Affiliation:
1. Institute of Solid Mechanics TUD Dresden University of Technology Dresden Germany
2. Dresden Center for Fatigue and Reliability (DCFR) Dresden Germany
Abstract
AbstractVehicle monitoring is an important prequisite for predictive maintenance applications. Virtual sensors can be deployed to establish relationships between fatigue related quantities of interest and readily available measurement data, which reduces the costs of monitoring for vehicle fleets. This work describes a data‐driven virtual sensing approach using the scattering transform and principal component analysis. These data transformations are used to obtain a reduced representation of acceleration data, which is suitable for the identification of fatigue critical events during vehicle operation. Results of a previous study using an eBike demonstrator are summarized and the methodology is applied to experimental data of a sensor equipped light rail vehicle. In both applications, fictitious fatigue damage contributions are estimated accurately and physical interpretations of the reduced representation are found.
Funder
European Regional Development Fund
Subject
Electrical and Electronic Engineering,Atomic and Molecular Physics, and Optics