Scalable traffic management for mobile cloud services in 5G networks
Mobile cloud computing has been introduced to improve the performance of mobile application clients by offloading data processing and storage to cloud. By deploying the service on several cloud-enabled data centers, the service provider can optimally locate service instances on the cloud to provide...
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sg-ntu-dr.10356-1416552020-06-10T01:41:46Z Scalable traffic management for mobile cloud services in 5G networks Liu, Lanchao Niyato, Dusit Wang, Ping Han, Zhu School of Computer Science and Engineering School of Physical and Mathematical Sciences Engineering::Computer science and engineering Mobile Cloud Computing 5G Networks Mobile cloud computing has been introduced to improve the performance of mobile application clients by offloading data processing and storage to cloud. By deploying the service on several cloud-enabled data centers, the service provider can optimally locate service instances on the cloud to provide qualified services at a reasonable cost. However, a centralized approach for both request allocation and response routing does not scale efficiently due to a large number of mobile clients involved in the mobile service traffic management. Moreover, the random and unpredictable wireless network performance (e.g., delay) complicates the problem further. In this paper, we present a stochastic distributed optimization framework for mobile cloud traffic management in 5G networks. The framework takes the impact of random wireless network characteristics into account. Utilizing the alternating direction method of multipliers, the optimization problem is decomposed into independent subproblems, which are solved in a parallel fashion on distributed agents and coordinated through dual variables. The convergence issue under the stochastic setting is addressed, and the numerical tests validate the effectiveness of the proposed algorithm. 2020-06-10T01:41:46Z 2020-06-10T01:41:46Z 2018 Journal Article Liu, L., Niyato, D., Wang, P., & Han, Z. (2018). Scalable traffic management for mobile cloud services in 5G networks. IEEE Transactions on Network and Service Management, 15(4), 1560-1570. doi:10.1109/TNSM.2018.2867019 1932-4537 https://hdl.handle.net/10356/141655 10.1109/TNSM.2018.2867019 2-s2.0-85052691334 4 15 1560 1570 en IEEE Transactions on Network and Service Management © 2018 IEEE. All rights reserved. |
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Engineering::Computer science and engineering Mobile Cloud Computing 5G Networks Liu, Lanchao Niyato, Dusit Wang, Ping Han, Zhu Scalable traffic management for mobile cloud services in 5G networks |
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Mobile cloud computing has been introduced to improve the performance of mobile application clients by offloading data processing and storage to cloud. By deploying the service on several cloud-enabled data centers, the service provider can optimally locate service instances on the cloud to provide qualified services at a reasonable cost. However, a centralized approach for both request allocation and response routing does not scale efficiently due to a large number of mobile clients involved in the mobile service traffic management. Moreover, the random and unpredictable wireless network performance (e.g., delay) complicates the problem further. In this paper, we present a stochastic distributed optimization framework for mobile cloud traffic management in 5G networks. The framework takes the impact of random wireless network characteristics into account. Utilizing the alternating direction method of multipliers, the optimization problem is decomposed into independent subproblems, which are solved in a parallel fashion on distributed agents and coordinated through dual variables. The convergence issue under the stochastic setting is addressed, and the numerical tests validate the effectiveness of the proposed algorithm. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Liu, Lanchao Niyato, Dusit Wang, Ping Han, Zhu |
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Article |
author |
Liu, Lanchao Niyato, Dusit Wang, Ping Han, Zhu |
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Liu, Lanchao |
title |
Scalable traffic management for mobile cloud services in 5G networks |
title_short |
Scalable traffic management for mobile cloud services in 5G networks |
title_full |
Scalable traffic management for mobile cloud services in 5G networks |
title_fullStr |
Scalable traffic management for mobile cloud services in 5G networks |
title_full_unstemmed |
Scalable traffic management for mobile cloud services in 5G networks |
title_sort |
scalable traffic management for mobile cloud services in 5g networks |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/141655 |
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1681057856905805824 |