An Edge-Fog Computing Framework for Cloud of Things in Vehicle to Grid Environment

The penetration of electric vehicles (EVs) embedded with information and communication technology (ICT) devices and tools form a huge connected network that can be viewed as Internet-of-EVs(IoEV). The huge data gathered in IoEV network needs to be processed at cloud-based infrastructure which has abundant resources. However, due to the high mobility of the EVs, resource management from the remote cloud service providers has become one of the most difficult tasks to be performed in this environment. In this regard, data analytics fused with fog or edge computing can be leveraged to increase the resource availability in V2G environment where resources are provided to the EVs on the edge of the network. Keeping these points in mind, this paper presents a new framework for integration of cloud computing and IoEV on the edge of the network which provides flexibility to the end users for smooth execution of various applications. In addition, a resource allocation and job scheduling strategy for EVs at the edge of the network is presented in the paper. The results obtained with respect to various performance metrics confirm the applicability of the proposed scheme for future applications in V2G scenario.

[1]  Neeraj Kumar,et al.  SURVIVOR: A blockchain based edge-as-a-service framework for secure energy trading in SDN-enabled vehicle-to-grid environment , 2019, Comput. Networks.

[2]  Mohammad S. Obaidat,et al.  Playing the Smart Grid Game: Performance Analysis of Intelligent Energy Harvesting and Traffic Flow Forecasting for Plug-In Electric Vehicles , 2015, IEEE Vehicular Technology Magazine.

[3]  Dushan Boroyevich,et al.  Grid-Interface Bidirectional Converter for Residential DC Distribution Systems—Part 2: AC and DC Interface Design With Passive Components Minimization , 2013, IEEE Transactions on Power Electronics.

[4]  Bingsheng He,et al.  F2C: Enabling Fair and Fine-Grained Resource Sharing in Multi-Tenant IaaS Clouds , 2016, IEEE Transactions on Parallel and Distributed Systems.

[5]  Neeraj Kumar,et al.  EVaaS: Electric vehicle-as-a-service for energy trading in SDN-enabled smart transportation system , 2018, Comput. Networks.

[6]  Sherali Zeadally,et al.  Performance analysis of Bayesian coalition game-based energy-aware virtual machine migration in vehicular mobile cloud , 2015, IEEE Network.

[7]  Weifa Liang,et al.  Efficient Scheduling of Multiple Mobile Chargers for Wireless Sensor Networks , 2016, IEEE Transactions on Vehicular Technology.

[8]  Xiang Zhang,et al.  Network function virtualization in the multi-tenant cloud , 2015, IEEE Network.

[9]  Xiangming Dai,et al.  Energy-Efficient Virtual Machines Scheduling in Multi-Tenant Data Centers , 2016, IEEE Transactions on Cloud Computing.

[10]  Dario Pompili,et al.  Collaborative Mobile Edge Computing in 5G Networks: New Paradigms, Scenarios, and Challenges , 2016, IEEE Communications Magazine.

[11]  Albert Y. Zomaya,et al.  Optimal Decision Making for Big Data Processing at Edge-Cloud Environment: An SDN Perspective , 2018, IEEE Transactions on Industrial Informatics.

[12]  John K Kruschke,et al.  Bayesian data analysis. , 2010, Wiley interdisciplinary reviews. Cognitive science.