Stochastic Optimal Control (SOC) typically considers noise only in the process model, i.e. unknown disturbances. However, in many robotic applications involving interaction with the environment, such as locomotion and manipulation, uncertainty also comes from lack of precise knowledge of the world, which is not an actual disturbance. We analyze the effects of also considering noise in the measurement model, by developing a SOC algorithm based on risk-sensitive control, that includes the dynamics of an observer in such a way that the control law explicitly depends on the current measurement uncertainty. In simulation results on a simple 2D manipulator, we have observed that measurement uncertainty leads to low impedance behaviors, a result in contrast with the effects of process noise that creates stiff behaviors. This suggests that taking into account measurement uncertainty could be a potentially very interesting way to approach problems involving uncertain contact interactions.
翻译:斯托卡最佳控制(SOC)通常只在过程模型中考虑噪音,即未知扰动。然而,在许多涉及与环境互动的机器人应用中,如移动和操纵,不确定性还来自缺乏对世界的准确了解,这并非实际干扰。我们分析测量模型中也考虑噪音的影响,通过开发基于风险敏感性控制的SOC算法,包括观察员的动态,使控制法明确取决于目前的测量不确定性。在简单的2D操纵器的模拟结果中,我们观察到测量不确定性会导致低阻力行为,这与产生僵硬行为的过程噪音的影响形成对照。这表明,考虑到测量不确定性,处理不确定的接触互动问题可能是一种非常有趣的方法。