Controlling fast spring-legged locomotion with artificial neural networks

被引:2
|
作者
K. D. Maier
V. Glauche
C. Beckstein
R. Blickhan
机构
[1] Friedrich-Schiller-University Jena,
[2] Institute of Sports Science,undefined
[3] Biomechanics Group,undefined
[4] D-07740 Jena,undefined
[5] Germany Tel.: +49-3641-9-45713,undefined
[6] fax: +49-3641-9-45702,undefined
[7] E-mail: k.maier@ieee.org,undefined
[8] Friedrich-Schiller-University Jena,undefined
[9] Institute of Computer Science,undefined
[10] Artificial Intelligence Group,undefined
[11] D-07740 Jena,undefined
[12] Germany,undefined
关键词
Key words Neural networks, Fast locomotion, Movement control;
D O I
10.1007/s005000000041
中图分类号
学科分类号
摘要
Controlling the model of an one-legged robot is investigated. The model consists merely of a mass less spring attached to a point mass. The motion of this system is characterised by repeated changes between ground contact and flight phases. It can be kept in motion by active control only. Robots that are suited for fast legged locomotion require different hardware layouts and control approaches in contrast to slow moving ones. The spring mass system is a simple model that describes this principle movement of a spring-legged robot. Multi-Layer-Perceptrons (MLPs), Radial Basis Functions (RBFs) and Self-Organising Motoric Maps (SOMMs) were used to implement neurocontrollers for such a movement system. They all prove to be suitable for control of the movement. This is also shown by an experiment where the environment of the spring-mass system is changed from even to uneven ground. The neurocontroller is performing well with this additional complexity without being trained for it.
引用
收藏
页码:157 / 164
页数:7
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