Traffic control cannot be done without having a well-fit model to represent the traffic. Therefore traffic modeling is an essential part of any network control research project. Markov-Modulated Poisson Process (MMPP) shows the great flexibility and analytical tractibility which is needed in traffic control. MMPP model is not only capable of capturing the interframe correlation in the traffic, but also can be easily analysed by using well-known Matrix Geometric techniques. Our research in this project is focused on the study of MMPP for modeling of the traffic in the broadband networks. We first start with the simplest case, a two state MMPP, and study its performance for representing the ATM traffic. Starting with a superposition of voice...
Abstract. Packet loss is an important parameter for dimensioning net-work links or traffic classes c...
Markov Modulated Posson Process (MMPP) is a good model of Internet traffic. We take an IP trace and ...
Abstract We consider a statistical multiplexer model, in which each of N sources is a Markov modulat...
In this paper, we propose and study fitting algorithms for MMPP(2) and CMPP ATM traffic models, whic...
In this paper a new approach to the modelling of ATMtraffic is proposed. The traffic is measured and...
We describe the frst steps in the evaluation of an idea to match the high vari- ability found in mea...
In this paper we study the loss performance of an ATM multiplexer, whose input consists of the super...
In this paper it is proved that artificial neural networks are adequate tools to obtain superpositio...
In this paper we discuss a time domain approach for the traffic identification problem in ATM networ...
In this paper it is proved that artificial neural networks (ANN) are adequate tools to obtain superp...
In this paper, we propose a MMPP (Markov modulated Poisson process) traffic model that accurately ap...
Abstract—We consider a statistical multiplexer model, in which each of K sources is a Markov modulat...
In this paper, we propose the multi-level Markov modulated Poisson process with arbitrary distributi...
Recent measurements of packet/cell streams in multimedia communication networks have revealed that t...
Networks of queues provide effective models for communication systems. It is possible to use these m...
Abstract. Packet loss is an important parameter for dimensioning net-work links or traffic classes c...
Markov Modulated Posson Process (MMPP) is a good model of Internet traffic. We take an IP trace and ...
Abstract We consider a statistical multiplexer model, in which each of N sources is a Markov modulat...
In this paper, we propose and study fitting algorithms for MMPP(2) and CMPP ATM traffic models, whic...
In this paper a new approach to the modelling of ATMtraffic is proposed. The traffic is measured and...
We describe the frst steps in the evaluation of an idea to match the high vari- ability found in mea...
In this paper we study the loss performance of an ATM multiplexer, whose input consists of the super...
In this paper it is proved that artificial neural networks are adequate tools to obtain superpositio...
In this paper we discuss a time domain approach for the traffic identification problem in ATM networ...
In this paper it is proved that artificial neural networks (ANN) are adequate tools to obtain superp...
In this paper, we propose a MMPP (Markov modulated Poisson process) traffic model that accurately ap...
Abstract—We consider a statistical multiplexer model, in which each of K sources is a Markov modulat...
In this paper, we propose the multi-level Markov modulated Poisson process with arbitrary distributi...
Recent measurements of packet/cell streams in multimedia communication networks have revealed that t...
Networks of queues provide effective models for communication systems. It is possible to use these m...
Abstract. Packet loss is an important parameter for dimensioning net-work links or traffic classes c...
Markov Modulated Posson Process (MMPP) is a good model of Internet traffic. We take an IP trace and ...
Abstract We consider a statistical multiplexer model, in which each of N sources is a Markov modulat...