Process-aware Information Systems support the enactment of business processes and rely on a model that prescribes which executions are allowed. As a result, the model needs to be sound for the process to be carried out. Traditionally, soundness has been defined and studied by only focusing on the control-flow. Some works proposed techniques to repair the process model to ensure soundness, ignoring data and decision perspectives. This paper puts forward a technique to repair the data perspective of process models, keeping intact the control flow structure. Processes are modeled by Data Petri nets. Our approach repairs the Constraint Graph, a finite symbolic abstraction of the infinite state–space of the underlying Data Petri net. The changes in the Constraint Graph are then projected back onto the Data Petri net.

Data-aware process models: From soundness checking to repair

Zavatteri, Matteo
Writing – Original Draft Preparation
;
Bresolin, Davide
Writing – Original Draft Preparation
;
de Leoni, Massimiliano
Writing – Review & Editing
;
2025

Abstract

Process-aware Information Systems support the enactment of business processes and rely on a model that prescribes which executions are allowed. As a result, the model needs to be sound for the process to be carried out. Traditionally, soundness has been defined and studied by only focusing on the control-flow. Some works proposed techniques to repair the process model to ensure soundness, ignoring data and decision perspectives. This paper puts forward a technique to repair the data perspective of process models, keeping intact the control flow structure. Processes are modeled by Data Petri nets. Our approach repairs the Constraint Graph, a finite symbolic abstraction of the infinite state–space of the underlying Data Petri net. The changes in the Constraint Graph are then projected back onto the Data Petri net.
2025
   iNEST: INTERCONNECTED NORD-EST INNOVATION ECOSYSTEM - Spoke 9 - MODELS, METHODS, COMPUTING TECHNOLOGIES FOR DIGITAL TWIN - AFFILIATO
   iNEST
   Ministero
   ECS00000043

   Certificazione, monitoraggio, ed interpretabilità in sistemi di intelligenza artificiale
   ISTITUTO NAZIONALE DI ALTA MATEMATICA FRANCESCO SEVERI

   Analisi simbolica e numerica di sistemi ciberfisici
   ISTITUTO NAZIONALE DI ALTA MATEMATICA FRANCESCO SEVERI
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3539866
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