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Deep learning helicopter dynamics models

机译:深度学习直升机动力学模型

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摘要

We consider the problem of system identification of helicopter dynamics. Helicopters are complex systems, coupling rigid body dynamics with aerodynamics, engine dynamics, vibration, and other phenomena. Resultantly, they pose a challenging system identification problem, especially when considering non-stationary flight regimes. We pose the dynamics modeling problem as direct high-dimensional regression, and take inspiration from recent results in Deep Learning to represent the helicopter dynamics with a Rectified Linear Unit (ReLU) Network Model, a hierarchical neural network model. We provide a simple method for initializing the parameters of the model, and optimization details for training. We describe three baseline models and show that they are significantly outperformed by the ReLU Network Model in experiments on real data, indicating the power of the model to capture useful structure in system dynamics across a rich array of aerobatic maneuvers. Specifically, the ReLU Network Model improves 58% overall in RMS acceleration prediction over state-of-the-art methods. Predicting acceleration along the helicopter's up-down axis is empirically found to be the most difficult, and the ReLU Network Model improves by 60% over the prior state-of-the-art. We discuss explanations of these performance gains, and also investigate the impact of hyperparameters in the novel model.
机译:我们考虑直升机动力学的系统识别问题。直升机是复杂的系统,将刚体动力学与空气动力学,发动机动力学,振动和其他现象耦合在一起。结果,它们带来了具有挑战性的系统识别问题,尤其是在考虑非平稳飞行状态时。我们将动力学建模问题描述为直接的高维回归,并从深度学习的最新成果中汲取灵感,以整流线性单元(ReLU)网络模型(一种层次神经网络模型)表示直升机的动力学。我们提供了一种初始化模型参数的简单方法,并提供了用于训练的优化细节。我们描述了三种基线模型,并表明在实际数据实验中,ReLU网络模型的性能明显优于ReLU网络模型,这表明该模型具有强大的功能,可在各种特技飞行动作中捕获系统动力学中的有用结构。特别是,ReLU网络模型相对于最新方法,将RMS加速度预测总体提高了58%。根据经验,预测沿直升机上下轴的加速度是最困难的,并且ReLU网络模型比现有技术水平提高了60%。我们讨论了这些性能提升的解释,并且还研究了超参数在新型模型中的影响。

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