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Combining multi-localization methods for fault diagnosis in autonomous mobile robot systems

机译:组合多定位方法在自主移动机器人系统中的故障诊断

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Autonomous mobile robots have been widely employed for many applications in indoor and outdoor environments. Most of these robots have to operate in environments where human intervention is expensive, slow, unreliable or even impossible. It is therefore essential for robots to monitor their behavior to diagnose and address faults before they result in catastrophic failures. In this paper we introduce a new approach to diagnose faults of autonomous mobile robot systems. The proposed methodology firstly computes the poses of the robot by using the onboard stereo camera, the wheels' encoders and the commanded velocities, respectively. Then, the residuals between each pair of the localization methods are used to evaluate the occurrence of faults. Experimental tests, in ideal fault free cases, have been carried out to find a reference threshold for each residual. A bool value is assigned to each residual by comparing it with the respective threshold. The bool values of all residuals are then combined and used to detect and isolate a fault in the robotic system. The pose of ground truth, obtained from a motion capture system, is used here to evaluate the errors of the poses obtained from three localization methods and validate their accuracy. Our approach can potentially detect and identify different faults of the robot systems. Experimental tests have shown its effectiveness in determine fault on the robot's wheel.
机译:在室内和室外环境中,自动移动机器人已被广泛用于许多应用。这些机器人中的大多数必须在人类干预昂贵,缓慢,不可靠甚至不可能的环境中运行。因此,机器人必须监控其行为以在导致灾难性失败之前诊断和解决故障。在本文中,我们介绍了一种诊断自主移动机器人系统故障的新方法。所提出的方法首先通过使用船上立体声相机,车轮编码器和命令速度来计算机器人的姿势。然后,每对本地化方法之间的残差用于评估故障的发生。已经进行了实验测试,在理想的故障情况下,已经进行了为每个残差找到参考阈值。通过将其与各自的阈值进行比较,将Bool值分配给每个残差。然后将所有残留物的BOOL值组合并用于检测和隔离机器人系统中的故障。从运动捕获系统获得的地面真理的姿势在此处用于评估从三种本地化方法获得的姿势的误差并验证其准确性。我们的方法可能会检测和识别机器人系统的不同故障。实验测试已经显示了其在机器人车轮上确定故障的有效性。

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