Back to Search Start Over

A Review of Digital Twin for Vehicle Predictive Maintenance System

Authors :
Wang, Chengwei
Fan, Ip-Shing
King, Stephen
Source :
SAE Technical Paper Series.
Publication Year :
2023
Publisher :
SAE International, 2023.

Abstract

The development of Digital Twin (DT) has become popular. A dominant description of DT is that it is a software representation that mimics a physical object to portray its real-world performance and operating conditions of an asset. It uses near real-time data captured from the asset and enables proactive optimal operation decisions. There are many other definitions of DT, but not many explicit evaluations of DT performance found in literature. The authors have an interest to investigate and evaluate the quality and stability of appropriate DT techniques in real world aircraft Maintenance, Repair, and overhaul (MRO) activities. This paper reviews the origin of DT concept, the evolution and development of recent DT technologies. Examples of DTs in aircraft systems and transferable knowledge in related vehicle industries are collated. The paper contrasts the benefits and bottlenecks of the two categories of DT methods, Data-Driven (DDDT) and Model-Based (MBDT) models. The paper evaluates the applicability of the two models to represent vehicle system management. The authors present their methodological approach on Predictive Maintenance (PM) development basing on reliable DT models for vehicle systems. This paper contributes to design, operation, and support of aircraft/vehicle systems.

Details

ISSN :
26883627 and 01487191
Database :
OpenAIRE
Journal :
SAE Technical Paper Series
Accession number :
edsair.doi.dedup.....876fcdb4900d7075f1e5556580126649