We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Identifying Internet of Things (IoT) solutions in the complex process of industrial machinery maintenance.
- Authors
Ehsanifar, Mohammad; Dekamini, Fatemeh; Bajelan, Milad; Spulbar, Cristi; Birau, Ramona; Shalibeik, Sina; Călugăru, Toni
- Abstract
Objective: Today, the Internet of Things (IoT) is used as an optimization tool in many aspects of monitoring. It seems that IoT is a suitable approach to transfer data related to various activities, including industrial activities, and ultimately leads to cost optimization and increase the life of some equipment. Accordingly, this study examines the identification of IoT solutions in the maintenance of industrial machinery. Research Method: The method used was estimative and fuzzy in MATLAB software environment. The required data for estimation were collected in DTA format and with the opinion of experts using industrial equipment in the form of pairwise comparison matrices. Findings: Findings from estimation in fuzzy environment showed that the best possible solutions for identifying and using IoT tools in repair and maintenance of machines based on ranking and respectively to the components of heating system monitoring, direction optimization Reducing power consumption and managing power consumption, creating data transmission firewalls to ensure security and safety, as well as providing automation of inspection equipment along with critical event management. Results: Also, for the most optimal use of the Internet of Things in the repair and maintenance of industrial machinery, it is necessary that sensors continuously provide data related to intelligent air conditioning, equipment consumption management in the cloud computing space to engineers and repair technicians.
- Subjects
PLANT maintenance; MANUFACTURING processes; INTERNET of things; MACHINERY maintenance &; repair; INDUSTRIAL equipment
- Publication
Revista de Stiinte Politice / Revue des Sciences Politiques, 2021, Issue 70, p27
- ISSN
1584-224X
- Publication type
Article