FRANCESCA MENEGHELLO

PhD Graduate

PhD program:: XXXVIII


supervisor: Chiara Ghidini

Thesis title: AI-Enhanced Business Process Simulation for Decision Making Support

Organizations face constant change driven by internal and external factors such as competitive pressure, regulatory shifts, and technological advancements, requiring continuous adaptation to improve efficiency, service quality, and overall performance. Effective decision-making in this context is critical, but relying solely on managerial intuition is often insufficient for complex systems. Business Process Simulation (BPS) has therefore emerged as a valuable decision-support tool, allowing analysts to systematically evaluate potential changes and their impacts within a controlled, risk-free environment. Indeed, BPS enables rapid assessment of numerous hypothetical scenarios, a practice commonly known as what-if analysis, which strengthens and simplifies the decision-making process. The key challenge lies in defining a simulation model that accurately represents the real business process while adequately capturing its inherent complexity. In practice, however, simulation models are often oversimplified and may fail to fully reflect real world dynamics and variability. In order to address the limitations of BPS, this thesis investigates the integration of AI models into BPS. In particular, the use of AI models helps overcome unrealistic and oversimplified assumptions in reproducing process behavior. Conversely, integrating BPS techniques into AI approaches enables the incorporation of a global process perspective, capturing dependencies and interactions among multiple process instances. Therefore, this integration aims to leverage the respective strengths of the two components while mitigating their weaknesses. The thesis starts from the definition of a hybrid simulation model capable of integrating multiple predictive models at \emph{runtime} across different perspectives, which enables a more accurate representation of real-world processes. Further building upon this foundation, it investigates a process-based optimization approach integrated with the hybrid simulation model. This integration aims to overcome existing limitations, particularly the lack of consideration of the overall process as a multi-instance system and the limited applicability of current approaches to real world processes. The results highlight the adaptability and configurability of the hybrid simulation model, demonstrating its ability to assume different roles, ranging from actively identifying optimal solutions to supporting decision makers in selecting among alternative scenarios. This versatility is achieved through the design of an advanced simulation model that integrates process-based AI optimization techniques while maintaining a comprehensive evaluation framework capable of capturing all process perspectives, multi-instance dynamics, and the inherent stochasticity of business processes.

Research products

11573/1753278 - 2025 - Proactive Data-driven Scheduling of Business Processes
Meneghello, Francesca; Senderovich, Arik; Ronzani, Massimiliano; Di Francescomarino, Chiara; Ghidini, Chiara - 04b Atto di convegno in volume
conference: International Joint Conference on Artificial Intelligence (Montreal; Canada)
book: Proceedings of the Thirty-Fourth International Joint Conference on Artificial Intelligence. Main Track - (9781956792065)

11573/1726818 - 2024 - Generating the Traces You Need: A Conditional Generative Model for Process Mining Data
Graziosi, Riccardo; Ronzani, Massimiliano; Buliga, Andrei; Di Francescomarino, Chiara; Folino, Francesco; Ghidini, Chiara; Meneghello, Francesca; Pontieri, Luigi - 04b Atto di convegno in volume
conference: 6th International Conference on Process Mining (ICPM) (Copenhagen, Denmark)
book: 024 6th International Conference on Process Mining (ICPM) - (9798350365030)

11573/1726819 - 2024 - Runtime integration of machine learning and simulation for business processes: Time and decision mining predictions
Meneghello, Francesca; Francescomarino, Chiara Di; Ghidini, Chiara; Ronzani, Massimiliano - 01a Articolo in rivista
paper: INFORMATION SYSTEMS (Elsevier Science Limited:Oxford Fulfillment Center, PO Box 800, Kidlington Oxford OX5 1DX United Kingdom:011 44 1865 843000, 011 44 1865 843699, EMAIL: asianfo@elsevier.com, tcb@elsevier.co.UK, INTERNET: http://www.elsevier.com, http://www.elsevier.com/locate/shpsa/, Fax: 011 44 1865 843010) pp. - - issn: 0306-4379 - wos: WOS:001337056000001 (3) - scopus: 2-s2.0-85206254492 (11)

11573/1726813 - 2024 - Optimizing Resource Allocation Policies in Real-World Business Processes Using Hybrid Process Simulation and Deep Reinforcement Learning
Meneghello, Francesca; Middelhuis, Jeroen; Genga, Laura; Bukhsh, Zaharah; Ronzani, Massimiliano; Di Francescomarino, Chiara; Ghidini, Chiara; Dijkman, Remco - 04b Atto di convegno in volume
conference: Business Process Management - 22nd International Conference (Krakow, Poland)
book: Business Process Management - 22nd International Conference - (9783031703959; 9783031703966)

11573/1690420 - 2023 - Runtime integration of machine learning and simulation for business processes
Meneghello, Francesca; Di Francescomarino, Chiara; Ghidini, Chiara - 04b Atto di convegno in volume
conference: 2023 5th International Conference on Process Mining (ICPM) (Rome, Italy)
book: 2023 5th International Conference on Process Mining (ICPM) - (979-8-3503-5839-1)

11573/1726848 - 2023 - RIMS_tool: a Hybrid Simulator for Business Processes
Meneghello, Francesca; Di Francescomarino, Chiara; Ghidini, Chiara - 04b Atto di convegno in volume
conference: ICPM-D 2023 ICPM Doctoral Consortium and Demo Track 2023 (Rome, Italy)
book: ICPM-D 2023 ICPM Doctoral Consortium and Demo Track 2023 - ()

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