Knowledge Agora



Similar Articles

Title Ahab: A cloud-based distributed big data analytics framework for the Internet of Things
ID_Doc 39508
Authors Vögler, M; Schleicher, JM; Inzinger, C; Dustdar, S
Title Ahab: A cloud-based distributed big data analytics framework for the Internet of Things
Year 2017
Published Software-Practice & Experience, 47, 3
Abstract Smart city applications generate large amounts of operational data during their execution, such as information from infrastructure monitoring, performance and health events from used toolsets, and application execution logs. These data streams contain vital information about the execution environment that can be used to fine-tune or optimize different layers of a smart city application infrastructure. Current approaches do not sufficiently address the efficient collection, processing, and storage of this information in the smart city domain. In this paper, we present Ahab, a generic, scalable, and fault-tolerant data processing framework based on the cloud that allows operators to perform online and offline analyses on gathered data to better understand and optimize the behavior of the available smart city infrastructure. Ahab is designed for easy integration of new data sources, provides an extensible API to perform custom analysis tasks, and a domain-specific language to define adaptation rules based on analysis results. We demonstrate the feasibility of the proposed approach using an example application for autonomous intersection management in smart city environments. Our framework is able to autonomously optimize application deployment topologies by distributing processing load over available infrastructure resources when necessary based on both online analysis of the current state of the environment and patterns learned from historical data. Copyright (C) 2016 John Wiley & Sons, Ltd.
PDF

Similar Articles

ID Score Article
43979 Babar, M; Arif, F; Jan, MA; Tan, ZY; Khan, F Urban data management system: Towards Big Data analytics for Internet of Things based smart urban environment using customized Hadoop(2019)
43473 Cheng, B; Longo, S; Cirillo, F; Bauer, M; Kovacs, E Building a Big Data Platform for Smart Cities: Experience and Lessons from Santander(2015)
40988 Babar, M; Arif, F Smart urban planning using Big Data analytics to contend with the interoperability in Internet of Things(2017)
38909 Souza, A; Cacho, N; Batista, T; Ranjan, R SAPPARCHI: an Osmotic Platform to Execute Scalable Applications on Smart City Environments(2022)
44492 Raptis, TP; Cicconetti, C; Falelakis, M; Kalogiannis, G; Kanellos, T; Lobo, TP Engineering Resource-Efficient Data Management for Smart Cities with Apache Kafka(2023)Future Internet, 15, 2
38424 Benomar, Z; D'Agati, L; Longo, F; Merlino, G; Puliafito, A Managed ELK deployments at the Edge with OpenStack and IoTronic: an italian Smart City case study(2022)
36227 Girtelschmid, S; Steinbauer, M; Kumar, V; Fensel, A; Kotsis, G On the application of Big Data in future large-scale intelligent Smart City installations(2014)International Journal Of Pervasive Computing And Communications, 10, 2
39850 Shah, SA; Seker, DZ; Rathore, MM; Hameed, S; Ben Yahia, S; Draheim, D Towards Disaster Resilient Smart Cities: Can Internet of Things and Big Data Analytics Be the Game Changers?(2019)
45709 Silva, BN; Khan, M; Jung, C; Seo, J; Muhammad, D; Han, J; Yoon, Y; Han, K Urban Planning and Smart City Decision Management Empowered by Real-Time Data Processing Using Big Data Analytics(2018)Sensors, 18, 9
38538 Silva, BN; Khan, M; Han, K Big Data Analytics Embedded Smart City Architecture for Performance Enhancement through Real-Time Data Processing and Decision-Making(2017)
Scroll