
TL;DR
Abridged Petri Nets (APNs) offer a simplified, more transparent graphical framework for modeling complex stochastic systems, enabling efficient performance evaluation through direct linking of system components and hierarchical construction.
Contribution
This paper introduces Abridged Petri Nets, a novel graphical modeling framework that simplifies SPNs by directly linking places and using hierarchical submodels, enhancing model clarity and efficiency.
Findings
APNs are more compact than SPNs.
APNs facilitate more transparent models.
APNs enable efficient performance evaluation.
Abstract
A new graphical framework, Abridged Petri Nets (APNs) is introduced for bottom-up modeling of complex stochastic systems. APNs are similar to Stochastic Petri Nets (SPNs) in as much as they both rely on component-based representation of system state space, in contrast to Markov chains that explicitly model the states of an entire system. In both frameworks, so-called tokens (denoted as small circles) represent individual entities comprising the system; however, SPN graphs contain two distinct types of nodes (called places and transitions) with transitions serving the purpose of routing tokens among places. As a result, a pair of place nodes in SPNs can be linked to each other only via a transient stop, a transition node. In contrast, APN graphs link place nodes directly by arcs (transitions), similar to state space diagrams for Markov chains, and separate transition nodes are not…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Petri Nets in System Modeling · Simulation Techniques and Applications
