this paper, two satellite images of Tehran, the capital city of Iran, which were taken by TM and ...
Scientifically and rationally analyzing the characteristics of land use evolution and exploring futu...
The simulation of urban growth can be considered as a useful way for analyzing the complex process o...
This paper presents an improved cellular automata (CA) model of urban growth based on particle swarm...
This study evaluates the effects of cellular automata (CA) with different neighborhood sizes on the ...
As a complex non-linear and dynamic process,full understanding of the urban morphology and evolution...
There have been several studies advocating the need for, and the feasibility of, using advanced tech...
The goal of this study is to simulate and predict urban dynamics changes and quantify their impact o...
Cellular automata models consist of a simulation environment represented by a gridded space (raster)...
This paper presents a method to optimise the calibration of parameters and land use transition rules...
The objective of this paper is to develop and implement a Cellular Automata (CA) algorithm to simula...
A new intelligent algorithm of geographical cellular automata (CA) based on ant colony optimization ...
In this study, urban growth of the Atakum District in Samsun, Turkey, was simulated by Cellular Auto...
This paper couples a Forward Feature Selection algorithm with Random Forest (FFS-RF) to create a tra...
This paper presents an advanced method in urban growth modeling to discover transition rules of cell...
In this paper, two satellite images of Tehran, the capital city of Iran, which were taken by TM and ...
Scientifically and rationally analyzing the characteristics of land use evolution and exploring futu...
The simulation of urban growth can be considered as a useful way for analyzing the complex process o...
This paper presents an improved cellular automata (CA) model of urban growth based on particle swarm...
This study evaluates the effects of cellular automata (CA) with different neighborhood sizes on the ...
As a complex non-linear and dynamic process,full understanding of the urban morphology and evolution...
There have been several studies advocating the need for, and the feasibility of, using advanced tech...
The goal of this study is to simulate and predict urban dynamics changes and quantify their impact o...
Cellular automata models consist of a simulation environment represented by a gridded space (raster)...
This paper presents a method to optimise the calibration of parameters and land use transition rules...
The objective of this paper is to develop and implement a Cellular Automata (CA) algorithm to simula...
A new intelligent algorithm of geographical cellular automata (CA) based on ant colony optimization ...
In this study, urban growth of the Atakum District in Samsun, Turkey, was simulated by Cellular Auto...
This paper couples a Forward Feature Selection algorithm with Random Forest (FFS-RF) to create a tra...