Smart cities simulation environment for intelligent algorithms evaluation
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1
Catholic University of Daegu
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- 2 National University of Sunchon
ISSN: 2255-2863
Year of publication: 2015
Volume: 4
Issue: 3
Pages: 87-96
Type: Article
More publications in: ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal
Abstract
This article presents an adaptive platform that can simulate the centralized control of different smart city areas. For example, public lighting and intelligent management, public zones of buildings, energy distribution, etc. It can operate the hardware infrastructure and perform optimization both in energy consumption and economic control from a modular architecture which is fully adaptable to most cities. Machine-to-machine (M2M) permits connecting all the sensors of the city so that they provide the platform with a perfect perspective of the global city status. To carry out this optimization, the platform offers the developers a software that operates on the hardware infrastructure and merges various techniques of artificial intelligence (AI) and statistics, such as artificial neural networks (ANN), multi-agent systems (MAS) or a Service Oriented Approach (SOA), forming an Internet of Services (IoS). Different case studies were tested by using the presented platform, and further development is still underway with additional case studies.
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