We propose a highly scalable statistical method for modelling the monitored traffic rate in a network node and suggest a simple method for detecting increased risk of congestion at different monitoring time scales. The approach is based on parameter estimation of a lognormal distribution using the method of moments. The proposed method is computation- ally efficient and requires only two counters for updating the parameter estimates between consecutive inspections. Evaluation using a naive congestion detector with a success rate of over 98% indicates that our model can be used to detect episodes of high congestion risk at 0.3 s using estimates captured at 5 m intervals
Abstract: A congestion avoidance scheme allows a network to operate in the region of low delay and h...
Accurately predicting network behavior is beneficial for TCP congestion control, and can help improv...
Common practice to determine the required bandwidth capacity for a network link is to measure the 5 ...
We propose a highly scalable statistical method for modelling the monitored traffic rate in a networ...
In this paper we propose a method, related to the theory of Network Calculus, for the analysis of ag...
Analysis and monitoring of traffic measurements can provide a useful tool for diagnostic, troublesho...
Analysis and monitoring of traffic measurements can provide a useful tool for diagnostics, troublesh...
This work presents an approach to the detection of local features in network traffic, based on the a...
Abstract: In order to maintain consistent quality of service, computer network engineers face the ta...
Network monitoring involves collecting and analyzing various types of data in order to detect change...
We present an efficient network measurement primitive that measures the rate of variations, or uniqu...
This article introduces a simple and effective methodology to determine the level of congestion in a...
ABSTRACT: Computer networks, which play a crucial role in the operation of many organizations, are v...
In this paper we present a scalable protocol for conducting periodic probes of network performance i...
With the emergence of computer networks as one of the primary modes of communication, and with thei...
Abstract: A congestion avoidance scheme allows a network to operate in the region of low delay and h...
Accurately predicting network behavior is beneficial for TCP congestion control, and can help improv...
Common practice to determine the required bandwidth capacity for a network link is to measure the 5 ...
We propose a highly scalable statistical method for modelling the monitored traffic rate in a networ...
In this paper we propose a method, related to the theory of Network Calculus, for the analysis of ag...
Analysis and monitoring of traffic measurements can provide a useful tool for diagnostic, troublesho...
Analysis and monitoring of traffic measurements can provide a useful tool for diagnostics, troublesh...
This work presents an approach to the detection of local features in network traffic, based on the a...
Abstract: In order to maintain consistent quality of service, computer network engineers face the ta...
Network monitoring involves collecting and analyzing various types of data in order to detect change...
We present an efficient network measurement primitive that measures the rate of variations, or uniqu...
This article introduces a simple and effective methodology to determine the level of congestion in a...
ABSTRACT: Computer networks, which play a crucial role in the operation of many organizations, are v...
In this paper we present a scalable protocol for conducting periodic probes of network performance i...
With the emergence of computer networks as one of the primary modes of communication, and with thei...
Abstract: A congestion avoidance scheme allows a network to operate in the region of low delay and h...
Accurately predicting network behavior is beneficial for TCP congestion control, and can help improv...
Common practice to determine the required bandwidth capacity for a network link is to measure the 5 ...