Knowledge Agora



Similar Articles

Title Drone-Edge Coalesce for Energy-Aware and Sustainable Service Delivery for Smart City Applications
ID_Doc 35960
Authors Ren, XD; Vashisht, S; Aujla, GS; Zhang, PY
Title Drone-Edge Coalesce for Energy-Aware and Sustainable Service Delivery for Smart City Applications
Year 2022
Published
Abstract In a typical smart city, drones can collect (or sense) massive amount of data, that is sent to a computing capability for further analysis to make useful decision making without human intervention. This data is relayed to the Cloud for processing and analysis due to its large-scale infrastructural capabilities. However, the key goal of the drone deployment in smart city scenarios or urban environments is to provide timely and quick response alongside providing an energy-efficient service delivery. Thus, we need a sustainable solution that can be deployed locally (closer to the data source) in a smart city, to process or analyze the data (generated from smart city sources) and provide timely decision making for smart city applications. Edge computing, popularly known as the "cloud close to the ground", can provide computational and processing facilities at edge of the network in a smart city. Hence, Edge computing act as an effective alternative solution to process and analyze the data closer to the point of it's generation. Looking into the above discussion, We propose a novel drone-edge coalesce that provides an energy-aware data processing mechanism for sustainable service delivery in the multi-drone smart city networks. In this model, the edge computing layer is deployed to process and store the data sensed and collected by drones in a smart city. In this context, an adaptive edge node selection mechanism has been designed on the basis of decision tree approach. In this coalesce, we have to deal with the conventional problems related to the collision and congestion while providing low-latency and sustainable data transmission in a smart city. So, We have designed an energy-aware multi-purpose algorithm that avoids collisions and provides a congestion free data transmission. The proposed coalesce is validated in a simulated environment on the basis of several performance metrics such as, throughput, end-to-end delay and energy consumption.
PDF

Similar Articles

ID Score Article
40402 Liu, ZR A Multi-joint Optimisation Method for Distributed Edge Computing Resources in IoT-Based Smart Cities(2023)Journal Of Grid Computing, 21, 4
39774 Mygdalis, V; Carnevale, L; Martinez-de-Dios, JR; Shutin, D; Aiello, G; Villari, M; Pitas, I OTE: Optimal Trustworthy EdgeAI solutions for smart cities(2022)
39525 Seid, AM; Abishu, HN; Erbad, A; Guizani, M HDFRL-empowered Energy Efficient Resource Allocation for Aerial MEC-enabled Smart City Cyber Physical System in 6G(2023)
41718 El-Sayed, H; Chaqfa, M; Zeadally, S; Puthal, D A Traffic-Aware Approach for Enabling Unmanned Aerial Vehicles (UAVs) in Smart City Scenarios(2019)
37595 Wang, MQ; Mao, JY; Zhao, W; Han, XY; Li, MY; Liao, CJ; Sun, HM; Wang, KX Smart City Transportation: A VANET Edge Computing Model to Minimize Latency and Delay Utilizing 5G Network(2024)Journal Of Grid Computing, 22.0, 1
42049 Alsamhi, SH; Ma, O; Ansari, MS; Almalki, FA Survey on Collaborative Smart Drones and Internet of Things for Improving Smartness of Smart Cities(2019)
41579 Hoque, MA; Hossain, M; Noor, S; Islam, SMR; Hasan, R IoTaaS: Drone-Based Internet of Things as a Service Framework for Smart Cities(2021)Ieee Internet Of Things Journal, 9, 14
40221 Mahmood, OA; Abdellah, AR; Muthanna, A; Koucheryavy, A Distributed Edge Computing for Resource Allocation in Smart Cities Based on the IoT(2022)Information, 13, 7
Scroll