Map** and Navigation for Indoor Robot Using Multiple Sensor Under ROS Framework

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Enabling Industry 4.0 through Advances in Mechatronics

Part of the book series: Lecture Notes in Electrical Engineering ((LNEE,volume 900))

Abstract

A few criteria needed to be met in order to develop a mobile robot map** system: wireless control of the mobile robot and obstacle detection. In this research, a Robot Operating System (ROS) is developed as the framework for the mobile robot control system. The laser sable toner and Kinect camera serve as tools for detecting obstacles in the mobile robot's environment. The Hector map** package is used to create a 2D/3D map based on the object detected by the laser sable toner. The Hector package's parameters are investigated in order to determine the best map layout quality. Based on the experimental results, the first step is to develop a Wi-Fi network with the ROS framework for wireless sensor data collection and command execution. Second, the use of hector map** allows for the creation of 2D/3D maps with minimal error. The development of a mobile robot control system allows for the execution of map** missions and exploration of unknown environments without putting human lives at risk.

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Correspondence to Gigih Priyandoko .

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Priyandoko, G., Achmad, M.S.H. (2022). Map** and Navigation for Indoor Robot Using Multiple Sensor Under ROS Framework. In: Khairuddin, I.M., et al. Enabling Industry 4.0 through Advances in Mechatronics. Lecture Notes in Electrical Engineering, vol 900. Springer, Singapore. https://doi.org/10.1007/978-981-19-2095-0_1

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