Knowledge Agora



Similar Articles

Title A Multi-joint Optimisation Method for Distributed Edge Computing Resources in IoT-Based Smart Cities
ID_Doc 40402
Authors Liu, ZR
Title A Multi-joint Optimisation Method for Distributed Edge Computing Resources in IoT-Based Smart Cities
Year 2023
Published Journal Of Grid Computing, 21, 4
Abstract Smart cities can handle numerous IoT devices with enhanced services that offer intelligent and effective answers to different elements of urban life. Smart cities use the Internet of Things (IoT). Even as the amount of Internet of Things (IoT) devices, smart city services, and quality of service (QoS) limits increase quickly, servers must allocate finite resources among all Internet-based services to deliver efficient implementation. A smart city's IoT system uses a lot of energy and experiences network latency since a cloud exists. Depending on a cloud computing architecture, edge computing relocates processing, memory, and a shared network near the data provider. The cloud computing model is the same as the IoT model. Optimal energy use while upholding time constraints is a crucial issue in edge computing when carrying out activities produced by IoT devices. This research examines a multi-joint optimization method for distributing edge computing resources in IoT-based smart cities. For IoT-based smart cities, we suggest a Four-layer network design. After that, other air offloading algorithms are added depending on the weight and capacity of the UAV's motor, its altitude just above the surface, and the area it may create. A proposed edge resource allocation strategy based on an actionable method is put forth to provide efficient computing resources for delay-sensitive jobs.
PDF

Similar Articles

ID Score Article
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
39467 Sahoo, S; Sahoo, KS; Sahoo, B; Gandomi, AH An Auction based Edge Resource Allocation Mechanism for IoT-enabled Smart Cities(2020)
44598 Kuang, L; Gong, T; OuYang, SY; Gao, HH; Deng, SG Offloading decision methods for multiple users with structured tasks in edge computing for smart cities(2020)
41971 Wang, SG; Zhao, YL; Xu, JL; Yuan, J; Hsu, CH Edge server placement in mobile edge computing(2019)
35960 Ren, XD; Vashisht, S; Aujla, GS; Zhang, PY Drone-Edge Coalesce for Energy-Aware and Sustainable Service Delivery for Smart City Applications(2022)
41979 Wu, HM; Zhang, ZR; Guan, C; Wolter, K; Xu, MX Collaborate Edge and Cloud Computing With Distributed Deep Learning for Smart City Internet of Things(2020)Ieee Internet Of Things Journal, 7, 9
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)
39239 Xu, SY; Liu, QC; Gong, B; Qi, F; Guo, SY; Qiu, XS; Yang, C RJCC: Reinforcement-Learning-Based Joint Communicational-and-Computational Resource Allocation Mechanism for Smart City IoT(2020)Ieee Internet Of Things Journal, 7, 9
38245 Qin, ZS; Xu, F; Xie, Y; Zhang, ZY; Li, GJ An improved Top-K algorithm for edge servers deployment in smart city(2021)Transactions On Emerging Telecommunications Technologies, 32, 8
37991 Li, YF; He, XR; Bian, YZ Task Offloading of Edge Computing Network and Energy Saving of Passive House for Smart City(2022)
Scroll