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Deep Neural Networks Based Real-time Optimal Control for Lunar Landing

机译:基于深度神经网络的月球着陆的实时最优控制

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Recent research on deep learning control,a new control algorithm based on machine learning able to learn deep architectures,has shown excellent performance on robots and drones.With the development of intelligent control like deep learning and reinforcement learning,accuracy,real-time,adaptability,robustness and autonomy of control algorithm have been achieved by the intelligent controls.Traditional control methods have difficulties to achieve nice performance in complex situations.Deep learning offers powerful algorithms to real-time search near-optimal controllers of lunar landing spacecraft with nonlinear dynamics.In terms of lunar landing control system,deep architectures offer the possibility to get an approximate solution of co-state equation without time-consuming iterative process.Furthermore,real-time optimal thrust during lunar landing may be derived directly through deep neural networks.As a single infrastructure for machine learning in both production and research,TensorFlow is chosen for training the deep artificial neural networks in this paper.Numerical simulations demonstrate the effectiveness of deep neural networks.The results of deep neural networks based optimal control are contrasted with traditional optimal algorithm,whose main idea is to track the pre-designed optimal trajectory by ground station.This research provides an effective approach to cope with the lunar landing problem.
机译:最近的深度学习控制研究,一种基于机器学习的新的控制算法,能够学习深层架构,在机器人和无人机上表现出优异的性能。在智能控制的发展,如深度学习和加强学习,准确性,实时,适应性通过智能控制实现控制算法的鲁棒性和自主权。传统的控制方法在复杂的情况下实现了良好的性能。Deep学习提供了强大的算法,可以使用非线性动力学的实时搜索近最优控制器。在月球着陆控制系统方面,深度架构提供了在没有耗时的迭代过程的情况下获得近似解决共态方程的解决方案。在月球着陆期间的实时最佳推力可以直接通过深神经网络直接导出生产和研究的机器学习单一基础设施,Tensorflo选择W选定用于训练本文的深层人工神经网络。数值模拟证明了深度神经网络的有效性。基于深度神经网络的最优控制结果与传统的最优算法形成对比,其主要思想是跟踪预先设计的地面站最佳轨迹。本研究提供了应对月球着陆问题的有效方法。

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