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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Nonlinear auto-regressive neural network for mathematical modelling of an airship using experimental data
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Nonlinear auto-regressive neural network for mathematical modelling of an airship using experimental data

机译:使用实验数据对飞艇进行数学建模的非线性自回归神经网络

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摘要

Autonomous flight of an aerial vehicle requires a sufficiently accurate mathematical model, which can capture system dynamics in the presence of external disturbances. Artificial neural network is known for ideal in capturing systems behaviour, where little knowledge about vehicle dynamics is available. In this paper, we explored this potential of artificial neural network for characterizing nonlinear dynamics of an unmanned airship. The flight experimentation data for an outdoor experimental airship are acquired through a series of pre-determined flight tests. The experimental data are subjected to a class of dynamic recurrent neural network model dubbed as nonlinear auto-regressive model with exogenous inputs for training. Sufficiently trained neural network model captured and demonstrated the longitudinal dynamics of the airship satisfactorily. We also demonstrated the usefulness of proposed technique for Lotte airship, wherein the performance of proposed model is validated and analysed for the Lotte airship flight test data.
机译:飞机的自主飞行需要足够精确的数学模型,该模型可以在存在外部干扰的情况下捕获系统动态。人工神经网络是捕获系统行为的理想之选,而有关车辆动力学的知识很少。在本文中,我们探索了人工神经网络在表征无人飞艇的非线性动力学方面的潜力。室外实验飞艇的飞行实验数据是通过一系列预定的飞行测试获得的。实验数据受到一类称为神经递归非线性动态回归模型的动态递归神经网络模型的训练。经过充分训练的神经网络模型可以令人满意地捕获并演示飞艇的纵向动力学。我们还证明了所提出的技术对乐天飞艇的有用性,其中所提出模型的性能已针对乐天飞艇的飞行测试数据进行了验证和分析。

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