首页> 外文会议>2011 IEEE/RSJ International Conference on Intelligent Robots and Systems >Adding a Receding Horizon to Locally Weighted Regression for learning robot control
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Adding a Receding Horizon to Locally Weighted Regression for learning robot control

机译:向局部加权回归添加后退视野以学习机器人控制

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There have been notable advances in learning to control complex robotic systems using methods such as Locally Weighted Regression (LWR). In this paper we explore some potential limits of LWR for robotic applications, particularly investigating its application to systems with a long horizon of temporal dependence. We define the horizon of temporal dependence as the delay from a control input to a desired change in output. LWR alone cannot be used in a temporally dependent system to find meaningful control values from only the current state variables and output, as the relationship between the input and the current state is under-constrained. By introducing a receding horizon of the future output states of the system, we show that sufficient constraint is applied to learn good solutions through LWR. The new method, Receding Horizon Locally Weighted Regression (RH-LWR), is demonstrated through one-shot learning on a real Series Elastic Actuator controlling a pendulum.
机译:使用诸如局部加权回归(LWR)之类的方法来控制复杂的机器人系统的学习有了显着进步。在本文中,我们探索了LWR在机器人应用中的一些潜在限制,特别是研究了LWR在具有长期时间依赖性的系统中的应用。我们将时间依赖性的范围定义为从控制输入到输出预期变化的延迟。由于输入和当前状态之间的关系受到约束,因此仅LWR不能在依赖于时间的系统中仅从当前状态变量和输出中找到有意义的控制值。通过引入该系统未来输出状态的后退视野,我们证明了足够的约束应用于通过LWR学习良好的解决方案。通过在控制摆的真实系列弹性执行器上进行一次学习,演示了一种新方法“后退水平局部加权回归(RH-LWR)”。

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