2021
DOI: 10.48550/arxiv.2109.03323
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Effective and interpretable dispatching rules for dynamic job shops via guided empirical learning

Cristiane Ferreira,
Gonçalo Figueira,
Pedro Amorim

Abstract: The emergence of Industry 4.0 is making production systems more flexible and also more dynamic. In these settings, schedules often need to be adapted in real-time by dispatching rules. Although substantial progress was made until the '90s, the performance of these rules is still rather limited. The machine learning literature is developing a variety of methods to improve them, but the resulting rules are difficult to interpret and do not generalise well for a wide range of settings. This paper is the first maj… Show more

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