• DocumentCode
    57371
  • Title

    Parsimonious Network Traffic Modeling By Transformed ARMA Models

  • Author

    Laner, Markus ; Svoboda, Philipp ; Rupp, Markus

  • Author_Institution
    Inst. of Telecommun., Vienna Univ. of Technol., Vienna, Austria
  • Volume
    2
  • fYear
    2014
  • fDate
    2014
  • Firstpage
    40
  • Lastpage
    55
  • Abstract
    Generating synthetic data traffic, which statistically resembles its recorded counterpart is one of the main goals of network traffic modeling. Equivalently, one or several random processes shall be created, exhibiting multiple prescribed statistical measures. In this paper, we present a framework enabling the joint representation of distributions, autocorrelations and cross-correlations of multiple processes. This is achieved by so called transformed Gaussian autoregressive moving-average models. They constitute an analytically tractable framework, which allows for the separation of the fitting problems into subproblems for individual measures. Accordingly, known fitting techniques and algorithms can be deployed for the respective solution. The proposed framework exhibits promising properties: 1) relevant statistical properties such as heavy tails and long-range dependences are manageable; 2) the resulting models are parsimonious; 3) the fitting procedure is fully automatic; and 4) the complexity of generating synthetic traffic is very low. We evaluate the framework with traced traffic, i.e., aggregated traffic, online gaming, and video streaming. The queueing responses of synthetic and recorded traffic exhibit identical statistics. This paper provides guidance for high-quality modeling of network traffic. It proposes a unifying framework, validates several fitting algorithms, and suggests combinations of algorithms suited best for specific traffic types.
  • Keywords
    Gaussian processes; autoregressive moving average processes; computer networks; queueing theory; telecommunication traffic; aggregated traffic; fitting technique; multiple processes autocorrelation; multiple processes cross-correlation; online gaming; parsimonious network traffic modeling; queueing response; synthetic data traffic; synthetic traffic; transformed ARMA models; transformed Gaussian autoregressive moving average model; video streaming; Data models; Data processing; Hidden Markov models; Modeling; Random processes; Streaming media; Telecommunication traffic; ARMA model; Traffic modeling; parsimoniousness; transformed Gaussian;
  • fLanguage
    English
  • Journal_Title
    Access, IEEE
  • Publisher
    ieee
  • ISSN
    2169-3536
  • Type

    jour

  • DOI
    10.1109/ACCESS.2013.2297736
  • Filename
    6710106