Litcius/Paper detail

Recurrent neural network model for high-speed train vibration prediction from time series

Jakub Siłka, Michał Wieczorek, Marcin Woźniak

2022Neural Computing and Applications83 citationsDOIOpen Access PDF

Abstract

Abstract In this article, we want to discuss the use of deep learning model to predict potential vibrations of high-speed trains. In our research, we have tested and developed deep learning model to predict potential vibrations from time series of recorded vibrations during travel. We have tested various training models, different time steps and potential error margins to examine how well we are able to predict situation on the track. Summarizing, in our article we have used the RNN-LSTM neural network model with hyperbolic tangent in hidden layers and rectified linear unit gate at the final layer in order to predict future values from the time series data. Results of our research show the our system is able to predict vibrations with Accuracy of above 99% in series of values forward.

Topics & Concepts

TrainComputer scienceVibrationArtificial neural networkSeries (stratigraphy)Time seriesArtificial intelligenceRecurrent neural networkTangentHyperbolic functionTrack (disk drive)Deep learningBackpropagationMachine learningAcousticsMathematicsGeologyPhysicsMathematical analysisGeographyGeometryPaleontologyOperating systemCartographyRailway Engineering and DynamicsRailway Systems and Energy EfficiencyMachine Fault Diagnosis Techniques