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Multiparameter Real-World System Identification Using Iterative Residual Tuning

机译:多游ameter实际系统识别使用迭代剩余调谐

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摘要

In this work, we consider the problem of nonlinear system identification using data to learn multiple and often coupled parameters that allow a simulator to more accurately model a physical system or mechanism and close the so-called reality gap for more accurate robot control. Our approach uses iterative residual tuning (IRT), a recently developed derivative-free system identification technique that utilizes neural networks and visual observation to estimate parameter differences between a proposed model and a target model. We develop several modifications to the basic IRT approach and apply it to the system identification of a five-parameter model of a marble rolling in a robot-controlled labyrinth game mechanism. We validate our technique both in simulation-where we outperform two baselines-and on a real system, where we achieve marble tracking error of 4% after just five optimization iterations.
机译:在这项工作中,我们考虑非线性系统辨识的问题,使用数据来学习多个且经常耦合的参数,允许模拟器更精确地模拟物理系统或机构,并关闭所谓的现实间隙,以实现更精确的机器人控制。我们的方法使用迭代剩余调整(IRT),这是一种最近发展起来的无导数系统识别技术,利用神经网络和视觉观察来估计拟议模型和目标模型之间的参数差异。我们对基本的IRT方法进行了一些改进,并将其应用于机器人控制的迷宫游戏机构中大理石滚动的五参数模型的系统辨识。我们在模拟中验证了我们的技术,在模拟中,我们的性能优于两个基线,在实际系统中,我们在五次优化迭代后实现了4%的大理石跟踪误差。

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