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Augmented digital twin for railway systems

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The information that automated train control (ATO) systems use to improve safety and reduce power usage is limited by on-board and wayside monitoring applications and computing power. This paper presents an augmented digital twin for railway applications that enables real-time consideration of derailment risk in train operations. The augmented digital twin implements a surrogate model with the results of a massive multibody dynamics numerical program and machine learning models to predict the instantaneous wagon derailment risk. A case study for a heavy haul iron ore wagon with three-piece bogies was conducted to test the augmented digital twin. A multibody simulation numerical program comprising 2100 simulation cases was completed. The surrogate model was developed using linear, polynomial, decision tree and ensemble forest regression models on the results of the numerical program. A longitudinal train simulator was used to calculate the speed and lateral coupler force throughout a train trip. The surrogate model effectively predicted the derailment index for empty and loaded conditions accounting for lateral coupler forces, vehicle speeds and curve radius. The proposed augmented digital twin can be further developed to accomplish other train operational benefits such as the reduction of rail damage.

Funding

Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)

History

Volume

62

Issue

1

Start Page

67

End Page

83

Number of Pages

17

eISSN

1744-5159

ISSN

0042-3114

Publisher

Taylor & Francis

Additional Rights

CC BY-NC-ND 4.0 DEED

Language

en

Peer Reviewed

  • Yes

Open Access

  • Yes

Acceptance Date

2023-03-17

Author Research Institute

  • Centre for Railway Engineering

Era Eligible

  • Yes

Journal

Vehicle System Dynamics: international journal of vehicle mechanics and mobility

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