Search results

Filters

  • Journals
  • Authors
  • Keywords
  • Date
  • Type

Search results

Number of results: 4
items per page: 25 50 75
Sort by:
Download PDF Download RIS Download Bibtex

Abstract

The article refers to the idea of using the software defined network (SDN) as an effective hardware and software platform enabling the creation and dynamic management of distributed ICT infrastructure supporting the rapid prototyping process. The authors proposed a new layered reference model remote distributed rapid prototyping that allows the development of heterogeneous, open systems of rapid prototyping in a distributed environment. Next, the implementation of this model was presented in which the functioning of the bottom layers of the model is based on the SDN architecture. Laboratory tests were carried out for this implementation which allowed to verify the proposed model in the real environment, as well as determine its potential and possibilities for further development. Thus, the approach described in the paper may contribute to the development and improvement of the efficiency of rapid prototyping processes which individual components are located in remote industrial, research and development units. Thanks to this, it will be possible to better integrate production processes as well as optimize the costs associated with prototyping. The proposed solution is also a response in this regard to the needs of industry 4.0 in the area of creating scalable, controllable and reliable platforms.

Go to article

Authors and Affiliations

D. Mazur
A. Paszkiewicz
M. Bolanowski
G. Budzik
M. Oleksy
Download PDF Download RIS Download Bibtex

Abstract

This paper presents a new OpenFlow controller: the Distributed Active Information Model (DAIM). The DAIM controller was developed to explore the viability of a logically distributed control plane. It is implemented in a distributed way throughout a software-defined network, at the level of the switches. The method enables local process flows, by way of local packet switching, to be controlled by the distributed DAIM controller (as opposed to a centralised OpenFlow controller). The DAIM ecosystem is discussed with some sample code, together with flowcharts of the implemented algorithms. We present implementation details, a testing methodology, and an experimental evaluation. A performance analysis was conducted using the Cbench open benchmarking tool. Comparisons were drawn with respect to throughput and latency. It is concluded that the DAIM controller can handle a high throughput, while keeping the latency relatively low. We believe the results to date are potentially very interesting, especially in light of the fact that a key feature of the DAIM controller is that it is designed to enable the future development of autonomous local flow process and management strategies.
Go to article

Authors and Affiliations

Pupatwibul Pakawat
Banjar Ameen
Hossain Md. Imam
Robin Braun
Bruce Moulton
Download PDF Download RIS Download Bibtex

Abstract

In the article, a validation module, being a component of an integrated system supporting routing in software defined networks (SDNRoute), is proposed and thoroughly examined. The module allows for the verification of the results provided by the optimization module before these results are deployed in the production network. Routing policies are validated for their impact on the network quality parameters and against the threat of overloading (congestion).

Go to article

Authors and Affiliations

Piotr Jaglarz
Grzegorz Rzym
Piotr Jurkiewicz
ORCID: ORCID
Piotr Boryło
ORCID: ORCID
Piotr Chołda
Download PDF Download RIS Download Bibtex

Abstract

The power distribution internet of things (PD-IoT) has the complex network architecture, various emerging services, and the enormous number of terminal devices, which poses rigid requirements on substrate network infrastructure. However, the traditional PD-IoT has the characteristics of single network function, management and maintenance difficulties, and poor service flexibility, which makes it hard to meet the differentiated quality of service (QoS) requirements of different services. In this paper, we propose the software-defined networking (SDN)- enabled PD-IoT framework to improve network compatibility and flexibility, and investigate the virtual network function (VNF) embedding problem of service orchestration in PD-IoT. To solve the preference conflicts among different VNFs towards the network function node (NFV) and provide differentiated service for services in various priorities, a matching-based priorityaware VNF embedding (MPVE) algorithm is proposed to reduce energy consumption while minimizing the total task processing delay. Simulation results demonstrate that MPVE significantly outperforms existing matching algorithm and random matching algorithm in terms of delay and energy consumption while ensuring the task processing requirements of high-priority services.
Go to article

Bibliography

[1] Z. Zhou, J. Bai, Z. Sheng, ”A Stackelberg Game Approach for Energy Management in Smart Distribution Systems with Multiple Microgrids”, in IEEE ISADS 2015 workshop on Smart Grid Communications and Networking Technologies. Taiwan, China, 2015.
[2] A. Dadashzade, F. Aminifar, M. Davarpanah, ”Unbalanced Source Detection in Power Distribution Networks by Negative Sequence Apparent Powers”, IEEE Trans. Power Deliv. 36(5), 481-483 (2021).
[3] Z. Lv, W. Xiu, ”Interaction of Edge-Cloud Computing Based on SDN and NFV for Next Generation IoT”, IEEE Internet Things J. 7 (4), 5706-5712 (2020) .
[4] Z. Zhou, X. Chen, B. Gu, ”Multi-Scale Dynamic Allocation of Licensed and Unlicensed Spectrum in Software-Defined HetNets”, IEEE Netw. 33 (6), 9-15 (2019).
[5] G. Wang, S. Zhou, S. Zhang, Z. Niu, X. Shen, ”SFC-Based Service Provisioning for Reconfigurable Space-Air-Ground Integrated Networks”, IEEE J. Sel. Areas Commun. 38 (3), 1478-1489 (2020) .
[6] J. Li, W. Shi, N. Zhang, X. Shen, ”Delay-Aware VNF Scheduling: A Reinforcement Learning Approach With Variable Action Set”, IEEE Trans. Cogn. Commun. Netw. 7 (2), 304-318 (2021).
[7] G. Faraci, G. Schembra, ”An Analytical Model to Design and Manage a Green SDN/NFV CPE Node” IEEE Trans. Netw. Service Manag. 12 (4), 435-450 (2015).
[8] B. R.Al-Kaseem, ”Al-Raweshidy, H.S. SD-NFV as an Energy Efficient Approach for M2M Networks Using Cloud-Based 6LoWPAN Testbed”, IEEE Internet Things J. 4 (2), 1787-1797 (2017).
[9] Z. Zhou, J. Gong, Y. He, Y. Zhang, ”Software Defined Machineto- Machine Communication for Smart Energy Management”, IEEE Commun. Mag. 55(7), 52-60 ( 2017).
[10] C. Mouradian, N. T. Jahromi, R. H.Glitho, ”NFV and SDN-Based Distributed IoT Gateway for Large-Scale Disaster Management”, IEEE Internet Things J., 5 (2), 4119-4131 ( 2018).
[11] L. You, B. Tuncer, R. Zhu, H. Xing, C. Yuen, ”A Synergetic Orchestration of Objects, Data and Services to Enable Smart Cities”, IEEE Internet Things J. 6(2), 10496-10507 ( 2019).
[12] B. Cheng, S. Hou, M.Wang, S. Zhao, J. Chen, ”HSOP: A Hybrid Service Orchestration Platform for Internet-Telephony Networks”, IEEE/ACM Trans. Netw. 28 (5), 1102-1115 (2020).
[13] G. Castellano, F. Esposito, F. Risso, ”A Service-Defined Approach for Orchestration of Heterogeneous Applications in Cloud/Edge Platforms”, IEEE Trans. Netw. Service Manag. 16(3), 1404-1418 (2019).
[14] B. Kar, E. H.-K.Wu, Y. D .Lin, ”Energy cost optimization in dynamic placement of virtualized network function chains”, IEEE Trans. Netw. Service Manag. 15 (4), 372–386 (2018).
[15] M. M.Tajiki, S. Salsano, L. Chiaraviglio, M. Shojafar, B. Akbari, ”Joint Energy Efficient and QoS-Aware Path Allocation and VNF Placement for Service Function Chaining”, IEEE Trans. Netw. Serv. 16 (6), 374-388 (2019) .
[16] L. Ruiz, et al. ”Genetic Algorithm for Holistic VNF-Mapping and Virtual Topology Design”, IEEE Access. 8 (3), 55893-55904 (2020).
[17] K. S. Ghaia, S. Choudhurya, A. Yassineb, ”A stable matching based algorithm to minimize the end-to-end latency of edge nfv”, Procedia Computer Science. 151 (9), 377-384 (2019).
[18] C. Pham, N. H.Tran, C. S. Hong, ”Virtual Network Function Scheduling: A Matching Game Approach”, IEEE Commun. Lett. 22 (5), 69-72 (2018) .
[19] C. Pham, N. H.Tran, S. Ren, W. Saad, C. S. Hong, ”Traffic-Aware and Energy-Efficient vNF Placement for Service Chaining: Joint Sampling and Matching Approach”, IEEE Trans. Serv. Comput. 13 (9), 172-185 (2020).
[20] Z. Zhou et al. Context-Aware Learning-Based Resource Allocation for Ubiquitous Power IoT. IEEE Internet Things Mag. 4(1), 46-52 (2020) .
[21] Z. Zhou, H. Liao, H. Zhao, B. Ai, M. Guizani, ”Reliable Task Offloading for Vehicular Fog Computing Under Information Asymmetry and Information Uncertainty”, IEEE Trans. Veh. Technol.68 (6), 8322-8335 (2019).
[22] Z. Xu, X. Zhang, S. Yu, J. Zhang, ”Energy-Efficient Virtual Network Function Placement in Telecom Networks”, in 2018 IEEE International Conference on Communications (ICC), Kansas City, MO, USA, 2018.
[23] M. C. Luizelli, L. R. Bays, L. S.Buriol, M. P. Barcellos, L. P. Gaspary, ”Piecing together the NFV provisioning puzzle: Efficient placement and chaining of virtual network functions”, in 2015 IFIP/IEEE International Symposium on Integrated Network Management (IM), Ottawa, ON, Canada, 2015.
[24] X. Fei, F. Liu, H. Xu, H. Jin, ”Adaptive VNF Scaling and Flow Routing with Proactive Demand Prediction”, in IEEE INFOCOM 2018 - IEEE Conference on Computer Communications, Honolulu, HI, USA, 2018.
[25] M. Chen, Y. Hao, ”Task Offloading for Mobile Edge Computing in Software Defined Ultra-Dense Network”, IEEE J. Sel. Areas Commun. 36 (2), 587-597 (2018).
[26] D. Yuan, X. Yang, Y. Jiang, Y. Meng, ”An Energy-Delay Trade-Off in Wireless Visual Sensor Networks Based on Two-Sided Matching”, IEEE Sensors J. 19 (6), 10099-10110 (2019).
[27] J. Xu, M. Li, J. Fan, X. Zhao, Z. Chang, ”Self-Learning Super- Resolution Using Convolutional Principal Component Analysis and Random Matching”, IEEE Trans. Multimedia21 (5), 1108-1121 (2018)
Go to article

Authors and Affiliations

Xiaoyue Li
1
Xiankai Chen
1
Chaoqun Zhou
1
Zilong Liang
1
Shubo Liu
1
Qiao Yu
1

  1. State Grid Qingdao Power Supply Company, China

This page uses 'cookies'. Learn more