The human gait is a marvel of coordination. All aspects of movement control - from the angle of the knee joints to the momentum of the hip up to the
balance point of the torso - need to be meticulously adjusted.
In addition, the gait is adaptable to different environments. Walking on ice is different from walking on solid ground, walking uphill is different
from downhill.
In their study, publishing in PLoS Computational Biology July 13, 2007, scientists around Florentin WГ¶rgГ¶tter, Bernstein Center for Computational
Neuroscience at the University of GГ¶ttingen, have simulated the neuronal principles that form the basis of this adaptivity in a walking robot.
"RunBot", as it is called, lives up to its name - it holds the world record in speed walking for dynamic machines. Now its inventors have expanded
its repertoire. With an infrared eye it can detect a slope on its path and adjust its gait on the spot. Just as a human, it leans forwards slightly
and uses shorter steps. It can learn this behavior using only a few trials.
The robots ability to abruptly switch from one gait to the other is due to the hierarchical organization of the movement control. In this respect, it
resembles that of a human and can hold as a human model. On the lower hierarchical levels, movement is based on reflexes driven by peripheral sensors.
Control circuits ensure that the joints are not overstretched or that the next step is initiated as soon as the foot touches the ground. Only when the
gait needs to be adapted, higher centers of organization step in - a process triggered by the human brain or, in case of the robot, by its infrared
eye leading on to a simpler neural network. Because of the hierarchical organization adjustment of the gait can be achieved by changing only a few
parameters. Other factors will be automatically tuned through the regular circuits.
At its first attempt to climb a slope, RunBot will fall over backwards, as it has not yet learned to react to its visual input with a change in gait.
But just like children, RunBot learns from its failures, leading to a strengthening of the contact between the eye and the sites of movement control.
Only once these connections are established, step length and body posture are controllable by the visually induced signal.
The steeper the slope, the stronger RunBot will adapt its gait.
"Adaptive, fast walking in a biped robot under neuronal control and learning."
Manoonpong P, Geng T, Kulvicius T, Porr B, WoВЁ rgoВЁ tter F (2007)
PLoS Comput Biol 3(7): e134. doi:10.1371/journal.pcbi.0030134
Click here to view article online
About PLoS Computational Biology
PLoS Computational Biology features works of exceptional significance that further our understanding of living systems at all
scales through the application of computational methods. All works published in PLoS Computational Biology are open access. Everything is immediately
available subject only to the condition that the original authorship and source are properly attributed. Copyright is retained by the authors. The
Public Library of Science uses the Creative Commons Attribution License. ploscompbiol.
About the Public Library of Science
The Public Library of Science (PLoS) is a non-profit organization of scientists and physicians committed to making the world's scientific and medical
literature a freely available public resource.
plos.
Комментариев нет:
Отправить комментарий