基于测量的故障检测方法在机器人群监测中的应用

Belkacem Khaldi, F. Harrou, Ying Sun, Cherif Foudil
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引用次数: 3

摘要

蜂群机器人需要持续监控,以检测异常事件并维持正常运行。实际上,具有一个或多个故障机器人的群体机器人导致符合目标要求的性能下降。提出了一种基于数据驱动的故障检测方法。该方法结合了主成分分析(PCA)模型的灵活性和指数加权移动平均控制图对早期变化的较高敏感性。我们通过从ARGoS模拟器收集的模拟数据说明,与使用传统的基于pca的方法相比,使用所提出的方法可以显著改善故障检测。
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A measurement-based fault detection approach applied to monitor robots swarm
Swarm robotics requires continuous monitoring to detect abnormal events and to sustain normal operations. Indeed, swarm robotics with one or more faulty robots leads to degradation of performances complying with the target requirements. This paper present an innovative data-driven fault detection method for monitoring robots swarm. The method combines the flexibility of principal component analysis (PCA) models and the greater sensitivity of the exponentially-weighted moving average control chart to incipient changes. We illustrate through simulated data collected from the ARGoS simulator that a significant improvement in fault detection can be obtained by using the proposed methods as compared to the use of the conventional PCA-based methods.
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