紧密耦合多机器人团队任务中故障检测的设计和性能改进

Xingyan Li, L. Parker
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引用次数: 14

摘要

本文介绍了我们目前的工作,以改进我们以前工作的设计和性能:SAFDetection,一种基于传感器分析的故障检测方法,用于监控紧密耦合的多机器人团队任务。我们从三个方面改进了这种先前的方法。首先,我们展示了如何使用主成分分析(PCA)来自动生成少量传感器特征,这些特征应该在正常操作模型的学习过程中使用。其次,我们在SAFDetection中实现了三种不同的传感器数据聚类算法,并比较了它们在物理机器人团队任务上的故障检出率,以确定在学习正常团队任务操作模型的同时,传感器数据聚类的最佳技术。我们提出的第三个改进是将状态转移概率从常数修改为时变变量,以更准确地描述机器人系统的运行。研究结果表明,将PCA特征选择方法与软分类技术和时变过渡概率相结合,可以获得最佳的故障检测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and performance improvements for fault detection in tightly-coupled multi-robot team tasks
This paper presents our current work to improve the design and performance of our previous work: SAFDetection, a sensor analysis based fault detection approach that is used to monitor tightly-coupled multi-robot team tasks. We improve this prior approach in three aspects. First, we show how Principal Components Analysis (PCA) can be used to automatically generate a small number of sensor features that should be used during the learning of the model of normal operation. Second, we implement three different algorithms for clustering sensor data in SAFDetection and compare their fault detection rates on physical robot team tasks, to determine the best technique for clustering sensor data while learning the model of normal team task operation. A third improvement we present is to modify the state transition probability from constant to a time-variant variable to describe the operation of the robot system more accurately. Our results show that a PCA feature selection approach, combined with a soft classification technique and time-varying transition probabilities, yields the best fault detection results.
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