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A computationally efficient approach for NN based system identification of a rotary wing UAV

机译:一种基于计算的高效方法,用于基于NN的旋翼无人机系统识别

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Neural Network (NN) models based on autoregressive structures have long been used for nonlinear system identification problems. Their application for on-line implementations, however require them to be trained within a prescribed time span, which is often related to the sampling time of the system. In this paper, we introduce a NN model that is embedded with a dimensionality reduction mechanism in order to reduce the size of the network. The dimensionality reduction is based on Principal Component Analysis (PCA) and the resulting smaller NN trains faster. The longitudinal and lateral dynamics of a rotary wing Unmanned Aerial Vehicle (UAV) is modelled using flight test data. The results of system identification, error statistics and training times are provided to highlight the benefits of the proposed approach for NN based system identification models.
机译:长期以来,基于自回归结构的神经网络(NN)模型一直用于非线性系统识别问题。但是,它们在在线实施中的应用要求他们在规定的时间范围内接受培训,通常与系统的采样时间有关。在本文中,我们介绍了一种嵌入了降维机制的神经网络模型,以减少网络规模。降维是基于主成分分析(PCA)的,因此较小的NN训练速度更快。使用飞行测试数据对旋转翼无人飞行器(UAV)的纵向和横向动力学进行建模。提供了系统识别,错误统计和训练时间的结果,以突出提出的方法对基于NN的系统识别模型的好处。

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