Trajectory optimization for domains with contacts using inverse dynamics

Tom Erez, E. Todorov
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引用次数: 77

Abstract

This paper presents an algorithm for direct trajectory optimization in domains with contact. Since contacts and other unilateral constraints may introduce non-smooth dynamics, many standard algorithms of optimal control and reinforcement learning cannot be directly applied to such domains. We use a smooth contact model that can compute inverse dynamics through the contact, thereby avoiding hybrid representation of the non-smooth contact state. This allows us to formulate an unconstrained, continuous trajectory optimization problem, which can be solved using standard optimization tools. We demonstrate our approach by optimizing a running gait for a 31-dimensional simulated humanoid. The resulting gait is demonstrated in a movie attached as supplementary material. The optimization result exhibits a synchronous motion of the arm and the opposite leg, eliminating undesired angular momentum; this is a key feature of bipedal running, and its emergence attests to the power of the optimization process.
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基于逆动力学的接触域轨迹优化
提出了一种具有接触域的直接轨迹优化算法。由于接触和其他单边约束可能引入非光滑动力学,许多最优控制和强化学习的标准算法不能直接应用于这些领域。我们使用光滑接触模型,该模型可以通过接触计算逆动力学,从而避免了非光滑接触状态的混合表示。这允许我们制定一个无约束的,连续的轨迹优化问题,可以使用标准的优化工具来解决。我们通过优化31维模拟人形的跑步步态来演示我们的方法。由此产生的步态在附加的电影中作为补充材料进行演示。优化结果显示手臂和相对腿的运动同步,消除了不希望的角动量;这是双足跑步的一个关键特征,它的出现证明了优化过程的力量。
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