Flight parameter prediction for high-dynamic Hypersonic vehicle system based on pre-training machine learning model

Dengji Zhou, Dawen Huang, Xing Zhang, Ming Tie, Yulin Wang, Yaoxin Shen
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Abstract

Given the harsh operating circumstances, hypersonic vehicles operating at high Mach number demand accurate advanced information of the flight and health state. Flight parameter prediction is a crucial foundation for achieving this requirement. This work addressed the trade-off between prediction accuracy and efficiency by proposing a flight parameter prediction model with the model pre-training and online parameter updating. To create training data, a mechanism model is established. Then, we construct and evaluate three distinct prediction models to increase prediction accuracy. Finally, we conducted comparative validation experiments to compare the prediction performance of the three models. The findings demonstrate that the suggested model greatly raises prediction accuracy without raising model complexity, better balancing prediction accuracy and efficiency. The prediction accuracy of the suggested model has increased by 81.9% when compared to the traditional model.
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基于预训练机器学习模型的高动态超音速飞行器系统飞行参数预测
鉴于恶劣的运行环境,在高马赫数下运行的高超音速飞行器需要准确的飞行和健康状态高级信息。飞行参数预测是实现这一要求的重要基础。这项工作通过提出一种具有模型预训练和在线参数更新功能的飞行参数预测模型,解决了预测精度和效率之间的权衡问题。为了创建训练数据,我们建立了一个机制模型。然后,我们构建并评估了三种不同的预测模型,以提高预测精度。最后,我们进行了对比验证实验,以比较三种模型的预测性能。研究结果表明,建议的模型在不增加模型复杂度的情况下大大提高了预测精度,更好地平衡了预测精度和效率。与传统模型相比,建议模型的预测准确率提高了 81.9%。
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