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Deep Learning in Aircraft Design, Dynamics, and Control: Review and Prospects

机译:飞机设计,动态和控制中深入学习:审查和潜在客户

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In recent decades, deep learning (DL) has become a rapidly growing research direction, redefining the state-of-the-art performances in a wide range of techniques, such as object detection and speech recognition. In the aircraft design, dynamics, and control field, many works hinge on the information-rich data-driven approach, which includes the fusion-based prognostic and health management, the airliner's flight safety monitoring, intelligent sensing, and flight control systems development. While DL provides great potentials to solve these data-driven problems, a systematic review and discussion as to how the DL has been/can be used for these problems are still missing in relation to the rapidly developing and widely used DL techniques. In this article, we aim to address this urgent issue to provide a timely overview of the state-of-the-art for applying DL to the aircraft design, dynamics, and control field. In particular, we briefly introduce five representative DL methods, i.e., deep neural network, deep autoencoder, deep belief network, convolutional neural network, and recurrent neural network. Mathematical definitions for each method are presented, and illustrative applications are also discussed. We then review the existing DL-based works that have appeared in the aircraft design, dynamics, and control field. The review efforts are divided into two major groups, i.e., the own-ship aircraft modeling, wherein the works have been/can be implemented online for the aircraft design/dynamics/control, and other airplanes research works, wherein DL-based schemes provide offline monitoring of the aircraft operation. We then summarize the data sources and DL architectures. Referring to the experiences of DL research works/techniques development in other related fields, future opportunities, challenges, and potential solutions for implementing DL in the aircraft design, dynamics, and control field are also discussed.
机译:近几十年来,深度学习(DL)已成为一种迅速增长的研究方向,重新定义了各种技术中的最先进的表演,例如对象检测和语音识别。在飞机设计,动态和控制领域,许多作品铰链富裕的数据驱动方法,包括基于融合的预后和健康管理,客机的飞行安全监测,智能感应和飞行控制系统的开发。虽然DL提供了解决这些数据驱动的问题的巨大潜力,但系统审查和讨论如何使用DL如何用于这些问题,而仍然缺少与快速开发和广泛使用的DL技术相关。在本文中,我们的目标是解决这一紧急问题,以及时概述将DL应用于飞机设计,动态和控制领域的最先进的。特别是,我们简要介绍五种代表性的DL方法,即深神经网络,深度自动统计学家,深度信仰网络,卷积神经网络和经常性神经网络。提出了每个方法的数学定义,还讨论了说明性应用。然后,我们审查了在飞机设计,动态和控制领域中出现的现有的基于DL的作品。审查措施分为两组主要群体,即自己船舶飞机建模,其中作品已在线实施,用于飞机设计/动态/控制,以及其他飞机研究工作,其中基于DL的方案提供离线监测飞机运行。然后我们总结了数据源和DL架构。还讨论了DL研究工作/技术开发的DL研究工作/技术的经验,还讨论了在飞机设计,动态和控制领域中实施DL的未来机会,挑战和潜在解决方案。

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