A multi-method framework for establishing an angular acceleration reference in sensor calibration and uncertainty quantification.

Maximilian Gießler, Bernd Waltersberger, Thomas Götz, Robert Rockenfeller
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Abstract

Robots are increasingly being used across various sectors, from industry and healthcare to household applications. In practice, a pivotal challenge is the reaction to unexpected external disturbances, whose real-time feedback often relies on (noisy) sensor measurements. Subsequent inverse-dynamics calculations demand noise-amplifying numerical differentiation, leading to impracticable results. Although much effort has been spent on establishing direct measurement approaches, their measurement uncertainty quantification has not or yet insufficiently been tackled in the literature. Here, we propose a multi-method framework to develop an angular acceleration reference and provide evidence that it can serve as a measurement standard to calibrate various kinematic sensors. Within the framework, we use Monte-Carlo simulations to quantify the uncertainty of a direct measurement sensor recently developed by our team; the inertial measurement cluster (IMC). For angular accelerations up to 21 rad/s2, the standard deviation of the IMC was on average only 0.3 rad/s2 (95% CI: [0.28,0.31]  rad/s2), which constitutes a reliable data-sheet record. Further, using least-squares optimization, we show that the deviation of IMC with respect to the reference was not only less on the level of angular acceleration but also on the level of angular velocity and angle, when compared to other direct and indirect measurement methods.

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在传感器标定和不确定度量化中建立角加速度基准的多方法框架。
机器人越来越多地应用于各个领域,从工业和医疗保健到家庭应用。在实践中,一个关键的挑战是对意外外部干扰的反应,这些干扰的实时反馈通常依赖于(有噪声的)传感器测量。随后的反动力学计算需要噪声放大的数值微分,导致不实际的结果。虽然在建立直接测量方法上已经花费了大量的努力,但它们的测量不确定度量化在文献中还没有或尚未得到充分的解决。在这里,我们提出了一个多方法框架来开发角加速度参考,并提供证据,证明它可以作为校准各种运动传感器的测量标准。在该框架内,我们使用蒙特卡罗模拟来量化我们团队最近开发的直接测量传感器的不确定性;惯性测量集群(IMC)。对于高达21 rad/s2的角加速度,IMC的标准差平均仅为0.3 rad/s2 (95% CI: [0.28,0.31] rad/s2),这构成了可靠的数据表记录。此外,通过最小二乘优化,我们发现与其他直接和间接测量方法相比,IMC相对于参考的偏差不仅在角加速度水平上更小,而且在角速度和角度水平上也更小。
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