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A KnowledgE Elicitation aPproach to understanding railway SAFEty (KEEPSAFE 1)

Funder

Railway Safety and Standards Board (RSSB) through the Rail Research Association UK (RRUK)
Grant Agreement RSSB/13/RRUKA/1676

Value to Coventry University

£33,000

Project team

Professor Alexeis Garcia-Perez

Collaborators

Coventry University (lead), RSSB, Network Rail, Office for Rail and Road (ORR), London Underground, TRE Ltd, Staff Management Tools (SMT) Ltd, TIBCO Software Ltd, Yeltech Ltd, Abellio, Thales

Duration of project

01/02/2013 - 31/12/2013

RSSB logo

Rail Research logo


Project overview

This project provided a proof of concept to the railway community for making decisions on safety on trains, stations and other infrastructure.

The project served to assess the feasibility of using railway data effectively for predicting safety cases. In achieving this, data sharing and railway knowledge elicitation were addressed as key challenges due to disparate data sources and their distributed ownership. A range of key stakeholders from the British railway industry contributed to meeting these challenges. Once the data and knowledge were accessible, the team worked to make sense of data in terms of modelling and analysis.

Project objectives

A joint view of the railway data resources could lead to a wide consensus on its value, sharing and use by key stakeholders. This would have countless benefits for the railway industry.

In particular, the KEEPSAFE project focused on demonstrating how the data available can help in designing and putting in place mechanisms to assure safety and security of customers and staff in the railway industry, where the interdependence between physical and digital environments is set to grow exponentially over the next few years.

The project team understood that the ability to combine existing data and experts’ knowledge of factors affecting safety is essential in the process of predicting how safe tomorrow’s railway will be. Thus, the project used both data and expertise to facilitate prediction of safety issues. 

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