Development of multi-sensor data fusion technique for the automated Bus Rapid Transport System

Iyer Abhiram Ramgopal, P. V. Manivannan
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引用次数: 2

Abstract

This paper focuses on the development of a multi-sensor data-fusion algorithm, which plays a vital role in vehicle localization using continuous landmarks in an automated Bus Rapid Transport (BRT) System. The model vehicle is instrumented with odometry-based wheel encoders and Infra Red (IR) distance sensors. Vehicle localization is done using an Extended Kalman Filter (EKF), which fuses data from these sensors. The path error is corrected discretely by using hall-effect sensors and magnets. The system has been modeled and simulated in MATLAB for straight line and curved paths to test the efficacy of the algorithm. Finally, the implementation of the sensor system has been done on a laboratory scale model integrated with the sensors to verify the integrity of the system. Tests were performed to calculate the error in detection of the actual co-ordinates, as well as to test out the control system being developed.
快速公交自动化系统中多传感器数据融合技术的研究
本文重点研究了一种多传感器数据融合算法,该算法在自动快速公交系统中使用连续地标进行车辆定位中起着至关重要的作用。该模型车辆配备了基于里程计的车轮编码器和红外(IR)距离传感器。车辆定位使用扩展卡尔曼滤波器(EKF)完成,该滤波器融合了来自这些传感器的数据。利用霍尔效应传感器和磁体对路径误差进行离散校正。在MATLAB中对系统进行了直线路径和曲线路径的建模和仿真,验证了算法的有效性。最后,在集成了传感器的实验室模型上对传感器系统进行了实现,以验证系统的完整性。测试是为了计算实际坐标检测的误差,以及测试正在开发的控制系统。
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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