Urban Fine Management of Multisource Spatial Data Fusion Based on Smart City Construction

With the increase of the types of urban management objects, the intelligent management of the whole city has become a matter of concern in various countries, and it is also one of the indispensable links in urban development. In the construction of cities all over the world, the intelligent and scie...

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Main Authors: Yuanpeng Long, Xuena Zhang, Feng Gao
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2021/5058791
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spelling doaj-efc8de10db5848d1b7d201fcc2c508c22021-09-20T00:29:23ZengHindawi LimitedMathematical Problems in Engineering1563-51472021-01-01202110.1155/2021/5058791Urban Fine Management of Multisource Spatial Data Fusion Based on Smart City ConstructionYuanpeng Long0Xuena Zhang1Feng Gao2School of Economic Information EngineeringChengdu Platinum Star Network Technology Co. Ltd.School of Artificial IntelligenceWith the increase of the types of urban management objects, the intelligent management of the whole city has become a matter of concern in various countries, and it is also one of the indispensable links in urban development. In the construction of cities all over the world, the intelligent and scientific management system has been used innovatively. We provide excellent facilities for transportation development, information exchange, and resource progress. The research on urban fine management based on multisource spatial data fusion is proposed. Aiming at the traffic problems in urban fine management, this paper proposes a deep network architecture based on multisource data fusion. Multisource spatial data fusion technology is used to analyze urban traffic data. Deep network architecture is used to improve the precision management status of a smart city and the accuracy of traffic condition prediction. Then, the convolution neural network technology is explored in the data fusion technology strategy. The research results show that the framework has the ability to deal with heterogeneous data and urban big data and can effectively improve the traffic management state in the construction of a smart city and effectively solve the complexity of urban fine management and processing efficiency in the construction of a smart city.http://dx.doi.org/10.1155/2021/5058791
collection DOAJ
language English
format Article
sources DOAJ
author Yuanpeng Long
Xuena Zhang
Feng Gao
spellingShingle Yuanpeng Long
Xuena Zhang
Feng Gao
Urban Fine Management of Multisource Spatial Data Fusion Based on Smart City Construction
Mathematical Problems in Engineering
author_facet Yuanpeng Long
Xuena Zhang
Feng Gao
author_sort Yuanpeng Long
title Urban Fine Management of Multisource Spatial Data Fusion Based on Smart City Construction
title_short Urban Fine Management of Multisource Spatial Data Fusion Based on Smart City Construction
title_full Urban Fine Management of Multisource Spatial Data Fusion Based on Smart City Construction
title_fullStr Urban Fine Management of Multisource Spatial Data Fusion Based on Smart City Construction
title_full_unstemmed Urban Fine Management of Multisource Spatial Data Fusion Based on Smart City Construction
title_sort urban fine management of multisource spatial data fusion based on smart city construction
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2021-01-01
description With the increase of the types of urban management objects, the intelligent management of the whole city has become a matter of concern in various countries, and it is also one of the indispensable links in urban development. In the construction of cities all over the world, the intelligent and scientific management system has been used innovatively. We provide excellent facilities for transportation development, information exchange, and resource progress. The research on urban fine management based on multisource spatial data fusion is proposed. Aiming at the traffic problems in urban fine management, this paper proposes a deep network architecture based on multisource data fusion. Multisource spatial data fusion technology is used to analyze urban traffic data. Deep network architecture is used to improve the precision management status of a smart city and the accuracy of traffic condition prediction. Then, the convolution neural network technology is explored in the data fusion technology strategy. The research results show that the framework has the ability to deal with heterogeneous data and urban big data and can effectively improve the traffic management state in the construction of a smart city and effectively solve the complexity of urban fine management and processing efficiency in the construction of a smart city.
url http://dx.doi.org/10.1155/2021/5058791
work_keys_str_mv AT yuanpenglong urbanfinemanagementofmultisourcespatialdatafusionbasedonsmartcityconstruction
AT xuenazhang urbanfinemanagementofmultisourcespatialdatafusionbasedonsmartcityconstruction
AT fenggao urbanfinemanagementofmultisourcespatialdatafusionbasedonsmartcityconstruction
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