Measuring vertical track irregularities from instrumented heavy haul railway vehicle data using machine learning

Author:

Pires A.C.ORCID,Viana M.C.A.,Scaramussa L.M.ORCID,Santos G.F.M.ORCID,Ramos P.G.ORCID,Santos A.A.

Funder

Conselho Nacional de Desenvolvimento Científico e Tecnológico

Publisher

Elsevier BV

Subject

Electrical and Electronic Engineering,Artificial Intelligence,Control and Systems Engineering

Reference61 articles.

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3. Data-driven bias correction and defect diagnosis model for in-service vehicle acceleration measurements;Bai;Sensors,2020

4. Improving railway track maintenance using power spectral density (PSD);Berawi,2013

5. Time Frequency Analysis of Railway Wagon Body Accelerations for a Low-Power Autonomous Device;Bleakley,2006

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