[en] The advent of innovation compelled scholars to go beyond personal ideological views towards sustainable issues, consequently losing the perspective of technological freedom. With that in mind, the polarised technological landscape in which industrial maintenance finds itself seems to exhibit more philosophical behaviour, as observed by the exponential rise of narrative reviews. Nevertheless, in the face of the industrial “Fourth Wave”, academicians who govern scientific advancement of maintenance, underpinned with Research and Innovation funds, seem to be disseminating excess scientific tutelage rather than productively altering maintenance, which provoked us to conduct a twofold analysis. Firstly, based on the Evidence-Based Approach (EBA), we systematically analyse maintenance-related EU projects. Secondly, to align with Green Deal EU targets by fostering decarbonisation of asset-intensive industries, we utilise the Preferred Reporting Items and Meta-Analyses (PRISMA) framework for analysing energy-dedicated maintenance literature. The evidence suggests that ongoing research includes optimisation of maintenance activities for the sake of sustainability, on one side, while on the other, evidence suggests that energy consumption parameters can be considered as maintenance indicators used for diagnostic and prognostic feature selection purposes. Finally, results provide several insights: (1) absence of sustainability indicators in decision-making is a strong argument for the lack of maintenance impact in Industry 4.0, (2) manufacturing sector represents the first momentum of Energy-Based Maintenance evolution, and (3) gentrification and technology transfer activities will enable the smoother transition of sustainable maintenance practice.
Disciplines :
Engineering, computing & technology: Multidisciplinary, general & others
Author, co-author :
OROSNJAK, Marko ; University of Novi Sad > Industrial Engineering and Management
Jocanović, Mitar ; University of Novi Sad, Faculty of Technical Sciences, Serbia
Čavić, Maja ; University of Novi Sad, Faculty of Technical Sciences, Serbia
Karanović, Velibor; University of Novi Sad, Faculty of Technical Sciences, Serbia
Penčić, Marko; University of Novi Sad, Faculty of Technical Sciences, Serbia
External co-authors :
yes
Language :
English
Title :
Industrial maintenance 4(.0) Horizon Europe: Consequences of the Iron Curtain and Energy-Based Maintenance
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