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Machine Learning for Flapping Wing Flight Control

机译:扑翼飞行控制的机器学习

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摘要

Flight control of Flapping Wing Micro Air Vehicles is challenging, because of their complex dynamics and variability due to manufacturing inconsistencies. Machine Learning algorithms can be used to tackle these challenges. A Policy Gradient algorithm is used to tune the gains of a Proportional-Integral controller using Reinforcement Learning. A novel Classification Algorithm for Machine Learning control (CAML) is presented, which uses model identification and a neural network classifier to select from several predefined gain sets. The algorithms show comparable performance when considering variability only, but the Policy Gradient algorithm is more robust to noise, disturbances, nonlinearities and flapping motion. CAML seems to be promising for problems where no single gain set is available to stabilize the entire set of variable systems.
机译:由于制造不一致导致的复杂动态和可变性,扑振翼微型航空器的飞行控制是具有挑战性的。机器学习算法可用于解决这些挑战。一种策略梯度算法用于使用加强学习来调整比例积分控制器的增益。提出了一种用于机器学习控制(CAM1)的新型分类算法,其使用模型标识和神经网络分类器来从几个预定义的增益集中进行选择。算法仅在考虑可变性时显示出可比的性能,但是政策梯度算法对噪声,干扰,非线性和拍打运动更加坚固。 CAML似乎很有希望没有任何单一增益集可用以稳定整个变量系统的问题。

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