Using a distributed deep learning algorithm for analyzing big data in smart cities

被引:12
作者
Naoui, Mohammed Anouar [1 ,2 ]
Lejdel, Brahim [2 ]
Ayad, Mouloud [2 ]
Amamra, Abdelfattah [3 ]
Kazar, Okba [4 ]
机构
[1] Univ Bouira, Dept Comp Sci, Fac Sci & Appl Sci, LIMPAF Lab, El Oued, Algeria
[2] Univ El Oued, El Oued, Algeria
[3] Cal Poly Pomona, Pomona, CA USA
[4] Mohamed Khider Univ Biskra, Biskra, Algeria
关键词
Distribute machine learning; Smart city; Smart environment; Smart energy; Big data; SET;
D O I
10.1108/SASBE-04-2019-0040
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
Purpose The purpose of this paper is to propose a distributed deep learning architecture for smart cities in big data systems. Design/methodology/approach We have proposed an architectural multilayer to describe the distributed deep learning for smart cities in big data systems. The components of our system are Smart city layer, big data layer, and deep learning layer. The Smart city layer responsible for the question of Smart city components, its Internet of things, sensors and effectors, and its integration in the system, big data layer concerns data characteristics 10, and its distribution over the system. The deep learning layer is the model of our system. It is responsible for data analysis. Findings We apply our proposed architecture in a Smart environment and Smart energy. 10; In a Smart environment, we study the Toluene forecasting in Madrid Smart city. For Smart energy, we study wind energy foresting in Australia. Our proposed architecture can reduce the time of execution and improve the deep learning model, such as Long Term Short Memory10;. Originality/value The findings of this study are expected to contribute valuable information to decision-makers for a better understanding of the key to Smart city architecture. Its relation with data storage, processing, and data analysis.
引用
收藏
页码:90 / 105
页数:16
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