Integrating Cellular Automata with the Deep Belief Network for Simulating Urban Growth

Sustainable urban development is a focus of regional policy makers; therefore, how to measure and understand urban growth is an important research topic. This paper quantified the amount of urban growth on land use maps that were derived from multi-temporal Landsat images of Jiaxing City as a rapidl...

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Main Authors: Ye Zhou, Feng Zhang, Zhenhong Du, Xinyue Ye, Renyi Liu
Format: Article
Language:English
Published: MDPI AG 2017-10-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/9/10/1786
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spelling doaj-fe8c9b3681f04c1382e48000f7c057a32020-11-25T00:53:14ZengMDPI AGSustainability2071-10502017-10-01910178610.3390/su9101786su9101786Integrating Cellular Automata with the Deep Belief Network for Simulating Urban GrowthYe Zhou0Feng Zhang1Zhenhong Du2Xinyue Ye3Renyi Liu4School of Earth Sciences, Zhejiang University, 38 Zheda Road, Hangzhou 310027, ChinaSchool of Earth Sciences, Zhejiang University, 38 Zheda Road, Hangzhou 310027, ChinaSchool of Earth Sciences, Zhejiang University, 38 Zheda Road, Hangzhou 310027, ChinaDepartment of Geography, Kent State University, Kent, OH 44240, USASchool of Earth Sciences, Zhejiang University, 38 Zheda Road, Hangzhou 310027, ChinaSustainable urban development is a focus of regional policy makers; therefore, how to measure and understand urban growth is an important research topic. This paper quantified the amount of urban growth on land use maps that were derived from multi-temporal Landsat images of Jiaxing City as a rapidly-growing city in Zhejiang Province from 2000–2015. Furthermore, a new approach coupled the heuristic bat algorithm (BA) and deep belief network (DBN) with the cellular automata (CA) model (DBN-CA), which was developed to simulate the urban expansion in 2015 and forecast the distribution of urban areas of Jiaxing City in 2024. The BA was proposed to obtain the best structure of the DBN, while the optimized DBN model considered the nonlinear spatial-temporal relationship of driving forces in urban expansion. Comparisons between the DBN-CA and the conventional artificial neural network-based CA (ANN-CA) model were also performed. This study demonstrates that the proposed model is more stable and accurate than the ANN-CA model, since the minimum and maximum values of the kappa coefficient of the DBN-CA were 77.109% and 78.366%, while the ANN-CA’s values were 63.460% and 76.151% over the 200 experiments, respectively. Therefore, the DBN-CA model is a potentially effective new approach to survey land use change and urban expansion and allows sustainability research to study the health of urban growth trends.https://www.mdpi.com/2071-1050/9/10/1786urban growth simulationcellular automatabat algorithmdeep belief networkartificial neural network
collection DOAJ
language English
format Article
sources DOAJ
author Ye Zhou
Feng Zhang
Zhenhong Du
Xinyue Ye
Renyi Liu
spellingShingle Ye Zhou
Feng Zhang
Zhenhong Du
Xinyue Ye
Renyi Liu
Integrating Cellular Automata with the Deep Belief Network for Simulating Urban Growth
Sustainability
urban growth simulation
cellular automata
bat algorithm
deep belief network
artificial neural network
author_facet Ye Zhou
Feng Zhang
Zhenhong Du
Xinyue Ye
Renyi Liu
author_sort Ye Zhou
title Integrating Cellular Automata with the Deep Belief Network for Simulating Urban Growth
title_short Integrating Cellular Automata with the Deep Belief Network for Simulating Urban Growth
title_full Integrating Cellular Automata with the Deep Belief Network for Simulating Urban Growth
title_fullStr Integrating Cellular Automata with the Deep Belief Network for Simulating Urban Growth
title_full_unstemmed Integrating Cellular Automata with the Deep Belief Network for Simulating Urban Growth
title_sort integrating cellular automata with the deep belief network for simulating urban growth
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2017-10-01
description Sustainable urban development is a focus of regional policy makers; therefore, how to measure and understand urban growth is an important research topic. This paper quantified the amount of urban growth on land use maps that were derived from multi-temporal Landsat images of Jiaxing City as a rapidly-growing city in Zhejiang Province from 2000–2015. Furthermore, a new approach coupled the heuristic bat algorithm (BA) and deep belief network (DBN) with the cellular automata (CA) model (DBN-CA), which was developed to simulate the urban expansion in 2015 and forecast the distribution of urban areas of Jiaxing City in 2024. The BA was proposed to obtain the best structure of the DBN, while the optimized DBN model considered the nonlinear spatial-temporal relationship of driving forces in urban expansion. Comparisons between the DBN-CA and the conventional artificial neural network-based CA (ANN-CA) model were also performed. This study demonstrates that the proposed model is more stable and accurate than the ANN-CA model, since the minimum and maximum values of the kappa coefficient of the DBN-CA were 77.109% and 78.366%, while the ANN-CA’s values were 63.460% and 76.151% over the 200 experiments, respectively. Therefore, the DBN-CA model is a potentially effective new approach to survey land use change and urban expansion and allows sustainability research to study the health of urban growth trends.
topic urban growth simulation
cellular automata
bat algorithm
deep belief network
artificial neural network
url https://www.mdpi.com/2071-1050/9/10/1786
work_keys_str_mv AT yezhou integratingcellularautomatawiththedeepbeliefnetworkforsimulatingurbangrowth
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AT zhenhongdu integratingcellularautomatawiththedeepbeliefnetworkforsimulatingurbangrowth
AT xinyueye integratingcellularautomatawiththedeepbeliefnetworkforsimulatingurbangrowth
AT renyiliu integratingcellularautomatawiththedeepbeliefnetworkforsimulatingurbangrowth
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