Fault Diagnosis and Reconfiguration for Mobile Robot Localization Based on Multi-Sensors Data Fusion

Linda Hachemi, M. Guiatni, A. Nemra
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引用次数: 2

Abstract

In this paper, we propose a new approach for fault tolerant localization using multi-sensors data fusion for a unicycle-type mobile robot. The main contribution of this paper is a new architecture proposal for fault diagnosis and reconfiguration for mobile robot localization using multi-sensors data fusion and the duplication/comparison approach. Four different sensors usually embedded in mobile robots (Camera, IMU, GPS, and Odometer) are considered, while six different sensors couples combinations are used for sensor data fusion and the duplication of the localization and estimation system. In order to reach this aim, three different filters (EKF, SVSF, and ASVSF) have been proposed and compared. For each selected filter, a comparison mechanism is then introduced to compute different residuals by comparing the estimated robot position for each sensor couples separately. Faults are then detected using the structural residual diagnosis method. This approach assumes the occurrence of a single fault at a given time. A reconfiguration mechanism is then applied by selected the healthy sensors couple and their corresponding fusion filter. Several scenarios are considered for navigation-based fault tolerant localization approaches. Simulation results are presented to illustrate the advantage and performance of the proposed architecture. The proposed solutions are implemented and validated successfully using the V-REP simulator.
基于多传感器数据融合的移动机器人定位故障诊断与重构
本文提出了一种基于多传感器数据融合的单轮移动机器人容错定位新方法。本文的主要贡献是提出了一种新的基于多传感器数据融合和复制/比较方法的移动机器人定位故障诊断和重构体系结构。考虑了移动机器人中常用的四种传感器(Camera, IMU, GPS和Odometer),并使用六种不同的传感器耦合组合进行传感器数据融合和定位与估计系统的复制。为了达到这一目标,提出了三种不同的滤波器(EKF、SVSF和ASVSF)并进行了比较。对于每个选定的滤波器,然后引入比较机制,通过分别比较每个传感器对的估计机器人位置来计算不同的残差。然后使用结构残差诊断方法检测故障。这种方法假定在给定时间只发生一个故障。然后通过选择健康的传感器对及其相应的融合滤波器应用重构机制。考虑了基于导航的容错定位方法的几种场景。仿真结果说明了该结构的优点和性能。利用V-REP仿真器成功地实现和验证了所提出的解决方案。
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