Prescription of rhythmic patterns for legged locomotion

被引:0
|
作者
Zhijun Yang
Daqiang Zhang
Marlon V. Rocha
Priscila M. V. Lima
Mehmet Karamanoglu
Felipe M. G. França
机构
[1] Middlesex University,School of Science and Technology
[2] Tongji University,School of Software
[3] Federal University of Rio de Janeiro,Systems Engineering and Computer Science Program
[4] Federal University of Rio de Janeiro,Tércio Pacitti Institute
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关键词
Central pattern generator; Oscillatory building blocks; Legged locomotion; Parallel processing systems;
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学科分类号
摘要
As the engine behind many life phenomena, motor information generated by the central nervous system plays a critical role in the activities of all animals. In this work, a novel, macroscopic and model-independent approach is presented for creating different patterns of coupled neural oscillations observed in biological central pattern generators (CPG) during the control of legged locomotion. Based on a simple distributed state machine, which consists of two nodes sharing pre-defined number of resources, the concept of oscillatory building blocks (OBBs) is summarised for the production of elaborated rhythmic patterns. Various types of OBBs can be designed to construct a motion joint of one degree of freedom with adjustable oscillatory frequencies and duty cycles. An OBB network can thus be potentially built to generate a full range of locomotion patterns of a legged animal with controlled transitions between different rhythmic patterns. It is shown that gait pattern transition can be achieved by simply changing a single parameter of an OBB module. Essentially, this simple mechanism allows for the consolidation of a methodology for the construction of artificial CPG architectures behaving as an asymmetric Hopfield neural network. Moreover, the proposed CPG model introduced here is amenable to analogue and/or digital circuit integration.
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页码:3587 / 3601
页数:14
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