A Machine Learning Approach for Real-Time Wheel-Rail Interface Friction Estimation

Author:

Folorunso Morinoye O.1,Watson Michael1,Martin Alan2,Whittle Jacob W.2,Sutherland Graham3,Lewis Roger1

Affiliation:

1. The University of Sheffield Department of Mechanical Engineering, , Sheffield S3 1JD , UK

2. The University of Sheffield, Sheffield S3 1JD Department of Mechanical Engineering, , UK

3. Consulting Canetia Analytics Inc. , San Diego, CA 92007

Abstract

Abstract Predicting friction at the wheel-rail interface is a key problem in the rail industry. Current forecasts give regional-level predictions, however, it is well known that friction conditions can change dramatically over a few hundred meters. In this study, we aimed to produce a proof-of-concept friction prediction tool which could be used on trains to give an indication of the limiting friction present at a precise location. To this end, field data including temperature, humidity, friction, and images were collected. These were used to fit a statistical model including effects of local environmental conditions, surroundings, and railhead state. The model predicted the friction well with an R2 of 0.97, falling to 0.96 for naive models in cross validation. With images and environmental data collected on a train, a real-time friction measurement would be possible.

Funder

Engineering and Physical Sciences Research Council

Publisher

ASME International

Subject

Surfaces, Coatings and Films,Surfaces and Interfaces,Mechanical Engineering,Mechanics of Materials

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