Knowledge Agora



Similar Articles

Title An efficient Time-sensitive data scheduling approach for Wireless Sensor Networks in smart cities
ID_Doc 41242
Authors Nasser, N; Khan, N; Karim, L; ElAttar, M; Saleh, K
Title An efficient Time-sensitive data scheduling approach for Wireless Sensor Networks in smart cities
Year 2021
Published
Abstract The Continuous increase in urban population causes enormous pressure on cities' limited resources, including transport, energy, water, housing, public services, and others. Hence, the need to plan and develop smart cities based solutions for enhanced urban governance is becoming more evident. These solutions are motivated by innovations in Information and Communication Technology to support smart planning for the city and to facilitate enhanced services to its citizens. Important areas where smart city services can be offered include urban planning, transport planning, energy conservation, water management, waste management, environmental monitoring, public safety, healthcare, education, entertainment, and many other services. Hence, the enormous data collected from different networks and applications to facilitate the offering of smart city services requires efficient data scheduling, aggregation, and processing to ensure service quality (QoS). However, existing data scheduling approaches consider scheduling and processing data only in the cloud, while processing also in the data collecting devices is significantly essential. This paper first introduces the multi-layer network architecture comprising sensor/device networks and cloud. The paper then introduces a Multi-layer, Priority-based, Dynamic, and Time-sensitive data processing and Scheduling approach (MPDTS) in the proposed multi-layer networks. Simulation results show that the proposed MPDTS approach achieves lower latency and data processing time than existing traditional data scheduling approaches that work only in the cloud layer.
PDF

Similar Articles

ID Score Article
36899 Nasser, N; Khan, N; ElAttar, M; Saleh, K; Abujamous, A An Efficient Data Scheduling Scheme for Cloud-based Big Data Framework for Smart City(2019)
38851 Anand, S; Ramesh, MV Multi-Layer Architecture and Routing for Internet of Everything (IoE) in Smart Cities(2021)
44348 Zhou, JC; Liu, B; Gao, J A task scheduling algorithm with deadline constraints for distributed clouds in smart cities(2023)
36844 Sinaeepourfard, A; Garcia, J; Masip-Bruin, X; Marín-Tordera, E; Cirera, J; Grau, G; Casaus, F Estimating Smart City Sensors Data Generation Current and Future Data in the City of Barcelona(2016)
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
40433 Rathore, MM; Ahmad, A; Paul, A; Rho, S Urban planning and building smart cities based on the Internet of Things using Big Data analytics(2016)
42364 Poncela, J; Vlacheas, P; Giaffreda, R; De, S; Vecchio, M; Nechifor, S; Barco, R; Aguayo-Torres, MC; Stavroulaki, V; Moessner, K; Demestichas, P Smart Cities via Data Aggregation(2014)Wireless Personal Communications, 76, 2
43837 Bogatinoska, DC; Malekian, R; Trengoska, J; Nyako, WA Advanced Sensing and Internet of Things in Smart Cities(2016)
45513 Alkhelaiwi, A; Grigoras, D Scheduling Crowdsensing Data to Smart City Applications in the Cloud(2016)
36886 Rathore, MM; Paul, A; Ahmad, A; Jeon, G IoT-Based Big Data: From Smart City towards Next Generation Super City Planning(2017)International Journal On Semantic Web And Information Systems, 13.0, 1
Scroll