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一种用于自主运动控制与学习的分层神经网络模型。

A hierarchical neural-network model for control and learning of voluntary movement.

作者信息

Kawato M, Furukawa K, Suzuki R

机构信息

Department of Biophysical Engineering, Faculty of Engineering Science, Osaka University, Japan.

出版信息

Biol Cybern. 1987;57(3):169-85. doi: 10.1007/BF00364149.

Abstract

In order to control voluntary movements, the central nervous system (CNS) must solve the following three computational problems at different levels: the determination of a desired trajectory in the visual coordinates, the transformation of its coordinates to the body coordinates and the generation of motor command. Based on physiological knowledge and previous models, we propose a hierarchical neural network model which accounts for the generation of motor command. In our model the association cortex provides the motor cortex with the desired trajectory in the body coordinates, where the motor command is then calculated by means of long-loop sensory feedback. Within the spinocerebellum--magnocellular red nucleus system, an internal neural model of the dynamics of the musculoskeletal system is acquired with practice, because of the heterosynaptic plasticity, while monitoring the motor command and the results of movement. Internal feedback control with this dynamical model updates the motor command by predicting a possible error of movement. Within the cerebrocerebellum--parvocellular red nucleus system, an internal neural model of the inverse-dynamics of the musculo-skeletal system is acquired while monitoring the desired trajectory and the motor command. The inverse-dynamics model substitutes for other brain regions in the complex computation of the motor command. The dynamics and the inverse-dynamics models are realized by a parallel distributed neural network, which comprises many sub-systems computing various nonlinear transformations of input signals and a neuron with heterosynaptic plasticity (that is, changes of synaptic weights are assumed proportional to a product of two kinds of synaptic inputs). Control and learning performance of the model was investigated by computer simulation, in which a robotic manipulator was used as a controlled system, with the following results: (1) Both the dynamics and the inverse-dynamics models were acquired during control of movements. (2) As motor learning proceeded, the inverse-dynamics model gradually took the place of external feedback as the main controller. Concomitantly, overall control performance became much better. (3) Once the neural network model learned to control some movement, it could control quite different and faster movements. (4) The neural network model worked well even when only very limited information about the fundamental dynamical structure of the controlled system was available.(ABSTRACT TRUNCATED AT 400 WORDS)

摘要

为了控制随意运动,中枢神经系统(CNS)必须在不同层面解决以下三个计算问题:在视觉坐标中确定期望轨迹、将其坐标转换为身体坐标以及生成运动指令。基于生理学知识和先前的模型,我们提出了一个解释运动指令生成的分层神经网络模型。在我们的模型中,联合皮层为运动皮层提供身体坐标中的期望轨迹,然后通过长环感觉反馈计算运动指令。在脊髓小脑 - 大细胞红核系统内,由于异突触可塑性,在监测运动指令和运动结果的同时,通过练习获得肌肉骨骼系统动力学的内部神经模型。利用这个动力学模型进行的内部反馈控制通过预测可能的运动误差来更新运动指令。在脑桥小脑 - 小细胞红核系统内,在监测期望轨迹和运动指令的同时,获得肌肉骨骼系统逆动力学的内部神经模型。逆动力学模型在运动指令的复杂计算中替代了其他脑区。动力学模型和逆动力学模型由一个并行分布式神经网络实现,该网络包括许多计算输入信号各种非线性变换的子系统和一个具有异突触可塑性的神经元(即假设突触权重的变化与两种突触输入的乘积成比例)。通过计算机模拟研究了该模型的控制和学习性能,其中使用机器人操纵器作为受控系统,结果如下:(1)在运动控制过程中获得了动力学模型和逆动力学模型。(2)随着运动学习的进行,逆动力学模型逐渐取代外部反馈成为主要控制器。与此同时,整体控制性能变得更好。(3)一旦神经网络模型学会控制某种运动,它就能控制截然不同且更快的运动。(4)即使只有关于受控系统基本动力学结构的非常有限的信息,神经网络模型也能很好地工作。(摘要截短为400字)

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