Theconcept of the smart city is widely favored, as it enhances the quality of life of urban citizens, involvingmultiple disciplines, that is, smart community, smart transportation, smart healthcare, smart parking, and many more. Continuous growth of the complex urban networks is significantly challenged by real-time data processing and intelligent decision-making capabilities. Therefore, in this paper, we propose a smart city framework based on Big Data analytics.The proposed framework operates on three levels: (1) data generation and acquisition level collecting heterogeneous data related to city operations, (2) data management and processing level filtering, analyzing, and storing data to make decisions and events autonomously, and (3) application level initiating execution of the events corresponding to the received decisions. In order to validate the proposed architecture, we analyze a fewmajor types of dataset based on the proposed three-level architecture. Further, we tested authentic datasets onHadoop ecosystemto determine the threshold and the analysis shows that the proposed architecture offers useful insights into the community development authorities to improve the existing smart city architecture.
CITATION STYLE
Silva, B. N., Khan, M., & Han, K. (2017). Big data analytics embedded smart city architecture for performance enhancement through real-time data processing and decision-making. Wireless Communications and Mobile Computing, 2017. https://doi.org/10.1155/2017/9429676
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