Title of article :
Approximate zero-variance Monte Carlo estimation of Markovian unreliability
Author/Authors :
Delcoux، نويسنده , , J. L.; Labeau، نويسنده , , P. E.; Devooght، نويسنده , , J، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1998
Abstract :
Monte Carlo simulation has become an important tool for the estimation
of reliability characteristics, since conventional numerical methods are
no more efficient when the size of the system to solve increases. However,
evaluating by a simulation the probability of occurrence of very rare events
means playing a very large number of histories of the system, which leads to
unacceptable computation times. Acceleration and variance reduction techniques
have to be worked out. We show in this paper how to write the equations
of Markovian reliability as a transport problem, and how the well known zerovariance
scheme can be adapted to this application. But such a method is
always specific to the estimation of one quantity, while a Monte Carlo simulation
allows to perform simultaneously estimations of diverse quantities .
.Therefore, the estimation of one of them could be made more accurate while
degrading at the same time the variance of other estimations. We propound
here a method to reduce simultaneously the variance for several quantities, by
using probability laws that would lead to zero-variance in the estimation of a
mean of these quantities. Just like the zero-variance one, the method we propound
is impossible to perform exactly. However we show that simple
approximations of it may be very efficient
Journal title :
Annals of Nuclear Energy
Journal title :
Annals of Nuclear Energy