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A hybrid approach for improving unsupervised fault detection for robotic systems

机译:改善机器人系统无监督故障检测的混合方法

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The use of robots in our daily lives is increasing. As we rely more on robots, thus it becomes more important for us that the robots will continue on with their mission successfully. Unfortunately, these sophisticated, and sometimes very expensive, machines are susceptible to different kinds of faults. It becomes important to apply a Fault Detection (FD) mechanism which is suitable for the domain of robots. Two important requirements of such a mechanism are: high accuracy and low computational-load during operation (online). Supervised learning can potentially produce very accurate FD models, and if the learning takes place offline then the online computational-load can be reduced. Yet, the domain of robots is characterized with the absence of labeled data (e.g., "faulty", "normal") required by supervised approaches, and consequently, unsupervised approaches are being used. In this paper we propose a hybrid approach-an unsupervised approach can label a data set, with a low degree of inaccuracy, and then the labeled data set is used offline by a supervised approach to produce an online FD model. Now, we are faced with a choice-should we use the unsupervised or the hybrid fault detector? Seemingly, there is no way to validate the choice due to the absence of (a priori) labeled data. In this paper we give an insight to why, and a tool to predict when, the hybrid approach is more accurate. In particular, the main impacts of our work are (1) we theoretically analyze the conditions under which the hybrid approach is expected to be more accurate. (2) Our theoretical findings are backed with empirical analysis. We use data sets of three different robotic domains: a high fidelity flight simulator, a laboratory robot, and a commercial Unmanned Arial Vehicle (UAV). (3) We analyze how different unsupervised FD approaches are improved by the hybrid technique and (4) how well this improvement fits our prediction tool. The significance of the hybrid approach and the prediction tool is the potential benefit to expert and intelligent systems in which labeled data is absent or expensive to create. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在我们的日常生活中,机器人的使用正在增加。随着我们越来越依赖于机器人,因此对我们来说,使机器人继续成功完成任务变得越来越重要。不幸的是,这些复杂的,有时非常昂贵的机器易受各种故障的影响。应用适合机器人领域的故障检测(FD)机制变得很重要。这种机制的两个重要要求是:高精度和运行(在线)过程中的低计算量。监督学习可以潜在地产生非常准确的FD模型,如果学习是离线进行的,则可以减少在线计算量。然而,机器人的领域的特征在于没有监督方法所要求的标记数据(例如,“故障”,“正常”),因此,正在使用无监督方法。在本文中,我们提出了一种混合方法-一种无监督方法可以对数据集进行标记,其准确性不高,然后通过监督方法将标记的数据集离线使用以生成在线FD模型。现在,我们面临一个选择-我们应该使用无监督还是混合故障检测器?似乎由于没有(先验)标记数据而无法验证选择。在本文中,我们深入了解了为什么使用混合方法更为​​准确,并且提供了一种预测何时使用的工具。特别是,我们工作的主要影响是(1)我们从理论上分析了混合方法有望更加准确的条件。 (2)我们的理论发现得到了实证分析的支持。我们使用三个不同机器人域的数据集:高保真飞行模拟器,实验室机器人和商用无人飞行器(UAV)。 (3)我们分析了如何通过混合技术改进不同的无监督FD方法,以及(4)这种改进与我们的预测工具的匹配程度。混合方法和预测工具的重要性在于,对于缺少标签数据或创建标签数据昂贵的专家和智能系统,它可能具有潜在的好处。 (C)2017 Elsevier Ltd.保留所有权利。

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