This paper addresses the problem of computing optimal impedance schedules for legged locomotion tasks involving complex contact interactions. We formulate the problem of impedance regulation as a trade-off between disturbance rejection and measurement uncertainty. We extend a stochastic optimal control algorithm known as Risk Sensitive Control to take into account measurement uncertainty and propose a formal way to include such uncertainty for unknown contact locations. The approach can efficiently generate optimal state and control trajectories along with local feedback control gains, i.e. impedance schedules. Extensive simulations demonstrate the capabilities of the approach in generating meaningful stiffness and damping modulation patterns before and after contact interaction. For example, contact forces are reduced during early contacts, damping increases to anticipate a high impact event and tracking is automatically traded-off for increased stability. In particular, we show a significant improvement in performance during jumping and trotting tasks with a simulated quadruped robot.
翻译:本文论述为涉及复杂接触互动的腿部移动任务计算最佳阻力时间表的问题。我们把阻力管制问题作为扰动排斥和测量不确定性之间的权衡。我们推广称为“风险敏感控制”的随机最佳控制算法,以考虑到测量不确定性,并提出一种正式办法将这种不确定性纳入未知接触地点。这种方法可以有效地产生最佳状态和控制轨迹,同时取得地方反馈控制收益,即阻碍时间表。广泛的模拟表明该方法在产生有意义的僵硬性和在接触互动前后调节模式方面的能力。例如,在早期接触期间,接触力量减少,为预期高影响事件而设置障碍,跟踪自动交易,以提高稳定性。特别是,我们显示了在与模拟四分立机器人一起跳跃和操练任务期间的性能显著改善。