As simulation output is generally nonstationary and autocorrelated and includes the initialization bias we can't directly apply traditional statistic approaches to its analysis. One of solutions for this problem is to exclude the initial part of simulation output that is affected by this bias. Detection of steady state is one of the most important issues for the automation of simulation output analysis. This paper deals with on-line detection of truncation point in order to estimate efficiently the steady-state mean of single-run simulation by batch means method. Two algorithms are purposed. The first algorithm is based on the Euclidean distance equation and the second utilizes the backpropagation algorithm in neural networks that has been ...
This paper reviews statistical methods for analyzing output data from computer simulations of single...
Simulation results are often limited to mean values, even though this provides very limited informat...
Data truncation is a commonly accepted method of dealing with initialization bias in discrete-event ...
Simulation output is generally stochastic and autocorrelated, and includes the initial condition bia...
In steady-state simulation the output data of the transient phase often causes a bias in the estimat...
The application of the correct simulation output analysis technique requires a knowledgge of the mod...
ABSTRACT The issue of the initial transient phase in steady state simulation has been widely discuss...
We develop theory and methodology to estimate the variance of the sample mean of general steady-stat...
The credibility of the final results from stochastic simulation has had limited discussion in the si...
Steady state detection is critically important in many engineering fields such as fault detection an...
Steady state detection is critically important in many engineering fields such as fault detection an...
Often in simulation procedures are not proposed unless they are supported by a strong mathematical b...
Simulation experiments involve various sub-tasks, e.g., parameter optimization, simulation execution...
developed to solve system design problems which can not be expressed in explicit analytical or mathe...
TR-COSC 03/08Today, many studies of communication networks rely on simulation conducted to assess th...
This paper reviews statistical methods for analyzing output data from computer simulations of single...
Simulation results are often limited to mean values, even though this provides very limited informat...
Data truncation is a commonly accepted method of dealing with initialization bias in discrete-event ...
Simulation output is generally stochastic and autocorrelated, and includes the initial condition bia...
In steady-state simulation the output data of the transient phase often causes a bias in the estimat...
The application of the correct simulation output analysis technique requires a knowledgge of the mod...
ABSTRACT The issue of the initial transient phase in steady state simulation has been widely discuss...
We develop theory and methodology to estimate the variance of the sample mean of general steady-stat...
The credibility of the final results from stochastic simulation has had limited discussion in the si...
Steady state detection is critically important in many engineering fields such as fault detection an...
Steady state detection is critically important in many engineering fields such as fault detection an...
Often in simulation procedures are not proposed unless they are supported by a strong mathematical b...
Simulation experiments involve various sub-tasks, e.g., parameter optimization, simulation execution...
developed to solve system design problems which can not be expressed in explicit analytical or mathe...
TR-COSC 03/08Today, many studies of communication networks rely on simulation conducted to assess th...
This paper reviews statistical methods for analyzing output data from computer simulations of single...
Simulation results are often limited to mean values, even though this provides very limited informat...
Data truncation is a commonly accepted method of dealing with initialization bias in discrete-event ...