The increasing complexity and uncertain system of modern discrete event system (DES) challenge traditional model-based control approaches, while artificial intelligence (AI) techniques offer powerful data-driven decision-making capabilities but lack formal guarantees. This review surveys recent research on the integration of AI with DES and supervisory control theory. Following a systematic literature mapping methodology, the literature is organized using a taxonomy based on three orthogonal perspectives: control and decision paradigm, system capability and property, and application and operational objectives. The review highlights how learning-based methods enhance adaptability and performance in DES, while also exposing persistent challenges related to safety, nonblocking behavior, data efficiency, and interpretability. By structuring existing approaches and identifying open issues, this review provides a coherent overview of the current research landscape and outlines key directions for future work on AI-enabled DES.

A Survey on Recent Advances in the Integration of Discrete Event Systems and Artificial Intelligence / Ren, Jie; Liu, Ruotian; Mangini, Agostino Marcello; Fanti, Maria Pia. - In: APPLIED SCIENCES. - ISSN 2076-3417. - 16:6(2026). [10.3390/app16063000]

A Survey on Recent Advances in the Integration of Discrete Event Systems and Artificial Intelligence

Ren, Jie;Liu, Ruotian;Mangini, Agostino Marcello;Fanti, Maria Pia
2026

Abstract

The increasing complexity and uncertain system of modern discrete event system (DES) challenge traditional model-based control approaches, while artificial intelligence (AI) techniques offer powerful data-driven decision-making capabilities but lack formal guarantees. This review surveys recent research on the integration of AI with DES and supervisory control theory. Following a systematic literature mapping methodology, the literature is organized using a taxonomy based on three orthogonal perspectives: control and decision paradigm, system capability and property, and application and operational objectives. The review highlights how learning-based methods enhance adaptability and performance in DES, while also exposing persistent challenges related to safety, nonblocking behavior, data efficiency, and interpretability. By structuring existing approaches and identifying open issues, this review provides a coherent overview of the current research landscape and outlines key directions for future work on AI-enabled DES.
2026
A Survey on Recent Advances in the Integration of Discrete Event Systems and Artificial Intelligence / Ren, Jie; Liu, Ruotian; Mangini, Agostino Marcello; Fanti, Maria Pia. - In: APPLIED SCIENCES. - ISSN 2076-3417. - 16:6(2026). [10.3390/app16063000]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11589/300600
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