Challenge
A new Artificial Intelligence computer software, developed in partnership by Omnicom Balfour Beatty and The University of York via a Knowledge Transfer Partnership (KTP), is set to revolutionize the rail track inspection process and save the rail industry £10 million in track maintenance costs per year.
Featured in an article in The Telegraph, and in Engineering & Technology (E&T) the KTP has enabled a state-of-the-art, machine-learning technology to be developed which will digitalise and advance the way in which railway line inspections are carried out.
Attached to the front of the train, a camera moves along rail tracks in need of inspection. The technology utilises machine vision, which captures high definition images of the rail track to generate data which is then transferred through to a system which analyses the data to highlight inaccuracies and faults on the tracks.
In addition, the technology assists in identifying where faults may occur, allowing preventative fixes to be implemented as opposed to urgent repairs after an issue arises.
Outcome
The automated technology, which is currently being progressed from proof of concept into a commercial grade software, is set to provide a quicker, more efficient and safer alternative to what is currently a manual track inspection process.
By automating the inspection process, the health and safety of workers will improve by minimising their exposure to live track environments as well as reducing time taken to complete a manual inspection.
What they say
Further information
Omnicom Balfour Beatty is committed to embedding practical solutions into projects with the help of technology and innovation. Working in partnership with those who understand the complexities of technology and combining expertise helps shape the industry and advance skills.
To see the software in action, please click here.