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Optimal unsupervised motor learning for dimensionality reduction of nonlinear control systems

机译:非线性控制系统降维的最优无监督电机学习

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摘要

In this paper, optimal unsupervised motor learning is defined to be a technique for finding the coordinate system of minimum dimensionality which can adequately describe a particular motor task. An explicit method is provided for learning a stable controller that translates commands within the new coordinate system into motor variables appropriate for plant control. The method makes use of previously described neural network algorithms including the generalized Hebbian algorithm, basis-function trees, and trajectory extension learning. Examples of applications to a real direct-drive two joint planar robot arm and a simulated three joint robot arm with visual sensing are given.
机译:在本文中,最佳无监督运动学习被定义为一种能够找到可以充分描述特定运动任务的最小维度坐标系的技术。提供了一种用于学习稳定控制器的显式方法,该控制器将新坐标系中的命令转换为适合工厂控制的电机变量。该方法利用先前描述的神经网络算法,包括广义的Hebbian算法,基函数树和轨迹扩展学习。给出了实际的直接驱动两关节平面机器人手臂和带有视觉传感的模拟三关节机器人手臂的应用示例。

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