Survey on a neural network for non linear estimation of aerodynamic angles

A. Lerro, M. Battipede, P. Gili, A. Brandl
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引用次数: 17

Abstract

Unmanned Aerial Vehicles (UAV) design may involve issues on redundancy of the systems due to restricted available space and allowable weight. Virtual sensors offer great advantages from this point of view and several research projects carry out more or less complicated solutions in order to estimate a signal without applying a physical sensor. This approach brings to a reduction of the overall cost and to improve the Reliability, Availability, Maintainability and Safety (RAMS) performance. The patented technology named Smart-ADAHRS (Smart — Attitude and Heading Reference System) is a powerful technique presented during previous research for estimation of the aerodynamic angles. This algorithm is based on Artificial Neural Network (ANN) and receive inputs from on-board sensors only. Whereas previous studies considered also the signals coming from the Flight Control System (FCS), this work presents the important simplification of not considering them in the input vector. This paper resumes the previous results obtained in simulated environment with former neural network-based estimators. Then, a comparison of the results obtained by the new estimator, applying the reduced input vector in different environments, is carried out. Moreover, it re-discusses accuracy by means of a new test case that consider simulated realistic faults and noise. Eventually, a first analysis around performance in operative environment is conducted using data obtained from flight test campaigns. Results show how accuracy is preserved both in realistic situation and critical circumstances.
气动角非线性估计的神经网络研究进展
由于可用空间和允许重量的限制,无人机的设计可能涉及系统冗余问题。从这个角度来看,虚拟传感器提供了很大的优势,一些研究项目或多或少地进行了复杂的解决方案,以便在不应用物理传感器的情况下估计信号。这种方法降低了总体成本,提高了可靠性、可用性、可维护性和安全性(RAMS)性能。智能姿态和航向参考系统(Smart - adahrs)专利技术是前人研究中提出的一种有效的气动角度估计技术。该算法基于人工神经网络(ANN),仅接收车载传感器的输入。鉴于以前的研究也考虑了来自飞行控制系统(FCS)的信号,这项工作提出了在输入向量中不考虑它们的重要简化。本文用以前的基于神经网络的估计器恢复了以前在模拟环境中得到的结果。然后,对新估计器在不同环境下应用简化后的输入向量得到的结果进行了比较。此外,通过考虑模拟真实故障和噪声的新测试用例,重新讨论了精度问题。最后,使用从飞行测试活动中获得的数据,对操作环境中的性能进行了第一次分析。结果显示了在现实情况和危急情况下如何保持准确性。
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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