Value learning from trajectory optimization and Sobolev descent: A step toward reinforcement learning with superlinear convergence properties

Amit Parag, Sébastien Kleff, Léo Saci, N. Mansard, O. Stasse
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引用次数: 7

Abstract

The recent successes in deep reinforcement learning largely rely on the capabilities of generating masses of data, which in turn implies the use of a simulator. In particular, current progress in multi body dynamic simulators are under-pinning the implementation of reinforcement learning for end-to-end control of robotic systems. Yet simulators are mostly considered as black boxes while we have the knowledge to make them produce a richer information. In this paper, we are proposing to use the derivatives of the simulator to help with the convergence of the learning. For that, we combine model-based trajectory optimization to produce informative trials using 1st- and 2nd-order simulation derivatives. These locally-optimal runs give fair estimates of the value function and its derivatives, that we use to accelerate the convergence of the critics using Sobolev learning. We empirically demonstrate that the algorithm leads to a faster and more accurate estimation of the value function. The resulting value estimate is used in model-predictive controller as a proxy for shortening the preview horizon. We believe that it is also a first step toward superlinear reinforcement learning algorithm using simulation derivatives, that we need for end-to-end legged locomotion.
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基于轨迹优化和Sobolev下降的价值学习:向具有超线性收敛特性的强化学习迈出的一步
最近深度强化学习的成功很大程度上依赖于生成大量数据的能力,而这反过来又意味着模拟器的使用。特别是,当前多体动态模拟器的进展为机器人系统端到端控制的强化学习的实施奠定了基础。然而,模拟器大多被认为是黑盒子,而我们有知识让它们产生更丰富的信息。在本文中,我们建议使用模拟器的导数来帮助学习的收敛。为此,我们结合基于模型的轨迹优化,使用一阶和二阶仿真导数产生信息丰富的试验。这些局部最优运行给出了价值函数及其衍生物的公平估计,我们使用Sobolev学习来加速批评者的收敛。我们的经验证明,该算法导致一个更快,更准确的估计值函数。在模型预测控制器中,将得到的估计值作为缩短预测视界的代理。我们相信这也是使用模拟导数的超线性强化学习算法的第一步,我们需要端到端腿运动。
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