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What is the pNetwork Modeling? 


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pNet modeling is a method used to describe and analyze the behavior of open systems, whether they are synchronous, asynchronous, or heterogeneous. It is based on the concept of open automata and allows for compositional checking of system properties. The modeling process involves building predicates that express the synchronization conditions between the events of sub-systems, and these predicates are checked for satisfiability using the Z3 SMT engine . pNet modeling has been applied to various use-cases, including classical process-algebra operators and industry-oriented BIP architectures for control software . The approach has been shown to scale up well, even when dealing with large-scale problems, and can handle systems with explicit data . The hypernetwork model is also a suitable approach for describing and analyzing human-machine systems, as it allows for the representation of multiple viewpoints, dynamic hierarchical structures, and variable boundaries .

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The paper does not provide a specific definition or explanation of "pNetwork Modeling."
The provided paper does not mention "pNetwork Modeling".
The paper does not mention "pNetwork Modeling". The paper proposes a hypernetwork model to describe and analyze human-machine systems.
The provided paper does not mention anything about "pNetwork Modeling".
Open accessPosted Content
01 Aug 2020-arXiv: Methodology
1 Citations
The paper does not provide a specific definition or explanation of "pNetwork Modeling."

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