Towards the autonomous navigation of intelligent robots for risky interventions Janusz Bedkowski, Grzegorz Kowalski, Zbigniew Borkowicz, Andrzej Masłowski.

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Towards the autonomous navigation of intelligent robots for risky interventions Janusz Bedkowski, Grzegorz Kowalski, Zbigniew Borkowicz, Andrzej Masłowski

Autonomous mobile robot ATRVJr

Control of the PIAP red indoor robot Damage management Adaptability Working with random and the noisy information Parallel processing with low level energy consumption

Damage management implementation of robust algorithm duplication of the functionalities Behavior based obstacle avoidance algorithm is based on the fuzzy sets theories

SLAM based on odometry

SLAM based on LMS SICK matchscan

Adaptability Mobile robot motion is determined by the behavior based algorithm fuzzy ARTMAP Fuzzy sets are used to code the information from ultrasonic sensors The robot path of motion without collision should be as long as possible at the maximum speed

Working with random and the noisy information using intelligence computing applied in visual processing (noise removal operation, operations of mathematical morphology – dilation, erosion ) building knowledge of the environment (fuzzyARTMAP neural network)

Parallel processing with low level energy consumption The parallel layer architecture is taken under the consideration for robot control Using CORBA mechanism as framework of communication

Conclusion The intelligent control system is proposed Robot is able to avoid obstacles, follow along the wall, follow the path, self localize, reconstruct the local map, reconfigure functionalities. Obtained the robot Inspector position on the map build by robot ATRV-Jr