A new hybrid approach for Petri nets (PNs) is proposed in this paper by combining the PNs principles with the foundations of information theory for knowledge representation. The resulting PNs have been named Plausible Petri nets (PPNs) mainly because they can handle the evolution of a discrete event system together with uncertain (plausible) information about the system using states of information. This paper overviews the main concepts of classical PNs and presents a method to allow uncertain information exchange about a state variable within the system dynamics. The resulting methodology is exemplified using an idealized expert system, which illustrates some of the challenges faced in real-world applications of PPNs
Abstract — This paper presents knowledge representation-oriented nets (KRON), a knowledge representa...
The paper discusses how Petri nets may be used for the qualitative modeling of physical systems. The...
Fuzzy Petri nets (FPNs) have been applied in many fields as a potential modeling tool for knowledge ...
This paper presents a new model for Petri nets (PNs) which combines PN principles with the foundatio...
A new hybrid approach for Petri nets (PNs) is proposed in this paper by combining the PNs principles...
Abstract. Expert systems (ESs) are complex information systems that are expensive to build and diffi...
Purpose of this master thesis is description of base parts of expert system with using Petri nets. A...
This article provides a computational framework to model self-adaptive expert systems using the Pet...
High level Petri Nets have recently been used for many AI applications, particularly for modelling t...
Situation recognition is a process with the goal of identifying a priori defined situations in a flo...
This paper provides a computational framework to model self-adaptive expert systems using the Petri ...
One of the main challenges when analyzing and modelling complex systems using Petri nets is to deal ...
Abstract:-Possibilistic logic and Bayesian networks have provided advantageous methodologies and tec...
In this paper the execution of Fuzzy Knowledge Bases in the truth space is briefly analyzed. The com...
This paper presents a mathematical framework for modeling prognostics at a system level, by combinin...
Abstract — This paper presents knowledge representation-oriented nets (KRON), a knowledge representa...
The paper discusses how Petri nets may be used for the qualitative modeling of physical systems. The...
Fuzzy Petri nets (FPNs) have been applied in many fields as a potential modeling tool for knowledge ...
This paper presents a new model for Petri nets (PNs) which combines PN principles with the foundatio...
A new hybrid approach for Petri nets (PNs) is proposed in this paper by combining the PNs principles...
Abstract. Expert systems (ESs) are complex information systems that are expensive to build and diffi...
Purpose of this master thesis is description of base parts of expert system with using Petri nets. A...
This article provides a computational framework to model self-adaptive expert systems using the Pet...
High level Petri Nets have recently been used for many AI applications, particularly for modelling t...
Situation recognition is a process with the goal of identifying a priori defined situations in a flo...
This paper provides a computational framework to model self-adaptive expert systems using the Petri ...
One of the main challenges when analyzing and modelling complex systems using Petri nets is to deal ...
Abstract:-Possibilistic logic and Bayesian networks have provided advantageous methodologies and tec...
In this paper the execution of Fuzzy Knowledge Bases in the truth space is briefly analyzed. The com...
This paper presents a mathematical framework for modeling prognostics at a system level, by combinin...
Abstract — This paper presents knowledge representation-oriented nets (KRON), a knowledge representa...
The paper discusses how Petri nets may be used for the qualitative modeling of physical systems. The...
Fuzzy Petri nets (FPNs) have been applied in many fields as a potential modeling tool for knowledge ...