TY - JOUR
T1 - Machine Learning in Manufacturing towards Industry 4.0: From ‘For Now’ to ‘Four-Know’
AU - Chen, Tingting
AU - Sampath, Vignesh
AU - May, Marvin Carl
AU - Shan, Shuo
AU - Jorg, Oliver Jonas
AU - Aguilar Martín, Juan José
AU - Stamer, Florian
AU - Fantoni, Gualtiero
AU - Tosello, Guido
AU - Calaon, Matteo
PY - 2023
Y1 - 2023
N2 - While attracting increasing research attention in science and technology, Machine Learning (ML) is playing a critical role in the digitalization of manufacturing operations towards Industry 4.0. Recently, ML has been applied in several fields of production engineering to solve a variety of tasks with different levels of complexity and performance. However, in spite of the enormous number of ML use cases, there is no guidance or standard for developing ML solutions from ideation to deployment. This paper aims to address this problem by proposing an ML application roadmap for the manufacturing industry based on the state-of-the-art published research on the topic. First, this paper presents two dimensions for formulating ML tasks, namely, ’Four-Know’ (Know-what, Know-why, Know-when, Know-how) and ’Four-Level’ (Product, Process, Machine, System). These are used to analyze ML development trends in manufacturing. Then, the paper provides an implementation pipeline starting from the very early stages of ML solution development and summarizes the available ML methods, including supervised learning methods, semi-supervised methods, unsupervised methods, and reinforcement methods, along with their typical applications. Finally, the paper discusses the current challenges during ML applications and provides an outline of possible directions for future developments.
AB - While attracting increasing research attention in science and technology, Machine Learning (ML) is playing a critical role in the digitalization of manufacturing operations towards Industry 4.0. Recently, ML has been applied in several fields of production engineering to solve a variety of tasks with different levels of complexity and performance. However, in spite of the enormous number of ML use cases, there is no guidance or standard for developing ML solutions from ideation to deployment. This paper aims to address this problem by proposing an ML application roadmap for the manufacturing industry based on the state-of-the-art published research on the topic. First, this paper presents two dimensions for formulating ML tasks, namely, ’Four-Know’ (Know-what, Know-why, Know-when, Know-how) and ’Four-Level’ (Product, Process, Machine, System). These are used to analyze ML development trends in manufacturing. Then, the paper provides an implementation pipeline starting from the very early stages of ML solution development and summarizes the available ML methods, including supervised learning methods, semi-supervised methods, unsupervised methods, and reinforcement methods, along with their typical applications. Finally, the paper discusses the current challenges during ML applications and provides an outline of possible directions for future developments.
KW - Machine learning
KW - Industry 4.0
KW - Manufacturing
KW - Artificial intelligence
KW - Smart manufacturing
KW - Digitization
U2 - 10.3390/app13031903
DO - 10.3390/app13031903
M3 - Journal article
SN - 2076-3417
VL - 13
JO - Applied Sciences
JF - Applied Sciences
IS - 3
M1 - 1903
ER -