Artículo

Machine Learning and Process Mining applied to Process Optimization: Bibliometric and Systemic Analysis

Resumen

The highly competitive business environment has been increasing with the advent of Industry 4.0, since the fast-changing market requirements need rapid decision-making to improve productivity. Hence, the smart factory has been highlighted as a digitized and connected production facility, which can use and combine data analytics and artificial intelligence algorithms and techniques to manage and eliminate failures in advance by accurate prediction. Thus, the purpose of this study is to identify the unfilled gaps and the opportunities regarding machine learning and process mining applied to process optimization, through a literature review based on the last five years of study. In order to accomplish these goals, the current study was based on the Knowledge Development Process – Constructivist (ProKnow-C) methodology. Firstly, a bibliographic portfolio was created through Articles Selection and Filters Application. This found that, from 3562 published articles across five databases between 2014 and 2018, only 32 articles relating to the topic were relevant. Secondly, the bibliometric analysis allowed the interpretation and the evaluation of the bibliographic portfolio regarding its impact factor, the scientific recognition of the articles, the publishing year and the highlighted authors. Thirdly, the systemic analysis carried out thorough reading of all selected articles to identify the main researched problems, the proposed goals and resources, the unfilled gaps and the opportunities. (C) 2019 The Authors. Published by Elsevier B.V.
Autores
Fernandes, EC; Fitzgerald, B; Brown, L; Borsato, M
Título
Machine Learning and Process Mining applied to Process Optimization: Bibliometric and Systemic Analysis
Afiliaciones
Universidade Tecnologica Federal do Parana
Año
2019
DOI
10.1016/j.promfg.2020.01.012
Tipo de acceso abierto
gold
Referencia
WOS:000889468900011
Artículo obtenido de:
WOS
0 0 votos
Califica el artículo
Subscribirse
Notificación de