Ontologies of big data, machine learning, and artificial intelligence on the digital railroad
Abstract
This article focuses on the use of ontologies in digital railway projects. An ontology is a systematic classification of subject knowledge that supports the use of various databases in a meaningful way. Rail transportation has become an area in which productivity is increasingly dependent on the ability to extract information from complex data sets, as well as make optimal decisions in real time. Therefore, effective information and data management are vital for a railway, which is a closely related ontological system of systems where changes in any part can have significant consequences elsewhere. For example, ontology is one of the important factors for implementing a big data risk analysis project (BDRA) for railways. BDRA's goal is to support risk analysis and safety decisions from a wide range of data sources, as well as to improve rail safety risk management. As an example, the work considers ontological design for the digital railway project Rail Baltica. The large role of artificial intelligence and machine learning-based systems is noted. The paper also shows that in order to fully utilize these new technologies, the railway industry must reconsider its approach to collecting and storing data and choosing the right set of ontologies.
Full Text:
PDF (Russian)References
okusaev O. N. i dr. Ontologii sistemy sistem v nacional'nyh standartah cifrovoj zheleznoj dorogi Velikobritanii //International Journal of Open Information Technologies. – 2018. – T. 6. – #. 11.
Grin'ko O. V. i dr. Ontologizacija dannyh Evropejskogo sojuza kak perehod ot jekonomiki dannyh k jekonomike znanij //International Journal of Open Information Technologies. – 2018. – T. 6. – #. 11.
Klimov A. A. i dr. BIM i inzhenernye formalizovannye ontologii na cifrovoj zheleznoj doroge Evropy v ob"edinenii EULYNX-jekonomika dannyh //International Journal of Open Information Technologies. – 2018. – T. 6. – #. 8.
Kupriyanovsky V. et al. On the effects of formalized ontologies in the data economy-the EU experience //International Journal of Open Information Technologies. – 2018. – Т. 6. – №. 8. – С. 66-78.
Kuprijanovskij V. P. i dr. Formalizovannye ontologii i servisy dlja vysokoskorostnyh magistralej i cifrovoj zheleznoj dorogi //International Journal of Open Information Technologies. – 2018. – T. 6. – #. 6.
Sokolov I. et al. Robots, autonomous robotic systems, artificial intelligence and the transformation of the market of transport and logistics services in the digitalization of the economy //International Journal of Open Information Technologies. – 2018. – T. 6. – #. 4. – S. 92-108.
Sokolov I. et al. On artificial intelligence as a strategic tool for the economic development of the country and the improvement of its public administration. Part 1. The experience of the United Kingdom and the United States //International Journal of Open Information Technologies. – 2017. – T. 5. – #. 9. – S. 57-75.
Sokolov I. et al. On artificial intelligence as a strategic tool for the economic development of the country and the improvement of its public administration. Part 2. On prospects for using artificial intelligence in Russia for public administration //International Journal of Open Information Technologies. – 2017. – T. 5. – #. 9. – S. 76-101.
D. Li, W. Daamen, and R. M. P. Goverde, “Estimation of train dwell time at short stops based on track occupation event data: A study at a Dutch railway station,” J. Adv. Transp., vol. 50, no. 5, pp. 877–896, Aug. 2016
The Effect of Infrastructure on Worker Mobility: Evidence from High-Speed Rail Expansion in Germany, Daniel F. Heuermann and Johannes F. Schmieder, NBER Working Paper No. 24507 April 2018 JEL No. J61, R12, R23, R40
TOWARD SMART MANUFACTURING WITH DATA AND SEMANTICS. An eCl@ss white paper 2018
Report on Railway Safety and Interoperability in the EU 2018 (June 2018) © European Union Agency for Railways, 2018
THE CHANGING NATURE OF WORK © 2019 International Bank for Reconstruction and Development / The World Bank
Machine Learning https://www.rssb.co.uk/Pages/machine-learning-challenges-and-opportunities-of-incorporating-machine-learning-into-rail-safety-analysis.aspx
LEMO D 1.1 Understanding and Mapping Big Data in Transport Sector, LEMO April 2018
Machine Learning For Dummies®, IBM Limited Edition Published by John Wiley & Sons, Inc. 111 River St. Hoboken, NJ 07030-5774, 2018 by John Wiley & Sons, Inc
Detailed BIM Strategy, BIM Manual, Detailed BIM Strategy Guidelines, Public draft v0.1 RB Rail AS ,Reg. No 40103845027 K. Valdemāra iela 8-7 Riga, LV-1010, Latvia PUBLIC 21/08/2018
Detailed BIM Strategy. Update from the BIM Strategy Framework, RB Rail AS Reg. No 40103845027 K. Valdemāra iela 8-7, Riga, LV-1010, Latvia PUBLIC.27/07/2018
Detailed BIM Strategy. Post-contract BIM Execution Plan (BEP) Template. Detailed BIM Strategy Guidelines Public draft v0.1 RB Rail AS Reg. No 40103845027 K. Valdemāra iela 8-7 Riga, LV-1010, Latvia PUBLIC 21/08/2018
Detailed BIM Strategy. CAD Standard. Detailed BIM Strategy. Guidelines. Public draft v0.1RB Rail AS Reg. No 40103845027 K. Valdemāra iela 8-7 Riga, LV-1010, Latvia PUBLIC 21/08/2018
IFC Infra Overall Architecture Projects. Documentation and Guidelines BSI 2017
Infrastructure Asset Managers BIM Requirements. Technical Report No. TR 1010. Author: Phil Jackson, on behalf of buildingSMART International Infrastructure Room. Version 1:.BSI published 2018 / 01 / 09
Regulatory Room Working Group, Report on Open Standards for Regulations, Requirements and Recommendations Content. BSI 2017 Airport Room Roadmap Report, JULY 2018, BSI 2018.
Background of Ontology for BDRA, University of Huddersfield Institute of Railway research, 2015
Government Functional Standard GovS 002: Project delivery Portfolio, programme and project management, Version: 1.2, Status: Approved for internal government trial, Date issued: 1 August 2018
Guidance on the IAO Role Version 1.3 – May 2018 © Crown copyright 2013
Jeffrey T. Pollock Semantic Web For Dummies, 2009 by Wiley Publishing, Inc., Indianapolis, Indiana
White paper AutomationML and eCl@ss integration" (PDF). Automation ML e.V. Retrieved September 25, 2018.
E-Cl and Buildingsmart https://b2b.partcommunity.com/community/blogs/135785/6777/cooperation-between-e-cl-ss-and-building-smart-will-support-bim
Rolling Stock Perspective. Fourth edition Moving Britain Ahead, Crow 2018
Machine learning at automated inspection https://www.rssb.co.uk/Pages/machine-Learning-at-the-core-of-automated-inspection-and-predictive-maintenance.aspx
TT D6.1 Proactive rail infrastructures pilots design Transforming Transport (TT ) 14/03/2017
Machine learning models https://www.rssb.co.uk/Pages/Machine-Learning-techniques-algorithms-and-models.aspx
SCORE D3.1 Mapping of future perspectives and challenges for the value chain of European transport manufacturing industry 2018
Machine learning: the power and promise of computers that learn by example, The Royal Society, 2017
GoF4R D4.2 Synthesis of the Semantic Interoperability Technology Market Analysis GoF4R 14/112018
Pulido, Daniel, Georges Darido, Ramon MunozRaskin, and Joanna Moody, editors. 2018. The Urban Rail Development Handbook. Washington, DC: World Bank. doi:10.1596/978-1-4648-1272-9.
HUB4NGI D1.1 NGI CLASSIFICATION AND ASSESSMENT METHODOLOGY, HUB4NGI 2017.
Refbacks
- There are currently no refbacks.
Abava Кибербезопасность IT Congress 2024
ISSN: 2307-8162