TY - BOOK AU - Olaf Wandel PY - 2001 CY - Hamburg, Deutschland PB - Diplom.de SN - 9783832441418 TI - Robot Control using an Artificial Neural Network T2 - An Individual Undergraduate Project Report DO - 10.3239/9783832441418 UR - https://m.diplom.de/document/219765 N2 - Inhaltsangabe:Abstract: The aim of the project was to control three joints of an industrial robot in terms of its position, velocity and acceleration. The work considered the necessary hardware, principles of neural networks and controlling techniques. The hardware comprised of a robot with three DC-motors and three optical position encoders, a personal computer with a D/A card for voltage output to the robot and two D/D cards. One D/D card for receiving values from the optical encoders and one for timing. The basics of artificial neural network type perceptrons were described. The special features bias, output feedback, momentum term, adjustment of momentum factor and adjustment of learning rate for this artificial neural network type were considered. An introduction to learning and control structures using artificial neural networks were given. These were controller copying, direct modelling, direct inverse modelling, control with a model and an inverse model, forward and inverse modelling, control action feedback error learning, feedback error learning, learning and control using the plant’s Jacobian. The conversion of two learning and control structures, direct inverse modelling and control action feedback error learning, was implemented in software using „MS QuickBASIC 4.5“. One joint was controlled with a direct inverse model. One joint and all joints together were controlled with control action feedback error learning. The results of experiments with these learning and control structures were documented. Inhaltsverzeichnis:Table of Contents: 1.Introduction8 2.The hardware9 2.1The robot9 2.2The computer and the software11 2.3The PCL-726 D/A card11 2.4The D/D card11 2.5The PCL-812 D/D card12 2.6The G64 rack12 3.Neural networks13 3.1The neuron13 3.2Conversion of neural networks14 3.3Learning principles of neural networks17 3.4Special modifications to the neural network used19 3.5Learning capacity22 4.Teaching and control techniques23 5.The software28 5.1The teaching and control program28 5.1.1The direct inverse modelling and trajectory estimation program29 5.1.2The control action feedback error learning program30 6.Experiments with learning and control structures31 6.1Direct inverse modelling31 6.1.1Direct inverse modelling of the waist32 6.1.2Trajectory estimation for the waist34 6.2Control action feedback error learning (CAFEL)36 6.2.1Control action feedback error learning of the waist37 6.2.2Control action […] KW - artificial, neural, network LA - Englisch ER -