Authors
Sophia Karagiorgou, Georgios Vafeiadis, Dimitrios Ntalaperas, Nikolaos Lykousas, Danae Vergeti, Dimitrios Alexandrou
Publication date
2019/5/29
Conference
2019 15th International Conference on Distributed Computing in Sensor Systems (DCOSS)
Pages
326-332
Publisher
IEEE
Description
The emergence of the Industrial Internet of Things paves the way for enhancing the real-time monitoring capabilities of contemporary manufacturing enterprises through the extensive utilization of physical and virtual sensors. This paradigm enables the detection of early warning signals concerning systems' degradation and facilitates the prompt decision making and actions performed ahead of time. Currently, even large manufacturing companies have not yet developed a complete Predictive Maintenance strategy and appropriate sensor-driven, real-time systems in order to utilize these benefits. In this paper, we propose a failure prediction system for complex IT systems in the steel industry. The novelty of our work lies in the exploitation of Deep Learning techniques from streaming operational sensor data, enabling earlier failure predictions through a Neural Networks approach. To evaluate the proposed framework …
Total citations
20202021202220231233
Scholar articles
S Karagiorgou, G Vafeiadis, D Ntalaperas, N Lykousas… - 2019 15th International Conference on Distributed …, 2019