Design and Implementation of Sensor Systems for Localization of the Autonomous Robot in a Building Area

Moch I. Riansyah, A. Farouq, Putu Duta, H. Putra
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Abstract

One of the popular studies recently is about social robots that have been implemented in several public areas such as offices. The  robot is an employee or worker assistant robot in the Telkom Surabaya Institute of Technology building to help carry out the work of delivering packages to the destination according to the tasks given. The problem that often occurs is an error in the robot's localization system causing the robot's movement to the target point to experience a position error. This research contributes to the comparative evaluation of 2 localization methods on mobile robots, namely the first is the use of a rotary encoder sensor and the second is the use of sensor fusion based on the extended Kalman filter implemented on the robot prototype. This study aims to develop a sensor system that is adapted to the design of the robot and the environment in which the robot is tested and to find out the comparison of the two methods. The use of extended Kalman filter-based sensor fusion can provide more accurate results in robot localization, especially when moving on complex paths. Sensor fusion enables the combination of several sensors such as rotary encoders and IMU (Inertial Measurement Unit) sensors to provide more complete and accurate information about the position and orientation of the robot. In this study, sensor fusion successfully reduced the localization error of the  robot to 0.63 m when moving straight and 0.29 m when moving on a complex path, compared to the use of a single sensor which resulted in a larger error of 0.89 m. Based on the study that has been conducted, it can be considered as a potential solution in the development of other social robots to improve the accuracy and performance of the robots when performing certain tasks in the future.
楼宇区域自主机器人定位传感器系统的设计与实现
最近流行的一项研究是关于社交机器人的,这些机器人已经在办公室等几个公共区域实现。该机器人是Telkom Surabaya理工学院大楼中的一个员工或工人助理机器人,根据给定的任务帮助执行将包裹运送到目的地的工作。经常发生的问题是机器人定位系统中的错误,导致机器人向目标点的移动经历位置错误。本研究有助于对移动机器人上的两种定位方法进行比较评估,即第一种是使用旋转编码器传感器,第二种是使用基于在机器人原型上实现的扩展卡尔曼滤波器的传感器融合。本研究旨在开发一种适合机器人设计和机器人测试环境的传感器系统,并找出两种方法的比较。使用基于扩展卡尔曼滤波器的传感器融合可以在机器人定位中提供更准确的结果,尤其是在复杂路径上移动时。传感器融合使旋转编码器和IMU(惯性测量单元)传感器等多个传感器能够组合在一起,以提供有关机器人位置和方向的更完整和准确的信息。在这项研究中,与使用单个传感器相比,传感器融合成功地将机器人的定位误差降低到0.63m,在复杂路径上移动时降低到0.29m。基于已经进行的研究,它可以被认为是开发其他社交机器人的一个潜在解决方案,以提高机器人在未来执行某些任务时的准确性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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