Published April 16, 2018 | Version v1
Conference paper Open

Opportunities for resilient rail system development using natural language processing.

Description

In this paper we examine a natural language processing and machine learning approach to help assess the quality
of railway hazard logs. The focus is on highlighting red flags in the hazard log content to help improve the accuracy
and quality of the contents and so the speed of risk reviews. Data is presented that indicate the approach has
potential for significant savings in time and increased quality. The tool is one of a number that we are developing
as part of an initiative to improve rail system development and operation by employing artificial intelligence (AI)
to augment existing methods in the context of a wider system engineering approach. This will in turn lead to rail
systems becoming more sustainable and resilient.

Files

Contribution_11161_fullpaper.pdf

Files (809.7 kB)

Name Size Download all
md5:d1361580ed4b181ed008af08a6a04de5
809.7 kB Preview Download