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Model-based deep reinforcement learning with heuristic search for satellite attitude control

机译:基于模型的卫星态度控制启发式搜索的深度增强学习

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Purpose Recently, deep reinforcement learning is developing rapidly and shows its power to solve difficult problems such as robotics and game of GO. Meanwhile, satellite attitude control systems are still using classical control technics such as proportional - integral - derivative and slide mode control as major solutions, facing problems with adaptability and automation. Design/methodology/approach In this paper, an approach based on deep reinforcement learning is proposed to increase adaptability and autonomy of satellite control system. It is a model-based algorithm which could find solutions with fewer episodes of learning than model-free algorithms. Findings Simulation experiment shows that when classical control crashed, this approach could find solution and reach the target with hundreds times of explorations and learning. Originality/value This approach is a non-gradient method using heuristic search to optimize policy to avoid local optima. Compared with classical control technics, this approach does not need prior knowledge of satellite or its orbit, has the ability to adapt different kinds of situations with data learning and has the ability to adapt different kinds of satellite and different tasks through transfer learning.
机译:目的最近,深度加强学习正在迅速发展,并展示了解决困难问题,例如机器人和游戏。同时,卫星姿态控制系统仍在使用古典控制技术,如比例 - 积分 - 衍生和滑动模式控制作为主要解决方案,面临适应性和自动化的问题。设计/方法/方法在本文中,提出了一种基于深度加强学习的方法,以提高卫星控制系统的适应性和自主性。它是一种基于模型的算法,可以找到比无模型算法更少的学习剧集的解决方案。调查结果模拟实验表明,当经典控制崩溃时,这种方法可以找到解决方案并达到数百次探索和学习的目标。原始性/值此方法是使用启发式搜索的非渐变方法,以优化策略以避免本地Optima。与古典控制技术相比,这种方法不需要先前的卫星或其轨道知识,能够通过数据学习来调整不同种类的情况,并能够通过转移学习来调整不同类型的卫星和不同任务。

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