Markovian arrival process

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In queueing theory, a discipline within the mathematical theory of probability, a Markovian arrival process (MAP or MArP[1]) is a mathematical model for the time between job arrivals to a system. The simplest such process is a Poisson process where the time between each arrival is exponentially distributed.[2][3]

The processes were first suggested by Neuts in 1979.[2][4]

Definition

A Markov arrival process is defined by two matrices D0 and D1 where elements of D0 represent hidden transitions and elements of D1 observable transitions. The block matrix Q below is a transition rate matrix for a continuous-time Markov chain.[5]


Q=\left[\begin{matrix}
D_{0}&D_{1}&0&0&\dots\\
0&D_{0}&D_{1}&0&\dots\\
0&0&D_{0}&D_{1}&\dots\\
\vdots & \vdots & \ddots & \ddots & \ddots
\end{matrix}\right]\; .

The simplest example is a Poisson process where D0 = −λ and D1 = λ where there is only one possible transition, it is observable and occurs at rate λ. For Q to be a valid transition rate matrix, the following restrictions apply to the Di

\begin{align}
0\leq [D_{1}]_{i,j}&<\infty \\
0\leq [D_{0}]_{i,j}&<\infty \quad i\neq j \\
\, [D_{0}]_{i,i}&<0 \\
(D_{0}+D_{1})\boldsymbol{1} &= \boldsymbol{0}
\end{align}

Special cases

Markov-modulated Poisson process

The Markov-modulated Poisson process or MMPP where m Poisson processes are switched between by an underlying continuous-time Markov chain.[6] If each of the m Poisson processes has rate λi and the modulating continuous-time Markov has m × m transition rate matrix R, then the MAP representation is

\begin{align}
D_{1} &= \operatorname{diag}\{\lambda_{1},\dots,\lambda_{m}\}\\
D_{0} &=R-D_1.
\end{align}

Phase-type renewal process

The phase-type renewal process is a Markov arrival process with phase-type distributed sojourn between arrivals. For example if an arrival process has an interarrival time distribution PH(\boldsymbol{\alpha},S) with an exit vector denoted \boldsymbol{S}^{0}=-S\boldsymbol{1}, the arrival process has generator matrix,


Q=\left[\begin{matrix}
S&\boldsymbol{S}^{0}\boldsymbol{\alpha}&0&0&\dots\\
0&S&\boldsymbol{S}^{0}\boldsymbol{\alpha}&0&\dots\\
0&0&S&\boldsymbol{S}^{0}\boldsymbol{\alpha}&\dots\\
\vdots&\vdots&\ddots&\ddots&\ddots\\
\end{matrix}\right]

Batch Markov arrival process

The batch Markovian arrival process (BMAP) is a generalisation of the Markovian arrival process by allowing more than one arrival at a time.[7] The homogeneous case has rate matrix,


Q=\left[\begin{matrix}
D_{0}&D_{1}&D_{2}&D_{3}&\dots\\
0&D_{0}&D_{1}&D_{2}&\dots\\
0&0&D_{0}&D_{1}&\dots\\
\vdots & \vdots & \ddots & \ddots & \ddots
\end{matrix}\right]\; .

An arrival of size k occurs every time a transition occurs in the sub-matrix D_{k}. Sub-matrices D_{k} have elements of \lambda_{i,j}, the rate of a Poisson process, such that,


0\leq [D_{k}]_{i,j}<\infty\;\;\;\; 1\leq k

0\leq [D_{0}]_{i,j}<\infty\;\;\;\; i\neq j

[D_{0}]_{i,i}<0\;

and


\sum^{\infty}_{k=0}D_{k}\boldsymbol{1}=\boldsymbol{0}

Fitting

A MAP can be fitted using an expectation–maximization algorithm.[8]

Software

See also

References

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