Pattern Recognition and Deep Learning Technologies, Enablers of Industry 4.0, and Their Role in Engineering Research

Serey, Joel; Alfaro, Miguel; Fuertes, Guillermo; Vargas, Manuel; Duran, Claudia; Ternero, Rodrigo; Rivera, Ricardo; Sabattin, Jorge

Abstract

The purpose of this study is to summarize the pattern recognition (PR) and deep learning (DL) artificial intelligence methods developed for the management of data in the last six years. The methodology used for the study of documents is a content analysis. For this study, 186 references are considered, from which 120 are selected for the literature review. First, a general introduction to artificial intelligence is presented, in which PR/DL methods are studied and their relevance to data management evaluated. Next, a literature review is provided of the most recent applications of PR/DL, and the capacity of these methods to process large volumes of data is evaluated. The analysis of the literature also reveals the main applications, challenges, approaches, advantages, and disadvantages of using these methods. Moreover, we discuss the main measurement instruments; the methodological contributions by study areas and research domain; and major databases, journals, and countries that contribute to the field of study. Finally, we identify emerging research trends, their limitations, and possible future research paths.

Más información

Título según WOS: Pattern Recognition and Deep Learning Technologies, Enablers of Industry 4.0, and Their Role in Engineering Research
Título de la Revista: SYMMETRY-BASEL
Volumen: 15
Número: 2
Editorial: MDPI
Fecha de publicación: 2023
DOI:

10.3390/sym15020535

Notas: ISI