Aircraft Structural Design and Life-Cycle Assessment through Digital Twins

Q2 Engineering
Designs Pub Date : 2024-03-22 DOI:10.3390/designs8020029
S. M. Tavares, João A. Ribeiro, Bruno A. Ribeiro, P. D. de Castro
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引用次数: 0

Abstract

Numerical modeling tools are essential in aircraft structural design, yet they face challenges in accurately reflecting real-world behavior due to factors like material properties scatter and manufacturing-induced deviations. This article addresses the potential impact of digital twins on overcoming these limitations and enhancing model reliability through advanced updating techniques based on machine learning. Digital twins, which are virtual replicas of physical systems, offer a promising solution by integrating sensor data, operational inputs, and historical records. Machine learning techniques enable the calibration and validation of models, combining experimental inputs with simulations through continuous updating processes that refine digital twins, improving their accuracy in predicting structural behavior and performance throughout an aircraft’s life cycle. These refined models enable real-time monitoring and precise damage assessment, supporting decision making in diverse contexts. By integrating sensor data and updating techniques, digital twins contribute to improved design and maintenance operations by providing valuable insights into structural health, safety, and reliability. Ultimately, this approach leads to more efficient and safer aviation operations, demonstrating the potential of digital twins to revolutionize aircraft structural analysis and design. This article explores various advancements and methodologies applicable to structural assessment, leveraging machine learning tools. These include the utilization of physics-informed neural networks, which enable the handling of diverse uncertainties. Such approaches empower a more informed and adaptive strategy, contributing to the assurance of structural integrity and safety in aircraft structures throughout their operational life.
通过数字双胞胎进行飞机结构设计和生命周期评估
数值建模工具在飞机结构设计中至关重要,但由于材料特性分散和制造引起的偏差等因素,它们在准确反映真实世界行为方面面临挑战。本文探讨了数字孪生对克服这些局限性以及通过基于机器学习的先进更新技术提高模型可靠性的潜在影响。数字孪生是物理系统的虚拟复制品,通过整合传感器数据、操作输入和历史记录,提供了一种前景广阔的解决方案。机器学习技术可对模型进行校准和验证,通过持续更新过程将实验输入与模拟相结合,从而完善数字孪生系统,提高其在飞机整个生命周期内预测结构行为和性能的准确性。这些改进后的模型能够进行实时监测和精确的损伤评估,为各种情况下的决策提供支持。通过整合传感器数据和更新技术,数字孪生可为结构健康、安全和可靠性提供有价值的见解,从而有助于改进设计和维护操作。最终,这种方法将带来更高效、更安全的航空运营,展现出数字孪生彻底改变飞机结构分析和设计的潜力。本文利用机器学习工具,探讨了适用于结构评估的各种先进技术和方法。其中包括利用物理信息神经网络,从而能够处理各种不确定性。这些方法能够提供更加明智和适应性更强的策略,有助于确保飞机结构在整个运行寿命期间的结构完整性和安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Designs
Designs Engineering-Engineering (miscellaneous)
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
11 weeks
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