Saltar para:
Logótipo
Comuta visibilidade da coluna esquerda
Você está em: Início > Publicações > Visualização > Effective and interpretable dispatching rules for dynamic job shops via guided empirical learning
Mapa das Instalações
Edifício Principal | Main Building Edifício Pós-Graduações | Post-Graduate Building

Effective and interpretable dispatching rules for dynamic job shops via guided empirical learning

Título
Effective and interpretable dispatching rules for dynamic job shops via guided empirical learning
Tipo
Artigo em Revista Científica Internacional
Ano
2022
Autores
Ferreira, C
(Autor)
Outra
A pessoa não pertence à instituição. A pessoa não pertence à instituição. A pessoa não pertence à instituição. Sem AUTHENTICUS Sem ORCID
Pedro Amorim
(Autor)
FEUP
Revista
Título: OmegaImportada do Authenticus Pesquisar Publicações da Revista
Vol. 111
ISSN: 0305-0483
Editora: Elsevier
Indexação
Outras Informações
ID Authenticus: P-00W-FQX
Abstract (EN): 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. However, the resulting rules are difficult to interpret and do not generalise well for a wide range of settings. This paper is the first major attempt at combining machine learning with domain problem reasoning for scheduling. The idea consists of using the insights obtained with the latter to guide the empirical search of the former. We hypothesise that this guided empirical learning process should result in effective and interpretable dispatching rules that generalise well to different scenarios. We test our approach in the classical dynamic job shop scheduling problem minimising tardiness, one of the most well-studied scheduling problems. The simulation experiments include a wide spectrum of scenarios for the first time, from highly loose to tight due dates and from low utilisation conditions to severely congested shops. Nonetheless, results show that our approach can find new state-of-the-art rules, which significantly outperform the existing literature in the vast majority of settings. Overall, the average improvement over the best combination of benchmark rules is 19%. Moreover, the rules are compact, interpretable, and generalise well to extreme, unseen scenarios. Therefore, we believe that this methodology could be a new paradigm for applying machine learning to dynamic optimisation problems.
Idioma: Inglês
Tipo (Avaliação Docente): Científica
Nº de páginas: 15
Documentos
Não foi encontrado nenhum documento associado à publicação.
Publicações Relacionadas

Dos mesmos autores

Scheduling wagons to unload in bulk cargo ports with uncertain processing times (2023)
Artigo em Revista Científica Internacional
Ferreira, C; figueira, g; Pedro Amorim; Pigatti, A

Da mesma revista

The two-dimensional knapsack problem with splittable items in stacks (2022)
Artigo em Revista Científica Internacional
Rapine, C; Joao Pedro Pedroso; Akbalik, A
The Floating-Cuts model: a general and flexible mixed-integer programming model for non-guillotine and guillotine rectangular cutting problems (2023)
Artigo em Revista Científica Internacional
Silva, E; José Fernando Oliveira; Silveira, T; Mundim, L; Maria Antónia Carravilla
The convergence of the World Health Organization Member States regarding the United Nations' Sustainable Development Goal 'Good health and well-being' (2021)
Artigo em Revista Científica Internacional
Pereira, MA; Ana Maria Cunha Ribeiro dos Santos Ponces Camanho; Marques, RC; Figueira, JR
Tactical production and distribution planning with dependency issues on the production process (2017)
Artigo em Revista Científica Internacional
Wenchao Wei; Luis Guimarães; Pedro Amorim; Bernardo Almada Lobo
Solving a large multi-product production-routing problem with delivery time windows (2019)
Artigo em Revista Científica Internacional
Fábio Neves Moreira; Bernardo Almada Lobo; Luís Guimarães; Jean-François Cordeau; Raf Jans

Ver todas (19)

Recomendar Página Voltar ao Topo
Copyright 1996-2024 © Faculdade de Economia da Universidade do Porto  I Termos e Condições  I Acessibilidade  I Índice A-Z  I Livro de Visitas
Página gerada em: 2024-10-01 às 01:10:48 | Política de Utilização Aceitável | Política de Proteção de Dados Pessoais | Denúncias
SAMA2