Title :
Fast, Memory Efficient Flow Rate Estimation Using Runs
Author :
Hao, Fang ; Kodialam, Murali ; Lakshman, T.V. ; Mohanty, Shantidev
Author_Institution :
Bell Labs., Murray Hill
Abstract :
Per-flow network traffic measurements are needed for effective network traffic management, network performance assessment, and detection of anomalous network events such as incipient denial-of-service (DoS) attacks. Explicit measurement of per-flow traffic statistics is difficult in backbone networks because tracking the possibly hundreds of thousands of flows needs correspondingly large high-speed memories. To reduce the measurement overhead, many previous papers have proposed the use of random sampling and this is also used in commercial routers (Cisco´s NetFlow). Our goal is to develop a new scheme that has very low memory requirements and has quick convergence to within a pre-specified accuracy. We achieve this by use of a novel approach based on sampling two-runs to estimate per-flow traffic. (A flow has a two-run when two consecutive samples belong to the same flow). Sampling two-runs automatically biases the samples towards the larger flows thereby making the estimation of these sources more accurate. This biased sampling leads to significantly smaller memory requirement compared to random sampling schemes. The scheme is very simple to implement and performs extremely well.
Keywords :
IP networks; computer network management; quality of service; sampling methods; statistical analysis; telecommunication traffic; DoS; IP flow statistics; anomalous network event detection; biased sampling; commercial routers; incipient denial-of-service attacks; memory efficient flow rate estimation; memory requirement; network performance assessment; network traffic management; per-flow network traffic measurement; per-flow traffic statistics; random sampling; IP flow statistics; traffic measurement; two run;
Journal_Title :
Networking, IEEE/ACM Transactions on
DOI :
10.1109/TNET.2007.900385