An important, but often neglected, part of any sound simulation study is that of modeling each source of system randomness by an appropriate probability distribution. We first give some examples of data sets from real-world simulation studies, which is followed by a discussion of two critical pitfalls in simulation input modeling. The two major methods for modeling a source of randomness when corresponding data are available are delineated, namely, fitting a theoretical probability distribution to the data and the use of an empirical distribution. We then give a three-activity approach for choosing the theoretical distribution that best represents a set of observed data. This is followed by a discussion of how to model a source of system ra...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
Input data modeling is a critical component of a successful simulation application. A perspective of...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
In this paper, we discuss the critical role of simulation input modeling in a successful simulation ...
Stochastic simulation models are used to predict the behavior of real systems whose components have ...
Stochastic simulation models utilize probability distributions to represent a multitude of randomly ...
Work has been done in generating random variates of some distributions for simulation purposes. A su...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
Input data modeling is a critical component of a successful simulation application. A perspective of...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
Input modeling is the selection of a probability distribution to capture the uncertainty in the inpu...
In this paper, we discuss the critical role of simulation input modeling in a successful simulation ...
Stochastic simulation models are used to predict the behavior of real systems whose components have ...
Stochastic simulation models utilize probability distributions to represent a multitude of randomly ...
Work has been done in generating random variates of some distributions for simulation purposes. A su...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...