Article ID Journal Published Year Pages File Type
548311 Applied Ergonomics 2016 14 Pages PDF
Abstract

•Data from on-train data recorders is underused.•Can be used as an input to existing ergonomics methods.•300 methods were reviewed and nine leading indicators of human factors risks extracted.•The proofs-of-concept can all be automated in a full application.

Big data collected from On-Train Data Recorders (OTDR) has the potential to address the most important strategic risks currently faced by rail operators and authorities worldwide. These risk issues are increasingly orientated around human performance and have proven resistant to existing approaches. This paper presents a number of proof of concept demonstrations to show that long standing ergonomics methods can be driven from big data, and succeed in providing insight into human performance in a novel way. Over 300 ergonomics methods were reviewed and a smaller sub-set selected for proof-of-concept development using real on-train recorder data. From this are derived nine candidate Human Factors Leading Indicators which map on to all of the psychological precursors of the identified risks. This approach has the potential to make use of a significantly underused source of data, and enable rail industry stakeholders to intervene sooner to address human performance issues that, via the methods presented in this paper, are clearly manifest in on-train data recordings. The intersection of psychological knowledge, ergonomics methods and big data creates an important new framework for driving new insights.

Related Topics
Physical Sciences and Engineering Computer Science Human-Computer Interaction
Authors
, ,