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Prediction of AW609 Rotor Loads by Means of Neural Networks

机译:基于神经网络的AW609转子载荷预测

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The effectiveness of using neural networks to predict rotor loads on the AW609 tilt-rotor is proven in this work. The main objective is to find a viable architecture for a neural network simple enough to be implemented in real time, with the aim to have a reliable prediction of rotor loads during telemetry monitoring sessions of flight test operations. The real time comparison of the loads predicted by the neural network with those measured by the aircraft instrumentation can provide immediate hints of incipient anomalies. A simple Feed Forward neural network has been tested, analyzing briefly the pros and cons of such a choice versus other possible architectures. The proposed neural network will estimate the bending loads (beam and chord) and the pitch link axial load, given the parameters that describe the aircraft trim point and how it is maneuvering. Instead of trying to estimate directly the time history of the loads, with all its associated dynamics, an approach based on a harmonic decomposition is here proposed. In particular, the signal is first decomposed in its harmonic components and various neural networks are trained efficiently to predict a single harmonic at a time. The complete time history is then reconstructed a-posteriori by combining all the signals predicted by the different neural networks.
机译:这项工作证明了使用神经网络预测AW609倾斜转子上的转子负载的有效性。主要目标是为神经网络找到一种可行的架构,该架构应足够简单以实现实时,目的是在飞行测试操作的遥测监视会话期间对转子负载进行可靠的预测。由神经网络预测的负载与由飞机仪表测量的负载的实时比较可以提供初期异常的即时提示。测试了一个简单的前馈神经网络,简要分析了这种选择与其他可能的体系结构的优缺点。给定描述飞机纵倾点及其操纵方式的参数,拟议的神经网络将估算弯曲载荷(梁和弦)和俯仰连杆的轴向载荷。在此提出一种基于谐波分解的方法,而不是尝试直接估计负载的时程及其所有相关的动力学。特别是,首先将信号分解为其谐波分量,然后有效地训练各种神经网络,以一次预测单个谐波。然后,通过组合由不同神经网络预测的所有信号,从后方重建完整的时间历史。

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