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受小脑通路启发的运动控制模糊神经元模型,能够在存在延迟的情况下在线并逐步学习逆生物力学功能。

Fuzzy neuronal model of motor control inspired by cerebellar pathways to online and gradually learn inverse biomechanical functions in the presence of delay.

作者信息

Salimi-Badr Armin, Ebadzadeh Mohammad Mehdi, Darlot Christian

机构信息

Department of Computer Engineering and Information Technology, Amirkabir University of Technology, Tehran, Iran.

INSERM U1093, Laboratoire de Cognition, Action et Plasticité Sensorimotrice, UFR STAPS, Université de Bourgogne, Dijon, France.

出版信息

Biol Cybern. 2017 Dec;111(5-6):421-438. doi: 10.1007/s00422-017-0735-9. Epub 2017 Oct 9.

Abstract

Contrary to forward biomechanical functions, which are deterministic, inverse biomechanical functions are generally not. Calculating an inverse biomechanical function is an ill-posed problem, which has no unique solution for a manipulator with several degrees of freedom. Studies of the command and control of biological movements suggest that the cerebellum takes part in the computation of approximate inverse functions, and this ability can control fast movements by predicting the consequence of current motor command. Limb movements toward a goal are defined as fast if they last less than the total duration of the processing and transmission delays in the motor and sensory pathways. Because of these delays, fast movements cannot be continuously controlled in a closed loop by use of sensory signals. Thus, fast movements must be controlled by some open loop controller, of which cerebellar pathways constitute an important part. This article presents a system-level fuzzy neuronal motor control circuit, inspired by the cerebellar pathways. The cerebellar cortex (CC) is assumed to embed internal models of the biomechanical functions of the limb segments. Such neural models are able to predict the consequences of motor commands and issue predictive signals encoding movement variables, which are sent to the controller via internal feedback loops. Differences between desired and expected values of variables of movements are calculated in the deep cerebellar nuclei (DCN). After motor learning, the whole circuit can approximate the inverse function of the biomechanical function of a limb and acts as a controller. In this research, internal models of direct biomechanical functions are learned and embedded in the connectivity of the cerebellar pathways. Two fuzzy neural networks represent the two parts of the cerebellum, and an online gradual learning drives the acquisition of the internal models in CC and the controlling rules in DCN. As during real learning, exercise and repetition increase skill and speed. The learning procedure is started by a simple and slow movement, controlled in the presence of delays by a simple closed loop controller comparable to the spinal reflexes. The speed of the movements is then increased gradually, and output error signals are used to compute teaching signals and drive learning. Repetition of movements at each speed level allows to properly set the two neural networks, and progressively learn the movement. Finally, conditions of stability of the proposed model as an inverter are identified. Next, the control of a single segment arm, moved by two muscles, is simulated. After proper setting by motor learning, the circuit is able to reject perturbations.

摘要

与具有确定性的正向生物力学功能相反,反向生物力学功能通常并非如此。计算反向生物力学功能是一个不适定问题,对于具有多个自由度的操纵器而言,它没有唯一解。对生物运动的指令与控制研究表明,小脑参与近似反向功能的计算,并且这种能力可通过预测当前运动指令的结果来控制快速运动。如果肢体朝着目标的运动持续时间短于运动和感觉通路中处理与传输延迟的总时长,那么这种运动就被定义为快速运动。由于这些延迟,快速运动无法通过使用感觉信号在闭环中进行连续控制。因此,快速运动必须由某个开环控制器来控制,小脑通路便是这个开环控制器的重要组成部分。本文提出了一种受小脑通路启发的系统级模糊神经元运动控制电路。假定小脑皮质(CC)嵌入了肢体节段生物力学功能的内部模型。这样的神经模型能够预测运动指令的结果,并发出编码运动变量的预测信号,这些信号通过内部反馈回路发送至控制器。运动变量的期望值与预期值之间的差异在小脑深部核团(DCN)中进行计算。经过运动学习后,整个电路能够近似肢体生物力学功能的反向功能,并充当控制器。在本研究中,直接生物力学功能的内部模型通过学习被嵌入到小脑通路的连接中。两个模糊神经网络代表小脑的两个部分,在线渐进学习驱动在CC中获取内部模型以及在DCN中获取控制规则。正如在实际学习过程中一样,练习和重复会提高技能与速度。学习过程由一个简单且缓慢的运动启动,该运动在存在延迟的情况下由一个类似于脊髓反射的简单闭环控制器控制。然后逐渐提高运动速度,并使用输出误差信号来计算教学信号并驱动学习。在每个速度水平重复运动能够恰当地设置这两个神经网络,并逐步学习该运动。最后,确定了所提出模型作为逆变器的稳定性条件。接下来,对由两块肌肉驱动的单节段手臂的控制进行了模拟。经过运动学习进行适当设置后,该电路能够抵抗干扰。

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