Approximate hybrid model predictive control for multi-contact push recovery in complex environments

Tobia Marcucci, Robin Deits, M. Gabiccini, A. Bicchi, Russ Tedrake
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引用次数: 58

Abstract

Feedback control of robotic systems interacting with the environment through contacts is a central topic in legged robotics. One of the main challenges posed by this problem is the choice of a model sufficiently complex to capture the discontinuous nature of the dynamics but simple enough to allow online computations. Linear models have proved to be the most effective and reliable choice for smooth systems; we believe that piecewise affine (PWA) models represent their natural extension when contact phenomena occur. Discrete-time PWA systems have been deeply analyzed in the field of hybrid Model Predictive Control (MPC), but the straightforward application of MPC techniques to complex systems, such as a humanoid robot, leads to mixed-integer optimization problems which are not solvable at real-time rates. Explicit MPC methods can construct the entire control policy offline, but the resulting policy becomes too complex to compute for systems at the scale of a humanoid robot. In this paper we propose a novel algorithm which splits the computational burden between an offline sampling phase and a limited number of online convex optimizations, enabling the application of hybrid predictive controllers to higher-dimensional systems. In doing so we are willing to partially sacrifice feedback optimality, but we set stability of the system as an inviolable requirement. Simulation results of a simple planar humanoid that balances by making contact with its environment are presented to validate the proposed controller.
复杂环境下多触点推力恢复的近似混合模型预测控制
机器人系统通过接触与环境相互作用的反馈控制是腿式机器人的核心问题。这个问题带来的主要挑战之一是选择一个足够复杂的模型来捕捉动力学的不连续特性,但又足够简单以允许在线计算。线性模型已被证明是光滑系统最有效和可靠的选择;我们认为,片段仿射(PWA)模型代表了它们在接触现象发生时的自然延伸。在混合模型预测控制(MPC)领域中,离散时间PWA系统已经得到了深入的分析,但将MPC技术直接应用于复杂系统,如人形机器人,会导致无法实时求解的混合整数优化问题。显式MPC方法可以离线构建整个控制策略,但生成的策略过于复杂,无法用于类人机器人规模的系统计算。在本文中,我们提出了一种新的算法,该算法将离线采样阶段和有限数量的在线凸优化之间的计算负担分开,使混合预测控制器能够应用于高维系统。在这样做的过程中,我们愿意部分地牺牲反馈的最优性,但我们将系统的稳定性作为不可违背的要求。通过一个简单的平面人形机器人与环境接触平衡的仿真结果验证了所提出的控制器的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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