Non-homogeneous Poisson process model (
NHPP) represents the number of failures experienced up to time
t is a non-homogeneous Poisson process {N(t), t β₯ 0}.
The main issue in the NHPP model is to determine an appropriate mean value function to denote the expected number of failures experienced up to a certain time.
With different assumptions, the model will end up with different functional forms of the mean value function. Note that in a renewal process, the exponential assumption for the inter-arrival time between failures is relaxed, and in the NHPP, the stationary assumption is relaxed.
Non-homogeneous Poisson process model is based on the following assumptions:
-->The failure process has an independent increment, i.e. the number of failures during the time interval (t, t + s) depends on the current time t and the length of time interval s, and does not depend on the past history of the process.
--> The failure rate of the process is given by P{exactly one failure in (t, t + βt)} = P{N(t, t + βt) - N(t)=1} = (t)βt + o(βt) where (t) is the intensity function.
--> During a small interval βt, the probability of more than one failure is negligible, that is, P{two or more failure in (t, t+βt)} = o(βt)
--> The initial condition is N(0) = 0.
On the basis of these assumptions, the probability of exactly n failures occurring during the time interval (0, t) for the NHPP is given by
ββββββββββββββ
whereββ βand β is the intensity function. It can be easily shown that the mean value function m(t) is non-decreasing.
Reliability Function:
The reliability R(t), defined as the probability that there are no failures in the time interval (0, t), is given by
ββββββββββββββ
In general, the reliability R(x|t), the probability that there are no failures in the interval (t, t + x), is given by
ββββββββββββββ
and its density is given by
ββββββββββββββ
where
The variance of the NHPP can be obtained as follows:
ββββββββββββββ