TY - JOUR
T1 - Integration of IoT, Transport SDN, and Edge/Cloud Computing for Dynamic Distribution of IoT Analytics and Efficient Use of Network Resources
AU - Muñoz, Raül
AU - Vilalta, Ricard
AU - Yoshikane, Noboru
AU - Casellas, Ramon
AU - Martínez, Ricardo
AU - Tsuritani, Takehiro
AU - Morita, Itsuro
N1 - Funding Information:
Part of this work has been performed in the framework of the H2020 project 5GCAR cofunded by the EU. The authors would like to thank the contributions of their colleagues from 5GCAR although the views expressed are those of the authors and do not necessarily represent the views of the 5GCAR project. This work was supported by the Spanish MINECO projects DESTELLO (TEC2015-69256-R).
Funding Information:
Manuscript received October 24, 2017; revised December 22, 2017; accepted January 26, 2018. Date of publication January 30, 2018; date of current version March 1, 2018. This work was supported by the Spanish MINECO projects DESTELLO (TEC2015-69256-R). This paper was presented in part at the Proceedings of European Conference on Optical Communications, Gothenburg, Sweden, Sep. 17–21, 2017. (Corresponding author: Raül Muñoz.) R. Muñoz, R. Vilalta, R. Casellas, and R. Martínez are with the Centre Tecnològic de Telecomunicacions de Catalunya, Castelldefels 08860, Spain (e-mail: raul.munoz@cttc.es; ricard.vilalta@cttc.es; ramon.casellas@cttc.es; ricardo.martinez@cttc.es).
Publisher Copyright:
© 2018 IEEE.
PY - 2018/4/1
Y1 - 2018/4/1
N2 - Internet of Things (IoT) requires cloud infrastructures for data analysis (e.g., temperature monitoring, energy consumption measurement, etc.). Traditionally, cloud services have been implemented in large datacenters in the core network. Core cloud offers high-computational capacity with moderate response time, meeting the requirements of centralized services with low-delay demands. However, collecting information and bringing it into one core cloud infrastructure is not a long-term scalable solution, particularly as the volume of IoT devices and data is forecasted to explode. A scalable and efficient solution, both at the network and cloud level, is to distribute the IoT analytics between the core cloud and the edge of the network (e.g., first analytics on the edge cloud and the big data analytics on the core cloud). For an efficient distribution of IoT analytics and use of network resources, it requires to integrate the control of the transport networks (packet and optical) with the distributed edge and cloud resources in order to deploy dynamic and efficient IoT services. This paper presents and experimentally validates the first IoT-aware multilayer (packet/optical) transport software defined networking and edge/cloud orchestration architecture that deploys an IoT-traffic control and congestion avoidance mechanism for dynamic distribution of IoT processing to the edge of the network (i.e., edge computing) based on the actual network resource state.
AB - Internet of Things (IoT) requires cloud infrastructures for data analysis (e.g., temperature monitoring, energy consumption measurement, etc.). Traditionally, cloud services have been implemented in large datacenters in the core network. Core cloud offers high-computational capacity with moderate response time, meeting the requirements of centralized services with low-delay demands. However, collecting information and bringing it into one core cloud infrastructure is not a long-term scalable solution, particularly as the volume of IoT devices and data is forecasted to explode. A scalable and efficient solution, both at the network and cloud level, is to distribute the IoT analytics between the core cloud and the edge of the network (e.g., first analytics on the edge cloud and the big data analytics on the core cloud). For an efficient distribution of IoT analytics and use of network resources, it requires to integrate the control of the transport networks (packet and optical) with the distributed edge and cloud resources in order to deploy dynamic and efficient IoT services. This paper presents and experimentally validates the first IoT-aware multilayer (packet/optical) transport software defined networking and edge/cloud orchestration architecture that deploys an IoT-traffic control and congestion avoidance mechanism for dynamic distribution of IoT processing to the edge of the network (i.e., edge computing) based on the actual network resource state.
KW - Cloud orchestration
KW - IoT analytics
KW - edge computing
KW - transport software defined networking (SDN)
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U2 - 10.1109/JLT.2018.2800660
DO - 10.1109/JLT.2018.2800660
M3 - Article
AN - SCOPUS:85041425747
SN - 0733-8724
VL - 36
SP - 1420
EP - 1428
JO - Journal of Lightwave Technology
JF - Journal of Lightwave Technology
IS - 7
M1 - 8276320
ER -