Smart City Gnosys

Smart city article details

Title Evolutionary Computing Assisted K-Means Clustering Based Mapreduce Distributed Computing Environment For Iot-Driven Smart City
ID_Doc 25050
Authors Srinivas K.G.; Hosahalli D.
Year 2021
Published Proceedings - IEEE 2021 International Conference on Computing, Communication, and Intelligent Systems, ICCCIS 2021
DOI http://dx.doi.org/10.1109/ICCCIS51004.2021.9397217
Abstract In the last few years, the exponential rise in urban population and allied demands have alarmed governing agencies as well as industries to achieve more quality-of-service (QoS) oriented solutions to meet up-surging demands, especially towards real-time decision making, information exchange and knowledge-driven decisions. To achieve it, smart city concept which employs Internet- of-Things (IoT), distributed software computing, and BigData analytics has gained widespread attention. Though, inclusion of QoS-sensitive routing has helped enabling better and efficient sensory or node's data collection and dissemination; however, ensuring optimal query-driven knowledge mining and information exchange has remained a challenge. Considering it as motivation, in this paper an evolutionary computing assisted K-Means clustering algorithm is developed for MapReduce computation in Hadoop distributed framework. The proposed method employs genetic algorithm to enhance centroid estimation as well as clustering, which as a result helped in achieving better clustering to support MapReduce. The proposed GA based K-Means clustering has been applied over Hadoop-MapReduce, where to achieve aforesaid centroid estimation and clustering enhancement Silhouette coefficient was used as the objective function. Here, GA-K Means was applied in such manner that it estimates optimized centroid and clusters simultaneously over Mapper and Reducer, which makes overall computation faster and more accurate. © 2021 IEEE.
Author Keywords BigData Analytics; Clustering; Distributed Computing; Genetic Algorithm; Hadoop; MapReduce; Smart City


Similar Articles


Id Similarity Authors Title Published
49673 View0.863Ibrahim I.S.; Rabee F.Smart Cities Population Classification Using Hadoop MapreduceLecture Notes in Networks and Systems, 479 (2023)
41249 View0.86Alexandrescu A.Parallel Processing Of Sensor Data In A Distributed Rules Engine Environment Through Clustering And Data Flow ReconfigurationSensors, 23, 3 (2023)
60106 View0.856Rathore, MM; Ahmad, A; Paul, A; Rho, SUrban Planning And Building Smart Cities Based On The Internet Of Things Using Big Data AnalyticsCOMPUTER NETWORKS, 101 (2016)
14535 View0.855Tharwat M.; Khattab A.Clustering Techniques For Smart Cities: An Artificial Intelligence PerspectiveLecture Notes in Intelligent Transportation and Infrastructure, Part F1386 (2021)