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Documents categoriessublimar2017-05-29T11:44:24+02:00
Conference Publications
Poster presented at TRA2016 Marketplace
João Morgado, Emanuel Duarte. “O projeto infralert: apresentação e primeriros desenvolvimentos” – 8th Portuguese Road Congress (Lisbon – April, 2016)
Poster presented at 1st Workshop on Infrastructure Cloud – Construction and Maintenance (Warsaw, April 2017)
Noemi Jiménez-Redondo, Alvaro Calle-Cordón, et. al. “Improving linear transport infrastructure efficiency by automated learning and optimised predictive maintenance techniques (INFRALERT)”. BESTInfra 2017.
Álvaro Calle-Cordón, Noemi Jiménez-Redondo, et. al. “Integration of RAMS in LCC analysis for linear transport infrastructures. A case study for railways” (BESTInfra 2017)
Francisco J. Morales, Antonio, Reyes, et. al. “Historical maintenance relevant information road-map for a self-learning maintenance prediction procedural approach”. BESTInfra 2017.
Ute Kandler. “Decision Support for Tactical Planning of Maintenance Activities – a use case for the INFRALERT project”. International Conference on Operations Research (OR2017) (Berlín, Sep 2017)
Poster presented at Transportation Research Board (TRB) 97th Annual Meeting (January, 2018)
F.J. Morales, A. Reyes, N. Cáceres, L. Romero, F.G. Benítez, “Automatic prediction of maintenance interventions types in roads using machine learning and historical records” (Transportation Research Record (Journal of the Transportation Research Board, January 2018)
Ute Kandler, Axel Simroth, et al. “Decision support for tactical planning – A use case of the INFRALERT project”. TRA 2018 (Vienna, April 2018)
Poster presented at Transport Resesarch Arena (TRA2018) (Vienna, April 2018)
Noemi Jiménez et al. “INFRALERT: improving linear transport infrastructure efficiency by automated learning and optimised predictive maintenance techniques” (Vienna, TRA 2018, April 2018)
Álvaro Calle, Noemi Jiménez, et al. “Combined RAMS and LCC analysis in railway and road transport infrastructures”. TRA 2018 (Vienna, April 2018)
Antonio Reyes, Francisco J. Morales, et. al. “Automatic prediction of maintenance intervention types in transport linear infrastructures using machine learning”. Paper & Poster presented at TRA 2018 (Vienna, April 2018)
This project has received funding from the European Union’s Horizon 2020 research and innovation programme under gran agreement No 636496

Horizon 2020 - European Commission

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