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A progressive learning method for classification of manufacturing errors based on machine data

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Detalhes bibliográficos
Resumo:Manufacturing companies face significant market pressure in today’s globalised world. Fierce global competition and product individualisation mean that production systems require continuous optimisation. This means that automation, flexibility and efficiency have all become vital elements for manufacturers. In this paper, a method based on incremental classification used for manufacturing errors is presented. The analysis and classification focus on data of binary form collected from a machine control unit during manufacturing operation in real time. Various methods that can learn from data incrementally and autonomously are to be applied. The training starts with the least amount of data possible and other important steps like data preprocessing are reviewed under the aspect of incremental learning.
Autores principais:Obenauff, Alexander
Assunto:Progressive Learning Incremental Learning Fault Diagnosis Manufacturing Machine Learning Novelty Detection Concept Drift Online Resampling PLT Neural Network Hoeffding Tree Adaptive Random Forest k-Nearest Neighbours
Ano:2019
País:Portugal
Tipo de documento:dissertação de mestrado
Tipo de acesso:acesso restrito
Instituição associada:Universidade Nova de Lisboa
Idioma:inglês
Origem:Repositório Institucional da UNL
Descrição
Resumo:Manufacturing companies face significant market pressure in today’s globalised world. Fierce global competition and product individualisation mean that production systems require continuous optimisation. This means that automation, flexibility and efficiency have all become vital elements for manufacturers. In this paper, a method based on incremental classification used for manufacturing errors is presented. The analysis and classification focus on data of binary form collected from a machine control unit during manufacturing operation in real time. Various methods that can learn from data incrementally and autonomously are to be applied. The training starts with the least amount of data possible and other important steps like data preprocessing are reviewed under the aspect of incremental learning.