Controlling a Small Mobile 3-Pi Robot Movement in a Maze Via the Neural Network Using Back-Propagation Learning Method

Dušan Horváth, Z. Červeňanská
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Abstract

Abstract The contribution is focused on technical implementation of controlling a small mobile 3Pi robot in a maze along a predefined guide line where the control of the acquired direction of the robot’s movement was provided by a neural network. The weights (memory) of the neuron were calculated using a feedforward neural network learning via the Back-propagation method. This article fastens on the paper by the title “Movement control of a small mobile 3-pi robot in a maze using artificial neural network”, where Hebbian learning was used for a single-layer neural network. The reflectance infra-red sensors performed as input sensors. The result of this research is the evaluation based on the experiments that served to compare different training sets with the learning methods when moving a mobile robot in a maze.
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基于反向传播学习方法的神经网络控制小型移动3-Pi机器人在迷宫中的运动
摘要:本文研究了一种小型移动3Pi机器人在迷宫中的控制技术,该机器人沿着预先定义的路线运动,并通过神经网络控制机器人的运动方向。神经元的权值(内存)是通过反向传播方法的前馈神经网络学习来计算的。本文以“利用人工神经网络控制一个小型移动3-pi机器人在迷宫中的运动”为标题,其中单层神经网络采用了Hebbian学习。反射红外传感器作为输入传感器。本研究的结果是基于实验的评估,用于比较不同的训练集和学习方法,当移动机器人在迷宫中移动时。
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