首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >In vivo and in vitro comparative assessment of the log-linearized Hunt-Crossley model for impact-contact modeling in physical human-robot interactions
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In vivo and in vitro comparative assessment of the log-linearized Hunt-Crossley model for impact-contact modeling in physical human-robot interactions

机译:对数线性化Hunt-Crossley模型的体内和体外比较评估,用于物理人机交互中的碰撞接触建模

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摘要

In physical human-robot interactions, making the robot perceive in real time the mechanical contact impedance is critical for interactions safety, robot control and haptic rendering for robot teleoperation and can be achieved through online parametric model identification. Probing the viscoelastic properties of tissues is also a medical concern. For soft viscoelastic biological tissues, the Hunt-Crossley model is a contact force model computationally inexpensive while being accurate. As this model is non-linear, a log linear approximation has been proposed to achieve a fast and real-time identification using a recursive least squares approach. In this article, we want to regard the log-linearized expression of the Hunt-Crossley model no more as an approximation, but rather as a valuable empirical mechanical model of soft biological tissues. We show through experimental data fit and sophisticated statistical analysis that the log-linearized Hunt-Crossley model performs always closely to the Hunt-Crossley model and is even often slightly better. The experimental conditions investigated are related to impact and contact interactions, relevant in the context of Cobotics.
机译:在物理人机交互中,使机器人实时感知机械接触阻抗对于交互安全性,机器人控制和机器人遥操作的触觉渲染至关重要,可以通过在线参数模型识别来实现。探测组织的粘弹性质也是医学上的关注。对于柔软的粘弹性生物组织,Hunt-Crossley模型是一种接触力模型,计算精确,但计算成本低。由于该模型是非线性的,因此提出了对数线性逼近以使用递归最小二乘法实现快速实时识别。在本文中,我们希望不再将Hunt-Crossley模型的对数线性化表示视为近似值,而是将其视为有价值的软生物组织的经验力学模型。我们通过实验数据拟合和复杂的统计分析表明,对数线性化的Hunt-Crossley模型的性能始终与Hunt-Crossley模型非常接近,甚至常常要好一些。研究的实验条件与冲击和接触相互作用有关,与Cobotics有关。

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