Experimental data collected drift (random size) of the law affecting real experimental data set, so it is not the only manifestation of the set of theoretical parameters. The same law theoretically true distribution may materialize through an infinity of sets of experimental data due random factors influence. The paper presents practical ways of determining confidence intervals using Monte Carlo method. The central issue of how the analysis is to determine the parameters found empirical distribution so as accurately to model the system stat
The possibility of applying the information theory in the problem of comparing the expected and stat...
This article aimed to explain the statistical models and parametric methods in order to estimate and...
In 1939, W. Weibull developed what is now commonly known as the "Weibull Distribution Function" prim...
International audienceThis chapter introduces the principles underlying the simulation of the probab...
A computer program which computes fiducial confidence intervals for reliability by Monte Carlo simul...
The problem of determination of system reliability of randomly vibrating structures arises in many a...
This chapter reviews fundamental ideas in reliability theory and inference. The first part of the ch...
This chapter describes various methods for reduction of uncertainties in the determination of charac...
This paper presents the calculation of the uncertainty for distribution propagation by the Monte Car...
Representation of probabilistic technique for evaluation of thermal power system reliability is the ...
The main subject of this paper is the representation of the probabilistic technique for thermal powe...
Lecturepg. 91Monte Carlo analysis is a powerful tool for modeling the reliability of systems. Proper...
© 2014, Pleiades Publishing, Ltd. It is shown that in some situations, for example, models invariant...
Models which are constructed to represent the uncertainty arising in engineered systems can often be...
This chapter introduces the principles underlying the simulation of the probability distributions wh...
The possibility of applying the information theory in the problem of comparing the expected and stat...
This article aimed to explain the statistical models and parametric methods in order to estimate and...
In 1939, W. Weibull developed what is now commonly known as the "Weibull Distribution Function" prim...
International audienceThis chapter introduces the principles underlying the simulation of the probab...
A computer program which computes fiducial confidence intervals for reliability by Monte Carlo simul...
The problem of determination of system reliability of randomly vibrating structures arises in many a...
This chapter reviews fundamental ideas in reliability theory and inference. The first part of the ch...
This chapter describes various methods for reduction of uncertainties in the determination of charac...
This paper presents the calculation of the uncertainty for distribution propagation by the Monte Car...
Representation of probabilistic technique for evaluation of thermal power system reliability is the ...
The main subject of this paper is the representation of the probabilistic technique for thermal powe...
Lecturepg. 91Monte Carlo analysis is a powerful tool for modeling the reliability of systems. Proper...
© 2014, Pleiades Publishing, Ltd. It is shown that in some situations, for example, models invariant...
Models which are constructed to represent the uncertainty arising in engineered systems can often be...
This chapter introduces the principles underlying the simulation of the probability distributions wh...
The possibility of applying the information theory in the problem of comparing the expected and stat...
This article aimed to explain the statistical models and parametric methods in order to estimate and...
In 1939, W. Weibull developed what is now commonly known as the "Weibull Distribution Function" prim...