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A Self-Adaptive 1D Convolutional Neural Network for Flight-State Identification

机译:用于飞行状态识别的自适应1D卷积神经网络

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摘要

The vibration of a wing structure in the air reflects coupled aerodynamic-mechanical responses under varying flight states that are defined by the angle of attack and airspeed. It is of great challenge to identify the flight state from the complex vibration signals. In this paper, a novel one-dimension convolutional neural network (CNN) is developed, which is able to automatically extract useful features from the structural vibration of a recently fabricated self-sensing wing through wind-tunnel experiments. The obtained signals are firstly decomposed into various subsignals with different frequency bands via dual-tree complex-wavelet packet transformation. Then, the reconstructed subsignals are selected to form the best combination for multichannel inputs of the CNN. A swarm-based evolutionary algorithm called grey-wolf optimizer is utilized to optimize a set of key parameters of the CNN, which saves considerable human efforts. Two case studies demonstrate the high identification accuracy and robustness of the proposed method over standard deep-learning methods in flight-state identification, thus providing new perspectives in self-awareness toward the next generation of intelligent air vehicles.
机译:空气中的机翼结构的振动反射了通过攻角和空速定义的不同飞行状态下的耦合空气动力学响应。从复杂的振动信号中识别飞行状态是出色的挑战。在本文中,开发了一种新颖的一维卷积神经网络(CNN),其能够通过风隧道实验自动从最近制造的自感翼的结构振动中提取有用的特征。通过双树复杂小波分组转换首先将所获得的信号用不同的频带分解成各种子环。然后,选择重建的子项以形成CNN的多通道输入的最佳组合。一种称为灰狼优化器的群体的进化算法用于优化CNN的一组关键参数,从而节省了相当大的人类努力。两个案例研究证明了在飞行状态的鉴定标准深学习方法,该方法的识别精度高和鲁棒性,从而提供了向下一代智能飞行器自我意识的新观点。

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