New skill learning paradigm using various kinds of neurons

T. Eom, Sung-Woo Kim, Changkyu Choi, Jujang Lee
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引用次数: 6

Abstract

Modeled from human neurons, various types of artificial neurons are developed and applied to control algorithm. In this paper, the weights and structure of feedforward neural network controller are updated using new skill learning paradigm which consists of supervisory controller, chaotic neuron filter and associative memory. The pattern of system nonlinearity along the desired path is extracted while supervisory controller guarantees stability in the sense of the boundedness of tracking error. Next the pattern is divided into small segments and encoded to bipolar codes depending on the existence of critical points. Comparing the encoded pattern with pre-stored neural parameters and pattern pairs through associative memory, the most similar one is obtained. Also, chaotic neuron filter is used to add perturbation to neural parameters when the training of feedforward neural network is not successful with the pre-stored parameters. Finally the memory is updated with new successful parameters and pattern pairs. Simulation is performed for simple two-link robot in case of the slight modification of desired trajectory.
利用多种神经元的新技能学习范式
以人类神经元为模型,开发了各种类型的人工神经元,并应用于控制算法。本文采用由监督控制器、混沌神经元滤波器和联想记忆组成的新的技能学习范式,更新了前馈神经网络控制器的权值和结构。系统沿期望路径的非线性模式被提取出来,同时监控控制器在跟踪误差有界的意义上保证系统的稳定性。接下来,该模式被分成小段,并根据临界点的存在编码为双极码。将编码模式与预先存储的神经参数和通过联想记忆的模式对进行比较,得到最相似的模式。当前馈神经网络用预先存储的参数训练不成功时,采用混沌神经元滤波器对神经网络参数进行扰动。最后用新的成功参数和模式对更新内存。对简单的两连杆机器人在期望轨迹略有改变的情况下进行了仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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