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Physically consistent state estimation and system identification for contacts

机译:物理上一致的状态估计和联系人的系统标识

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Successful model based control relies heavily on proper system identification and accurate state estimation. We present a framework for solving these problems in the context of robotic control applications. We are particularly interested in robotic manipulation tasks, which are especially hard due to the non-linear nature of contact phenomena. We developed a solution that solves both the problems of estimation and system identification jointly. We show that these two problems are difficult to solve separately in the presence of discontinuous phenomena such as contacts. The problem is posed as a joint optimization across both trajectory and model parameters and solved via Newton's method. We present several challenges we encountered while modeling contacts and performing state estimation and propose solutions within the MuJoCo physics engine. We present experimental results performed on our manipulation system consisting of 3-DOF Phantom Haptic Devices, turned into finger manipulators. Cross-validation between different datasets, as well as leave-one-out cross-validation show that our method is robust and is able to accurately explain sensory data.
机译:成功的基于模型的控制严重依赖于正确的系统识别和准确的状态估计。我们提出了一种在机器人控制应用程序中解决这些问题的框架。我们对机器人操纵任务特别感兴趣,由于接触现象的非线性性质,机器人操纵任务特别困难。我们开发了一种解决方案,可以共同解决估计和系统识别这两个问题。我们表明,在存在不连续现象(例如接触)的情况下,很难单独解决这两个问题。该问题被提出为跨轨迹和模型参数的联合优化,并通过牛顿方法解决。我们提出了在对接触建模和执行状态估计时遇到的一些挑战,并在MuJoCo物理引擎中提出了解决方案。我们介绍了在由3-DOF幻影触觉设备组成的操纵系统上转换为手指操纵器的实验结果。不同数据集之间的交叉验证以及留一法交叉验证表明,我们的方法是鲁棒的,并且能够准确地解释感官数据。

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