Uncertainty Estimation for Safe Human-Robot Collaboration using Conservation Measures

W.-J. Baek, C. Ledermann, T. Kröger
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引用次数: 3

Abstract

. We present an online and data-driven uncertainty quantification method to enable the development of safe human-robot collaboration applications. Safety and risk assessment of systems are strongly correlated with the accuracy of measurements: Distinctive parameters are often not directly accessible via known models and must therefore be measured. However, measurements generally suffer from uncertainties due to the limited performance of sensors, even unknown environmental disturbances, or humans. In this work, we quantify these measurement uncertainties by making use of conservation measures which are quan-titative, system specific properties that are constant over time, space, or other state space dimensions. The key idea of our method lies in the immediate data evaluation of incoming data during run-time referring to conservation equations. In particular, we estimate violations of a-priori known, domain specific conservation properties and consider them as the consequence of measurement uncertainties. We validate our method on a use case in the context of human-robot collaboration, thereby highlighting the importance of our contribution for the successful development of safe robot systems under real-world conditions, e. g. , in industrial environments. In addition, we show how obtained uncertainty values can be directly mapped on arbitrary safety limits (e.g, ISO 13849) which allows to monitor the compliance with safety standards during run-time.
基于守恒措施的安全人机协作的不确定性估计
。我们提出了一种在线和数据驱动的不确定性量化方法,以实现安全人机协作应用的开发。系统的安全和风险评估与测量的准确性密切相关:不同的参数通常不能通过已知模型直接获得,因此必须进行测量。然而,由于传感器的性能有限,甚至未知的环境干扰或人为因素,测量通常会受到不确定性的影响。在这项工作中,我们通过使用守恒度量来量化这些测量不确定性,守恒度量是随时间、空间或其他状态空间维度恒定的定量系统特定属性。我们的方法的关键思想在于在运行时参考守恒方程对传入数据进行即时数据评估。特别是,我们估计先验已知的特定领域守恒性质的违反,并将其视为测量不确定性的结果。我们在人机协作的用例中验证了我们的方法,从而强调了我们对在现实世界条件下(例如,在工业环境中)成功开发安全机器人系统的贡献的重要性。此外,我们还展示了如何将获得的不确定性值直接映射到任意安全限值(例如ISO 13849)上,从而可以在运行期间监控对安全标准的遵守情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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