NADIA KAVIANI

Dottoressa di ricerca

ciclo: XXXVI


supervisore: Prof. Stefano Ricci
co-supervisore: Prof. Luca Rizzetto

Titolo della tesi: Track Geometry Monitoring using Measured Data from Commercial Trains towards Predictive Maintenance

Recognizing track problems is a crucial responsibility for railway engineers to ensure safe train operations. Analysing track geometry (TG) characteristics is essential for developing an effective track condition monitoring strategy. Recent studies have focused on identifying track geometry irregularities using onboard vehicle dynamics data, with a particular emphasis on vertical irregularity. This is because it is easier to understand the relationship between vehicle reaction and acceleration in the vertical direction, and there is a straightforward method for identifying vertical irregularities. In contrast, lateral irregularities are more challenging to detect due to factors such as wheel conicity, non-linearity of wheel-rail contact, and the Klingel hunting motion. Addressing the problem of lateral irregularities requires tracking the contact point between the wheel and the rail in the lateral direction. This research focuses on detecting lateral irregularities by identifying the relationship between lateral acceleration and the lateral displacement of the wheel in relation to the rail (LDWR). The first part of this thesis is related to the activities of the EU project Assets4Rail, funded within Shift2Rail in which a method for detecting LDWR has been established by developing a sensor system as an alternative to inertial platforms, and developing the image processing algorithms for analysing the video output data. In addition, the next part of this research uses Machine Learning (ML) models to solve the non-linearity issue for detecting the lateral irregularities by LDWR. The study employs a supervised ML model trained and tested with numerical simulation results from Simpack, and Gensys software for straight and curved sections of various tracks. Testing different algorithms allows for identifying the best models for this purpose and determining the most efficient results. Hence, this work summarizes the methodology and results of establishing a method for finding the relationship between the lateral acceleration and lateral irregularities from the lateral displacement of the wheel relative to the rail measured on board and proposing an algorithm to detect the lateral irregularities of the track. The conclusion of this thesis can lead researchers to predictive maintenance in further studies by developing algorithms for an on-board sensor system monitoring capable of detecting LDWR and detecting lateral irregularities Overall, this research highlights the significance of addressing lateral irregularities in track maintenance to ensure safe and efficient train operations.

Produzione scientifica

11573/1723768 - 2024 - Detecting lateral track irregularities by onboard measurements of lateral acceleration and displacements and Machine Learning algorithms // Rilievo delle irregolarità laterali del binario attraverso misure di accelerazioni laterali e spostamenti da bordo treno e algoritmi di Machine Learning
Kaviani, N.; Ronnquist, A.; Froseth, G. T.; Lau, A.; Ricci, S.; Rizzetto, L. - 01a Articolo in rivista
rivista: INGEGNERIA FERROVIARIA (Roma: Presso Direzione Generale Ferrovie dello Stato.) pp. 633-653 - issn: 0020-0956 - wos: (0) - scopus: 2-s2.0-85205969824 (0)

11573/1672234 - 2023 - Track geometry monitoring by an on-board computer-vision-based sensor system
Circelli, Matteo; Kaviani, Nadia; Licciardello, Riccardo; Ricci, Stefano; Rizzetto, Luca; Arabani, Sina Shahidzadeh; Shi, Dachuan - 04c Atto di convegno in rivista
rivista: TRANSPORTATION RESEARCH PROCEDIA ([Amsterdam] : Elsevier B.V.) pp. 257-264 - issn: 2352-1465 - wos: (0) - scopus: 2-s2.0-85159102511 (5)
congresso: AIIT 3rd International Conference on Transport Infrastructure and Systems 15th-16th September 2022, Rome, Italy (Roma)

11573/1673533 - 2021 - Development of a contactless sensor system to support rail track geometry on-board monitoring
Antognoli, Marco; Bureika, Gintautas; Kaviani, Nadia; Ricci, Stefano; Rizzetto, Luca; Skrickij, Viktor - 04b Atto di convegno in volume
congresso: 6th International Conference on Road and Rail Infrastructure, CETRA 2021 (Zagreb; Croatia)
libro: Road and Rail Infrastructure VI proceedings of 6th CETRA International Conference on Road and Rail Infrastructure - (978-953-8168-48-2)

11573/1578000 - 2021 - Deep learning based virtual point tracking for real-time target-less dynamic displacement measurement in railway applications
Shi, Dachuan; ˇsabanoviˇc, Eldar; Rizzetto, Luca; Skrickij, Viktor; Oliverio, Roberto; Kaviani, Nadia; Ye, Yunguang; Bureika, Gintautas; Ricci, Stefano; Hecht, Markus - 01a Articolo in rivista
rivista: CASE STUDIES IN MECHANICAL SYSTEMS AND SIGNAL PROCESSING (elsevier) pp. 1-20 - issn: 2351-9886 - wos: WOS:000711292800007 (21) - scopus: 2-s2.0-85116536413 (26)

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