arXiv Open Access 2025

A Recommendation System-Based Framework for Enhancing Human-Machine Collaboration in Industrial Timetabling Rescheduling: Application in Preventive Maintenance

Kévin Ducharlet Liwen Zhang Sara Maqrot Houssem Saidi
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Abstrak

Industrial timetabling is a critical task for decision-makers across various sectors to ensure efficient system operation. In real-world settings, it remains challenging because unexpected events often disrupt execution. When such events arise, effective rescheduling and collaboration between humans and machines becomes essential. This paper presents a recommendation system-based framework for handling rescheduling challenges, built on Timefold, a powerful AI-driven planning engine. Our experimental study evaluates nine instances inspired by a realworld preventive maintenance use case, aiming to identify the heuristic that best balances solution quality and computing time to support near-optimal decisionmaking when rescheduling is required due to unexpected events during operational days. Finally, we illustrate the complete process of our recommendation system through a simple use case.

Topik & Kata Kunci

Penulis (4)

K

Kévin Ducharlet

L

Liwen Zhang

S

Sara Maqrot

H

Houssem Saidi

Format Sitasi

Ducharlet, K., Zhang, L., Maqrot, S., Saidi, H. (2025). A Recommendation System-Based Framework for Enhancing Human-Machine Collaboration in Industrial Timetabling Rescheduling: Application in Preventive Maintenance. https://arxiv.org/abs/2601.06029

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓