An intelligent quality of service architecture for Information-Centric Vehicular Networking

Cutifa Safitri, Yoshihide Yamada, Sabariah Baharun, Shidrokh Goudarzi, Ngoc Quang Nguyen, Takuro Sato

Research output: Contribution to journalArticle

Abstract

Information-Centric Vehicular Networking (ICVN) is a paradigm shift in vehicular communication which implements self-content management to eliminates issues related to the current host-based IP network. Due to the exponential growth in demands of multimedia services, current vehicular networks face several challenges to support mobility with optimal Quality of Service (QoS). To achieve the high QoS performance, an intelligent vehicular network service with dynamic control mechanisms is necessary. This motivates the development of dynamic content management that implements an intelligence architecture. The proposed intelligent architecture comprised of two primary stages: classifications and discovery. In the first stage, a classifier system categorizes the user's content request and the second stage presents an adaptive forwarding path discovery towards the nearest content provider. Here, a Rule-based Evolutionary Systems (RES) agent performs exploration and exploitation to discover every possible forwarding path in the heterogeneous network. The agent then performs the discovery action that is guided by the variance introduced in the Reinforcement Learning (RL) policy. The simulation results confirms the suitability and scalability of the proposed architecture, particularly in reducing data packet delivery time, increasing data transfer rate, improve interest success rate, and lower the network traffic by 70%, 28%, 24% and 65% respectively.

Original languageEnglish
Pages (from-to)15-20
Number of pages6
JournalInternetworking Indonesia Journal
Volume10
Issue number2
Publication statusPublished - 2018 Jan 1

Fingerprint

Quality of service
Data transfer rates
Multimedia services
Heterogeneous networks
Reinforcement learning
Scalability
Classifiers
Communication

Keywords

  • Artificial intelligent
  • Information-centric networking
  • Quality of service
  • Reinforcement learning
  • Vehicular network

ASJC Scopus subject areas

  • Computer Science(all)

Cite this

An intelligent quality of service architecture for Information-Centric Vehicular Networking. / Safitri, Cutifa; Yamada, Yoshihide; Baharun, Sabariah; Goudarzi, Shidrokh; Nguyen, Ngoc Quang; Sato, Takuro.

In: Internetworking Indonesia Journal, Vol. 10, No. 2, 01.01.2018, p. 15-20.

Research output: Contribution to journalArticle

Safitri, Cutifa ; Yamada, Yoshihide ; Baharun, Sabariah ; Goudarzi, Shidrokh ; Nguyen, Ngoc Quang ; Sato, Takuro. / An intelligent quality of service architecture for Information-Centric Vehicular Networking. In: Internetworking Indonesia Journal. 2018 ; Vol. 10, No. 2. pp. 15-20.
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