Consideration about the possibility to integrate vague uncertainty notions into numerical simulation modeling tools may be a very interesting research field. In this way, it will be possible to exploit more efficient and robust modeling evaluation tools in the study of high productivity and flexibility production systems. In literature, few works investigated on the possibility to cope with the lack of numerical models able to deal with ill-defined uncertainty. In particular, if it is possible to describe uncertainty by statistical distribution, the methods of classical discrete event simulation theory are able to model the considered system thoroughly and may be regarded as an exhaustive tool. Otherwise, if uncertainty can not be described...
Abstract. In previous studies we first concentrated on utilizing crisp simu-lation to produce discre...
Data analysis in the context of the features of the problem domain and the dynamics of processes are...
Uncertainties enter into a complex problem from many sources: variability, errors, and lack of knowl...
The integration of uncertainty notions into numerical simulation modeling tools is an interesting re...
The integration of uncertainty notions into numerical simulation modeling tools is an interesting r...
This article deals with simulation of approximate models of dynamic systems. We propose an approach ...
This article deals with simulation of approximate models of dynamic systems. We propose an approach ...
Abstract—There is an increasing use of fuzzy data in the field of discrete-event system modeling. Th...
Abstract: Traditional stochastic discrete event simulation method requires the users to fit the task...
A timeline in Discrete-Event Simulation (DES) is a sequence of events defined in a numerable subset ...
A novel method using a fuzzy practicable interval to characterize non-statistical uncertainty in dyn...
This paper addresses state estimation of discrete event systems (DES) exhibiting variations on the d...
Abstract. A novel method using a fuzzy practicable interval to characterize non-statistical uncertai...
AbstractIn this paper, we propose a Configurable Model Based DSS capable of dealing with generic pro...
summary:The goal of this contribution is to introduce some approaches to uncertainty modeling in a w...
Abstract. In previous studies we first concentrated on utilizing crisp simu-lation to produce discre...
Data analysis in the context of the features of the problem domain and the dynamics of processes are...
Uncertainties enter into a complex problem from many sources: variability, errors, and lack of knowl...
The integration of uncertainty notions into numerical simulation modeling tools is an interesting re...
The integration of uncertainty notions into numerical simulation modeling tools is an interesting r...
This article deals with simulation of approximate models of dynamic systems. We propose an approach ...
This article deals with simulation of approximate models of dynamic systems. We propose an approach ...
Abstract—There is an increasing use of fuzzy data in the field of discrete-event system modeling. Th...
Abstract: Traditional stochastic discrete event simulation method requires the users to fit the task...
A timeline in Discrete-Event Simulation (DES) is a sequence of events defined in a numerable subset ...
A novel method using a fuzzy practicable interval to characterize non-statistical uncertainty in dyn...
This paper addresses state estimation of discrete event systems (DES) exhibiting variations on the d...
Abstract. A novel method using a fuzzy practicable interval to characterize non-statistical uncertai...
AbstractIn this paper, we propose a Configurable Model Based DSS capable of dealing with generic pro...
summary:The goal of this contribution is to introduce some approaches to uncertainty modeling in a w...
Abstract. In previous studies we first concentrated on utilizing crisp simu-lation to produce discre...
Data analysis in the context of the features of the problem domain and the dynamics of processes are...
Uncertainties enter into a complex problem from many sources: variability, errors, and lack of knowl...