LEARNING
A new analog control circuit design for hexapod using cellular neural network
K. Maneesilp, B. Purahoug, Pitikhate Sooraksa
- Year
- 2005
- Citations
- 2
Abstract
This paper presents a new design of cellular neural network for controlling hexapod robot movement on forward motion. It shows a set of new state equations which higher propagation than the original one. These new equations reduce number of CNN pattern generation cells from 12 to 6 cells. As a result, this provides a new technique for designing CNN analog control circuits which can be reduced circuit components and simplified the system architectures.
Keywords
HexapodComputer scienceCellular neural networkArtificial neural networkSet (abstract data type)State (computer science)Electronic circuitBiological neural networkControl engineeringControl (management)
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