Abstract
The exposure to various environmental influences and different type of human impact carries a wide variety of harmful effects to many infrastructures. An efficient and precise technology to identify structural anomalies based in the vibrations of these infrastructures becomes essential to provide a safe environment. There is precisely where Predictive-Cognitive Maintenance (PCM)
(Araquistain (2024)) gains significance, specially in Advanced Integrated Railway Management as a transformative approach for ensuring the safety, reliability, and efficiency of these systems. To save computational effort and improve time efficiency effective Structural Health Monitoring (SHM) using low-cost sensor devices is required. At the same time, an efficient and cheap algorithm
in terms of computational resources would be beneficial to avoid excessive loads and costs. In that sense, in this work we propose a simplistic solution to
detect anomalies of the vibration data of a railway. We developed an algorithm based in the dissimilarities between the average frequencies of the main modes and the frequencies of the modes of a given vibration data. Experiments have shown that it is a useful solution without the need of complex algorithms involving heavy and time consuming Machine Learning (ML) tasks.
(Araquistain (2024)) gains significance, specially in Advanced Integrated Railway Management as a transformative approach for ensuring the safety, reliability, and efficiency of these systems. To save computational effort and improve time efficiency effective Structural Health Monitoring (SHM) using low-cost sensor devices is required. At the same time, an efficient and cheap algorithm
in terms of computational resources would be beneficial to avoid excessive loads and costs. In that sense, in this work we propose a simplistic solution to
detect anomalies of the vibration data of a railway. We developed an algorithm based in the dissimilarities between the average frequencies of the main modes and the frequencies of the modes of a given vibration data. Experiments have shown that it is a useful solution without the need of complex algorithms involving heavy and time consuming Machine Learning (ML) tasks.
| Original language | English |
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| Title of host publication | Modelling and Simulation 2024 - 38th Annual European Simulation and Modelling Conference 2024, ESM 2024 |
| Editors | Jose David Nunez-Gonzalez, Manuel Grana Romay, Philippe Geril |
| Publisher | EUROSIS |
| Pages | 169-174 |
| Number of pages | 6 |
| ISBN (Electronic) | 9789492859334 |
| Publication status | Published - 25 Oct 2024 |
| Event | 38th Annual European Simulation and Modelling Conference, ESM 2024 - San Sebastian, Spain Duration: 23 Oct 2024 → 25 Oct 2024 |
Publication series
| Name | Modelling and Simulation 2024 - 38th Annual European Simulation and Modelling Conference 2024, ESM 2024 |
|---|
Conference
| Conference | 38th Annual European Simulation and Modelling Conference, ESM 2024 |
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| Country/Territory | Spain |
| City | San Sebastian |
| Period | 23/10/24 → 25/10/24 |
Keywords
- FFT
- railway
- AI
- IoT
- Machine learning