神经元件的模拟计算机模拟

F. F. Hiltz
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引用次数: 20

摘要

作为研究自然神经网络和人工神经网络的自适应行为和数据处理特性的前奏,建立了单个神经元的模拟模型。在神经元行为的定性模拟研究中,利用模拟计算机再现已知神经元的电特性。在预测网络研究的前提下,单神经元模拟采用了自定义的最小模拟计算机组件数准则。这一标准导致了一种简单模拟电路的发展,该电路定性地再现了神经元的一些已知电特性,例如:在阈上去极化(或兴奋性)输入的存在下启动动作电位;强度时间关系;住宿;耐火度;脉冲重复率作为输入去极化电平的函数;延长动作电位。采用的仿真方法由四个主要模拟计算机组件、三个运算放大器和一个单次多谐振荡器组成。所开发的电路具有非线性反馈形式的线性正向路径。讨论了有非线性反馈和无非线性反馈时模拟神经元所表现出的性质。提出了一种非线性行为线性逼近的数学方法。这种方法被称为“描述函数技术”,并描述了其在神经元行为分析中的应用,以及该技术在模拟网络合成中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analog Computer Simulation of a Neural Element
As a prelude to the study of the adaptive-behavior and data-handling characteristics of natural and artificial neural networks, an analog model of a single neuron was developed. An analog computer was employed to reproduce the known electrical characteristics of a neuron in a qualitative simulation study of neuronal behavior. A self-imposed criterion of a minimum number of analog-computer components was adopted for the single-neuron simulation in anticipation of network studies. This criterion led to the development of a simple analog circuit which has qualitatively reproduced some of the known electrical characteristics of a neuron, such as: initiation of an action potential in the presence of suprathreshold depolarizing (or excitatory) inputs; strength-duration relationship; accommodation; refractoriness; rate of pulse repetition as a function of the input depolarization level; and prolonged action potentials. The simulation method adopted consisted of four major analog-computer components, three operational amplifiers and a single-shot multivibrator. The circuit developed has a linear forward path with a nonlinear form of feedback. A discussion is given of the properties exhibited by the simulated neuron with and without the nonlinear feedback. A mathematical method for linearly approximating nonlinear behavior is presented. This method is known as the "describing function technique," and its application to the analysis of neuronal behavior is described, as well as the technique's application to the synthesis of simulation networks.
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