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Implementing Deep Learning for comprehensive aircraft icing and actuator/sensor fault detection/identification

机译:实施深度学习以实现全面的飞机结冰和执行器/传感器故障检测/识别

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摘要

The detection and identification for aircraft icing and actuator/sensor fault has been a lasting topic in flight safety researches. The current algorithms are usually tailored for some specific cases (faults/icing locations, magnitude, etc.). Although the performance of the algorithm in the designated cases may be good, the transferring of it to other different cases is usually heavy as parameters tuning or even algorithm redesigning may be required. In this paper, the author advocates exploring a comprehensive scheme that balance both good performance and wide transferability for different cases. Referring to the current advances in other research communities, we follow the state-of-art Deep Learning (DL) and transfer learning (TL) concepts. A scheme for the icing/actuator fault detection using the DL technique is firstly constructed. The TL is then adopted to transfer this scheme to other different tasks, e.g. fault/icing identification, sensor fault detection. Test results show that the TL-enhanced DL scheme exhibits not only good performance for the designated detection task, but also reflects flexible transferability at low tuning efforts. Via this paper the author advocates furtherly exploring the potentials of the novel DL and TL technique as to advancing the researches/techniques in the flight dynamics and control realm.
机译:飞机结冰和执行器/传感器故障的检测和识别一直是飞行安全研究中的持久课题。当前的算法通常是针对某些特定情况(故障/结冰位置,大小等)量身定制的。尽管算法在指定情况下的性能可能很好,但是由于需要进行参数调整甚至重新设计算法,因此将其转移到其他不同情况时通常比较繁琐。在本文中,作者主张探索一种综合方案,该方案在不同情况下兼顾良好性能和广泛的可移植性。参考其他研究社区的最新进展,我们遵循最先进的深度学习(DL)和转移学习(TL)的概念。首先构造了一种使用DL技术的结冰/执行器故障检测方案。然后采用TL将该方案转移到其他不同的任务,例如故障/结冰识别,传感器故障检测。测试结果表明,TL增强的DL方案不仅对指定的检测任务表现出良好的性能,而且还反映了在低调工作量下的灵活可传递性。通过本文,作者主张进一步探索新型DL和TL技术的潜力,以促进飞行动力学和控制领域的研究/技术。

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