LEARNING
Neuro-Evolution of Mobile Robot Controller
Ivan Sekaj, Ladislav Cíferský, Milan Hvozdík
- Year
- 2019
- Citations
- 6
- Access
- Open access
Abstract
We present a neuro-evolution design for control of a mobile robot in 2D simulation environment. The mobile robot is moving in unknown environment with obstacles from the start position to the goal position. The trajectory of the robot is controlled by a neural network – based controller which inputs are information from several laser beam sensors. The learning of the neural network controller is based on an evolutionary approach, which is provided by genetic algorithm.
Keywords
Mobile robotController (irrigation)Computer sciencePosition (finance)Artificial neural networkTrajectoryRobot controlRobotEvolutionary roboticsArtificial intelligence
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