Please use this identifier to cite or link to this item: http://hdl.handle.net/10071/28759
Author(s): Gomes, R.
Amaral, V.
Brito e Abreu, F.
Editor: Anwar, S., Ullah, A., Rocha, Á., and Sousa, M. J.
Date: 2023
Title: Combining different data sources for IIoT-based process monitoring
Volume: 614
Book title/volume: Proceedings of International Conference on Information Technology and Applications ICITA 2022. Lecture Notes in Networks and Systems
Pages: 111 - 121
Event title: 16th International Conference on Information Technology and Applications (ICITA 2022)
Reference: Gomes, R., Amaral, V., & Brito e Abreu, F. (2023). Combining different data sources for IIoT-based process monitoring. In S. Anwar, A. Ullah, Á. Rocha, & M. J. Sousa (Eds.), Proceedings of International Conference on Information Technology and Applications ICITA 2022. Lecture Notes in Networks and Systems (vol. 614, pp. 111-121). Springer. https://doi.org/10.1007/978-981-19-9331-2_10
ISSN: 2367-3370
ISBN: 978-981-19-9331-2
DOI (Digital Object Identifier): 10.1007/978-981-19-9331-2_10
Keywords: Process activity recognition
IIoT
IoT sensors
Intrusive load monitoring
Machine learning
Indoor location
Classic cars restoration
Charter of Turin
Abstract: Motivation—Industrial internet of things (IIoT) refers to interconnected sensors, instruments, and other devices networked together with computers’ industrial applications, including manufacturing and energy management. This connectivity allows for data collection, exchange, and analysis, potentially facilitating improvements in productivity and efficiency, as well as other economic benefits. IIoT provides more automation by using cloud computing to refine and optimize process controls. Problem—Detection and classification of events inside industrial settings for process monitoring often rely on input channels of various types (e.g. energy consumption, occupation data or noise) that are typically imprecise. However, the proper identification of events is fundamental for automatic monitoring processes in the industrial setting, allowing simulation and forecast for decision support. Methods—We have built a framework where process events are being collected in a classic cars restoration shop to detect the usage of equipment such as paint booths, sanders and polishers, using energy monitoring, temperature, humidity and vibration IoT sensors connected to a Wifi network. For that purpose, BLE beacons are used to locate cars being repaired within the shop floor plan. The InfluxDB is used for monitoring sensor data, and a server is used to perform operations on it, as well as run machine learning algorithms. Results—By combining location data and equipment being used, we are able to infer, using ML algorithms, some steps of the restoration process each classic car is going through. This detection contributes to the ability of car owners to remotely follow the restore process, thus reducing the carbon footprint and making the whole process more transparent.
Peerreviewed: yes
Access type: Open Access
Appears in Collections:ISTAR-CRI - Comunicações a conferências internacionais

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