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2023 | OriginalPaper | Buchkapitel

Application of Metamodel for Airborne Complex Crosslinked Systems

verfasst von : Jing Qu, Cunbao Ma, Zhiyu She, Jin Zhao, Biyuan Hu

Erschienen in: The Proceedings of the 2021 Asia-Pacific International Symposium on Aerospace Technology (APISAT 2021), Volume 2

Verlag: Springer Nature Singapore

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Abstract

With the development of science and technology, functional crosslinking and resource sharing have become the common characteristics of large complex systems. At the same time, it also brings the challenges of fault diagnosis and location, such as the enhancement of system fault correlation, implicit spread and chaos. As a result, the traditional model is not sufficient to describe the functional failure mode of complex crosslinking systems. In this paper, a metamodel-based complex crosslinking system modeling method is proposed and applied to build the model for airborne complex crosslinking system. The influencing factors and relationships between system functions and faults are studied, and a metamodel-based fault example of airborne complex crosslinking system is realized.The application of metamodel technology to the establishment of airborne complex crosslinking system model can make the subsystem model achieve a higher level of abstraction. The good general performance of metamodel solves the problem of complex system model reuse, provides quantitative support for subsequent development, and simplifies the correlation characteristics of airborne complex system crosslinking function. It provides the foundation of domain model for simulation, design and development of subsequent systems.

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Metadaten
Titel
Application of Metamodel for Airborne Complex Crosslinked Systems
verfasst von
Jing Qu
Cunbao Ma
Zhiyu She
Jin Zhao
Biyuan Hu
Copyright-Jahr
2023
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-19-2635-8_35

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