QoS Guaranteed Edge Cloud Resource Provisioning for Vehicle Fleets | IEEE Journals & Magazine | IEEE Xplore

QoS Guaranteed Edge Cloud Resource Provisioning for Vehicle Fleets


Abstract:

Nowadays vehicle fleets are launched to perform business or scientific tasks, with new features supported by the emerging multi-access edge computing (MEC) platform. In t...Show More

Abstract:

Nowadays vehicle fleets are launched to perform business or scientific tasks, with new features supported by the emerging multi-access edge computing (MEC) platform. In the presence of high vehicle mobility, however, it is challenging to precisely provision resources among distributed edge clouds so that i) the QoS of vehicular service is guaranteed and meanwhile ii) the provisioning cost is minimized. We systematically investigate the QoS guaranteed optimal resource provisioning problem for the connected vehicle fleet in the MEC environment. Based on stochastic traffic analysis, we propose an optimization framework to minimize the cost of resource provisioning, while the service blocking probability is guaranteed to be smaller than a predefined threshold. We then present a lightweight two-phase algorithm based on bracketing and binary searching to solve the problem efficiently. To evaluate our method, we use two large real-world datasets collected by an online taxi service platform and validate the QoS with our resource provisioning strategy. The results demonstrate that our method can save the total provision cost up to 40%, compared with the naïve resource provisioning strategy, and meanwhile can provide reliable QoS guarantee, compared with the mobility estimation-based approach.
Published in: IEEE Transactions on Vehicular Technology ( Volume: 69, Issue: 6, June 2020)
Page(s): 5889 - 5900
Date of Publication: 15 April 2020

ISSN Information:

Funding Agency:

Citations are not available for this document.

I. Introduction

The market of connected vehicles, including the connected autonomous driving (AD) vehicles, is growing rapidly with a five-year compound annual growth rate of , which is 10x faster than the overall car market [1]. According to the statistical report from Statista [2], the revenue in the connected vehicle market accounted for billion in 2017 and will grow up to over billion by 2021 in the U.S. alone.

Cites in Papers - |

Cites in Papers - IEEE (14)

Select All
1.
Farhoud Jafari Kaleibar, Marc St-Hilaire, "SLA-Based Service Provisioning Optimization in Vehicular Cloud Networks Using Fuzzy Logic", IEEE Access, vol.12, pp.101727-101744, 2024.
2.
Khalid Haseeb, Amjad Rehman, Anees Ara, Atif Khan, Tanzila Saba, Houbing Herbert Song, "Sensors-Enabled Autonomous Computational Intelligence Vehicle Model With QoS-Driven Communication Services", IEEE Sensors Journal, vol.24, no.16, pp.26607-26615, 2024.
3.
Peng Qin, Guoming Tang, Yang Fu, Yi Wang, "Distributed BESS Scheduling for Power Demand Reshaping in 5G and Beyond Networks", IEEE Transactions on Green Communications and Networking, vol.8, no.1, pp.162-176, 2024.
4.
Yongchen Deng, Suzhen Wang, Zhongbo Hu, "Research on Heuristic Task Scheduling Method in Cloud Edge Collaborative Environment", 2023 6th International Conference on Electronics Technology (ICET), pp.1108-1115, 2023.
5.
Philipp Raith, Thomas Rausch, Schahram Dustdar, Fabiana Rossi, Valeria Cardellini, Rajiv Ranjan, "Mobility-Aware Serverless Function Adaptations Across the Edge-Cloud Continuum", 2022 IEEE/ACM 15th International Conference on Utility and Cloud Computing (UCC), pp.123-132, 2022.
6.
Xuanheng Li, Ruyi Xiao, Miao Pan, Nan Zhao, "Risk-Averse Investment Strategy for MEC Service Provisioning: A Data-Driven Distributionally Robust Solution", IEEE Internet of Things Journal, vol.9, no.23, pp.24148-24160, 2022.
7.
Vishal Sharma, Teik Guan Tan, Saurabh Singh, Pradip Kumar Sharma, "Optimal and Privacy-Aware Resource Management in Artificial Intelligence of Things Using Osmotic Computing", IEEE Transactions on Industrial Informatics, vol.18, no.5, pp.3377-3386, 2022.
8.
Shenyang Cao, Yongli Zhang, Pan Ding, Xiaocheng Zhai, Wenwei Liu, Xinyuan Chen, Shuxu Zhao, "Research on Edge Resource Allocation Method Based on Vehicle Trajectories Prediction", 2021 IEEE 4th International Conference on Automation, Electronics and Electrical Engineering (AUTEEE), pp.200-206, 2021.
9.
Dan Warren, Xenofon Vasilakos, Walter Featherstone, "Edge-based 5G Network Architectures in support of Zero Downtime Mobility for Enterprise Applications", 2021 Optical Fiber Communications Conference and Exhibition (OFC), pp.1-3, 2021.
10.
Guoming Tang, Hao Yuan, Deke Guo, Kui Wu, Yi Wang, "Reusing Backup Batteries as BESS for Power Demand Reshaping in 5G and Beyond", IEEE INFOCOM 2021 - IEEE Conference on Computer Communications, pp.1-10, 2021.
11.
Hao Yuan, Guoming Tang, Xinyi Li, Deke Guo, Lailong Luo, Xueshan Luo, "Online Dispatching and Fair Scheduling of Edge Computing Tasks: A Learning-Based Approach", IEEE Internet of Things Journal, vol.8, no.19, pp.14985-14998, 2021.
12.
Siyuan Gu, Xueshan Luo, Deke Guo, Bangbang Ren, Guoming Tang, Junjie Xie, Yuchen Sun, "Joint Chain-Based Service Provisioning and Request Scheduling for Blockchain-Powered Edge Computing", IEEE Internet of Things Journal, vol.8, no.4, pp.2135-2149, 2021.
13.
Guoming Tang, Yi Wang, Hongyu Lu, "ShiftGuard: Towards Reliable 5G Network by Optimal Backup Power Allocation", 2020 IEEE International Conference on Communications, Control, and Computing Technologies for Smart Grids (SmartGridComm), pp.1-6, 2020.
14.
Xenofon Vasilakos, Walter Featherstone, Navdeep Uniyal, Anderson Bravalheri, Abubakar Siddique Muqaddas, Navid Solhjoo, Daniel Warren, Shadi Moazzeni, Reza Nejabati, Dimitra Simeonidou, "Towards Zero Downtime Edge Application Mobility for Ultra-Low Latency 5G Streaming", 2020 IEEE Cloud Summit, pp.25-32, 2020.

Cites in Papers - Other Publishers (10)

1.
Fabian Wolf, "Strukturierte Softwareentwicklung", Software im Automobil, pp.141, 2023.
2.
Ve Vallidevi Krishnamurthy, Soundaram Jothi, Karuppiah Sundara Velrani, "HO-DQLN: Hybrid Optimization-based Deep Q-learning Network for Optimizing QoS Requirements in Service Oriented Model", Expert Systems with Applications, pp.120188, 2023.
3.
Shuxu Zhao, Xinyuan Chen, Xiaolong Wang, "Research on the Edge Resource Allocation and Load Balancing Algorithm Based on Vehicle Trajectory", Complexity, vol.2022, pp.1, 2022.
4.
S. Durga, Esther Daniel, J. Andrew Onesimu, Yuichi Sei, "Resource Provisioning Techniques in Multi-Access Edge Computing Environments: Outlook, Expression, and Beyond", Mobile Information Systems, vol.2022, pp.1, 2022.
5.
Guoming Tang, Deke Guo, Kui Wu, "Reusing Backup Batteries for Power Demand Reshaping in 5G", GreenEdge: New Perspectives to Energy Management and Supply in Mobile Edge Computing, pp.67, 2022.
6.
Wenxuan Qiao, Ping Dong, Xiaojiang Du, Yuyang Zhang, Hongke Zhang, Mohsen Guizani, "QoS provision for vehicle big data by parallel transmission based on heterogeneous network characteristics prediction", Journal of Parallel and Distributed Computing, vol.163, pp.83, 2022.
7.
Guoming Tang, Deke Guo, Kui Wu, "Optimal Backup Power Allocation for 5G Base Stations", GreenEdge: New Perspectives to Energy Management and Supply in Mobile Edge Computing, pp.51, 2022.
8.
Mainak Adhikari, Satish Narayana Srirama, Tarachand Amgoth, "A comprehensive survey on nature?inspired algorithms and their applications in edge computing: Challenges and future directions", Software: Practice and Experience, vol.52, no.4, pp.1004, 2022.
9.
Dan Warren, Xenofon Vasilakos, Walter Featherstone, "Edge-based 5G Network Architectures in support of Zero Downtime Mobility for Enterprise Applications", Optical Fiber Communication Conference (OFC) 2021, pp.Tu1A.1, 2021.
10.
Naren, Abhishek Kumar Gaurav, Nishad Sahu, Abhinash Prasad Dash, G. S. S. Chalapathi, Vinay Chamola, "A survey on computation resource allocation in IoT enabled vehicular edge computing", Complex & Intelligent Systems, 2021.
Contact IEEE to Subscribe

References

References is not available for this document.