This thesis presents new methodology in the field of quantifying and reducing input modelling error in computer simulation. Input modelling error is the uncertainty in the output of a simulation that propagates from the errors in the input models used to drive it. When the input models are estimated from observations of the real-world system input modelling error will always arise as only a finite number of observations can ever be collected. Input modelling error can be broken down into two components: variance, known in the literature as input uncertainty; and bias. In this thesis new methodology is contributed for the quantification of both of these sources of error. To date research into input modelling error has been focused on quantif...
Computer simulation is a well-established decision support tool in manufacturing industry. However, ...
All computer simulation models require some form of initialization before their outputs can be consi...
In this thesis we present a methodology for validating Gaussian process models: Gaussian process emu...
Bias due to input modelling is almost always assumed negligible and ignored. It is known that increa...
Input model bias is the bias found in the output performance measures of a simulation model caused b...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
Often in simulation procedures are not proposed unless they are supported by a strong mathematical b...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Input data modeling is a critical component of a successful simulation application. A perspective of...
Input models that drive stochastic simulations are often estimated from real-world samples of data. ...
In predictive modeling with simulation or machine learning, it is critical to assess the quality of ...
The last century has seen a growing interest in complexity in economics and social sciences. The nee...
We consider an assemble-to-order production system where the product demands and the time since the ...
When input distributions to a simulation model are estimated from real-world data, they naturally ha...
The objective of this research is to increase the robustness of discrete-event simulation (DES) when...
Computer simulation is a well-established decision support tool in manufacturing industry. However, ...
All computer simulation models require some form of initialization before their outputs can be consi...
In this thesis we present a methodology for validating Gaussian process models: Gaussian process emu...
Bias due to input modelling is almost always assumed negligible and ignored. It is known that increa...
Input model bias is the bias found in the output performance measures of a simulation model caused b...
In stochastic simulation the input models used to drive the simulation are often estimated by collec...
Often in simulation procedures are not proposed unless they are supported by a strong mathematical b...
Stochastic simulation is an invaluable tool for operations-research practitioners for the performanc...
Input data modeling is a critical component of a successful simulation application. A perspective of...
Input models that drive stochastic simulations are often estimated from real-world samples of data. ...
In predictive modeling with simulation or machine learning, it is critical to assess the quality of ...
The last century has seen a growing interest in complexity in economics and social sciences. The nee...
We consider an assemble-to-order production system where the product demands and the time since the ...
When input distributions to a simulation model are estimated from real-world data, they naturally ha...
The objective of this research is to increase the robustness of discrete-event simulation (DES) when...
Computer simulation is a well-established decision support tool in manufacturing industry. However, ...
All computer simulation models require some form of initialization before their outputs can be consi...
In this thesis we present a methodology for validating Gaussian process models: Gaussian process emu...