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Roadmaps for A.I. integration in the raiL Sector

Leistungen

WP4 Report on identification of future innovation needs and recommendations for improvements

This Deliverable will contain the examination of the work and of the results obtained in WP4 against the current stateoftheart in railways It will report lessons learned weaknesses and strengths shown by each exploited technology technical and implementation recommendations unaddressed issues innovation needs Hence this Deliverable will provide WP5 with the necessary inputs to identify migration strategies and implement roadmaps for AI integration in the rail sector

Summary of existing relevant projects and state-of-the-art of AI application in railways

This Deliverable will provide a report on the existing AI applications in railways to determine current research and practice directions as well as a summary of the relevant work undertaken at a European level.

WP3 Report on experimentation, analysis and discussion of results

This Deliverable will describe the experimentation and analysis activities of the solutions and approaches described in D32 on real or realistic data It will describe analyses and simulations conducted applying the AI models and techniques to a set of case studies

WP2 Report on identification of future innovation needs and recommendations for improvements

This Deliverable will contain a critical examination of the work and of the results obtained in WP2 also against the current stateoftheart in railways It will report lessons learned weaknesses and strengths shown by of each exploited technology technical and implementation recommendations unaddressed issues innovation needs Hence this Deliverable will provide WP5 with the necessary inputs to identify migration strategies and implement roadmaps for AI integration in the rail sector

WP4 Report on AI approaches and models

This Deliverable will provide a detailed description of the AIbased solutions and approaches for traffic planning and management AI techniques and Machine Learning models will be customized to the railway sector to support railway traffic operations

WP4 Report on case studies and analysis of transferability from other sectors

This Deliverable will report activities and results related to the analysis of the stateoftheart and transferability of AI techniques used for maintenance to the rail domain with a special focus on traffic operations

Application Areas

This Deliverable will define a list of application areas for AI techniques and methods across railway domains, specifically in railway safety, smart maintenance, traffic planning and management.

WP2 Report on case studies and analysis of transferability from other sectors

This Deliverable will report activities and results related to the applicability and transferability of machine learning techniques and other relevant approaches to the rail domain with a special focus on safe rail automation and will provide the definition of the case studies that will be developed throughout the WP Hence this Deliverable will provide the scope and the boundary of the research conducted in WP2

WP4 Report on experimentation, analysis and discussion of results

This Deliverable will describe the results obtained experimenting solutions and approaches described in D42 on real or realistic data It will describe analyses and simulations conducted applying the AI models and techniques to a set of case studies and it will discuss obtained results

WP2 Report on AI approaches and models

This Deliverable will report the core implementation of the research conducted in WP2 It will provide a detailed description of the AIbased solutions and approaches for safe rail automation developed for addressing the problems and the challenges posed by the case studies the related models and metrics the technological and operational issues Hence this Deliverable will provide the technological and methodological possible solutions alternatives and criticalities to be addressed by subsequent implementations

WP3 Report on case studies and analysis of transferability from other sectors

This Deliverable will report activities and results related to the analysis of the stateoftheart and transferability of AI techniques used for maintenance to the rail domain with a special focus on predictive maintenance and defect detection

Definition of a reference taxonomy of AI in railways

This Deliverable will define a reference taxonomy of AI techniques capable of analysing, predicting and improving railway systems, also considering relevant applications from other high-tech sectors. It will define the set of AI techniques that would be appropriate for certain railway challenges taking into account the ethical dimension of AI.

Report on identification of migration strategies and roadmaps for AI integration in the rail sector

This Deliverable will describe the identified migration strategies and roadmaps that enable the integration of relevant AI approaches either developed within this project or to be further explored in future research

WP2 Report on experimentation, analysis and discussion of results

This Deliverable will report the validation activities of the solutions and approaches described in D22 It will describe analyses and simulations conducted applying the AImodels and the other techniques developed in WP2 to the case studies in concrete operational scenarios Hence this Deliverable will provide meaningful insights and information on the validity of the research results and feasibility of the approach in real settings

Report on Dissemination and Exploitation activities

This Deliverable will describe the dissemination and exploitation activities carried out during the project and will discuss any deviations with respect to the plan

WP3 Report on AI approaches and models

This Deliverable will report the proposed AI approaches and models to enable smart maintenance in railways AI techniques and Machine Learning models will be customized to the railway sector

WP3 Report on identification of future innovation needs and recommendations for improvements

This Deliverable will contain the examination of the work and of the results obtained in WP3 against the current stateoftheart in railways It will report lessons learned weaknesses and strengths shown by each exploited technology technical and implementation recommendations unaddressed issues innovation needs Hence this Deliverable will provide WP5 with the necessary inputs to identify migration strategies and implement roadmaps for AI integration in the rail sector

Veröffentlichungen

Artificial Intelligence in Railway Transport: Taxonomy, Regulations, and Applications

Autoren: Bešinović, Nikola; De Donato, Lorenzo; Flammini, Francesco; Goverde, Rob M. P.; Lin, Zhyiuan; Liu, Ronghui; Marrone, Stefano; Nardone, Roberto; Tang, Tianli; Vittorini, Valeria
Veröffentlicht in: IEEE Transaction in Intelligent Transportation Systems, Ausgabe 23, 2022, Seite(n) 14011-14024, ISSN 1524-9050
Herausgeber: Institute of Electrical and Electronics Engineers
DOI: 10.1109/tits.2021.3131637

A Survey on Audio-Video Based Defect Detection Through Deep Learning in Railway Maintenance

Autoren: De Donato, Lorenzo; Flammini, Francesco; Marrone, Stefano; Mazzariello, Claudio; Nardone, Roberto; Sansone, Carlo; Vittorini, Valeria
Veröffentlicht in: IEEE Access, Ausgabe 11, 2022, Seite(n) 65376 - 65400, ISSN 2169-3536
Herausgeber: Institute of Electrical and Electronics Engineers Inc.
DOI: 10.1109/access.2022.3183102

Intelligent Detection of Warning Bells at Level Crossings through Deep Transfer Learning for Smarter Railway Maintenance

Autoren: De Donato, Lorenzo; Marrone, Stefano; Flammini, Francesco; Sansone, Carlo; Vittorini, Valeria; Nardone, Roberto; Mazzariello, Claudio; Bernaudin, Frédéric
Veröffentlicht in: Engineering Applications of Artificial Intelligence, Ausgabe 123, 2023, ISSN 0952-1976
Herausgeber: Pergamon Press Ltd.
DOI: 10.1016/j.engappai.2023.106405

A Systematic Review of Artificial Intelligence Public Datasets for Railway Applications

Autoren: Mauro José Pappaterra, Francesco Flammini, Valeria Vittorini, Nikola Bešinović
Veröffentlicht in: Infrastructures, Ausgabe 6/10, 2021, Seite(n) 136, ISSN 2412-3811
Herausgeber: MDPI
DOI: 10.3390/infrastructures6100136

Towards AI-assisted Digital Twins for Smart Railways: Preliminary Guideline and Reference Architecture

Autoren: De Donato, Lorenzo; Dirnfeld, Ruth; Somma, Alessandra; De Benedictis, Alessandra; Flammini, Francesco; Marrone, Stefano; Saman Azari, Mehdi; Vittorini, Valeria
Veröffentlicht in: Journal of Reliable Intelligent Environments, Ausgabe 9, 2023, Seite(n) 303–317, ISSN 0967-0912
Herausgeber: Institute of Materials
DOI: 10.1007/s40860-023-00208-6

Roadmap and Challenges for Reinforcement Learning Control in Railway Virtual Coupling

Autoren: Basile, Giacomo; Napoletano, Elena; Petrillo, Alberto; Santini, Stefania
Veröffentlicht in: Discover Artificial Intelligence, Ausgabe 2, 2022, ISSN 0967-0912
Herausgeber: Institute of Materials
DOI: 10.1007/s44163-022-00042-4

Software Verification and Validation of Safe Autonomous Cars: A Systematic Literature Review

Autoren: Nijat Rajabli, Francesco Flammini, Roberto Nardone, Valeria Vittorini
Veröffentlicht in: IEEE Access, Ausgabe 9, 2021, Seite(n) 4797-4819, ISSN 2169-3536
Herausgeber: Institute of Electrical and Electronics Engineers Inc.
DOI: 10.1109/access.2020.3048047

A Literature Review of Artificial Intelligence Applications in Railway Systems

Autoren: Tang, Ruifan; De Donato, Lorenzo; Bešinović, Nikola; Flammini, Francesco; Goverde, Rob M. P.; Lin, Zhyiuan; Liu, Ronghui; Tang, Tianli; Vittorini, Valeria; Wang, Ziyulong
Veröffentlicht in: Transportation Research Part C: Emerging Technologies, Ausgabe 140, 2022, Seite(n) 103679, ISSN 0968-090X
Herausgeber: Pergamon Press Ltd.
DOI: 10.1016/j.trc.2022.103679

Deep Learning for Audio Detection and Video Analysis in Railway Applications

Autoren: Lorenzo De Donato
Veröffentlicht in: University of Naples Federico II, Ausgabe October 2020, 2020
Herausgeber: Università degli Studi di Napoli Federico II
DOI: 10.13140/rg.2.2.35490.96965/1

A Vision of Intelligent Train Control

Autoren: Flammini, Francesco; De Donato, Lorenzo; Vittorini, Valeria; Fantechi, Alessandro
Veröffentlicht in: Reliability, Safety, and Security of Railway Systems. LNCS Procs of RSSRail 2022, Ausgabe 13294, 2022, Seite(n) 192–208, ISBN 978-3-031-05813-4
Herausgeber: Springer, Cham
DOI: 10.1007/978-3-031-05814-1_14

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