Title :
Network “memory” system for enhanced network services
Author :
Mokhtar, Bassem ; Eltoweissy, Mohamed ; El-Sayed, H.
Author_Institution :
Bradley Dept. of Electr. & Comput., Virginia Tech, Blacksburg, VA, USA
Abstract :
The advent of the Internet of things will bring to bear an explosion in the number of interconnected heterogeneous objects as well as the diverse resources and services they may offer. A fundamental goal is to ensure the availability of resources and services to communicating objects ubiquitously, resiliently, on-demand and at low cost while satisfying users´ QoS requirements. We hypothesize that to achieve this goal; there is a need to build capabilities for smarter networking to harvest the currently elusive rich semantics that emerge in interactions. In this paper, we propose the concept and primary architecture of a network “memory” (or NetMem) to support smarter data-driven network operations as a foundational component of next generation networks. Guided by the fact that networking activities exhibit spatiotemporal data patterns, we design NetMem to mimic functionalities of the human memory. NetMem provides capabilities for semantics management through integrating data virtualization, cloud-like scalable storage, associative rule learning and predictive analytics. NetMem provides associative access to data patterns and relevant derived semantics to enable enhancements in decision making, QoS guarantees and utilization of resources, early anomaly detection, and more accurate behavior prediction. We evaluate NetMem using simulation. Preliminary results demonstrate the positive impact of NetMem on various network management operations.
Keywords :
Internet of Things; data handling; quality of service; ubiquitous computing; Internet of things; NetMem; QoS requirements; associative rule learning; cloud like scalable storage; data driven network operations; data virtualization; decision making; enhanced network services; human memory; interconnected heterogeneous objects; network memory system; predictive analytics; semantics management; smarter networking; spatiotemporal data patterns; Bandwidth; Data mining; Feature extraction; Protocols; Quality of service; Runtime; Semantics; Associative Rule Learning; Bio-inspired Networking; Cloud Data Storage; Data Virtualization; Network Design; Network Semantics;
Conference_Titel :
Innovations in Information Technology (IIT), 2013 9th International Conference on
Conference_Location :
Abu Dhabi
DOI :
10.1109/Innovations.2013.6544387