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引用次数: 5

摘要

几岁的孩子举起和操纵不熟悉的物体比现在的机器人更灵巧。因此,人工智能社区对寻找神经生理学研究的灵感来设计更好的机器人模型产生了兴趣。物体表面材料摩擦系数的估计是人体灵巧操作中的一个重要信息。人类根据触觉机械感受器的反应来估计摩擦系数。在本文中,我们提出了一种使用人工神经网络来估计摩擦系数的方法,该神经网络接收模拟的人类传入响应作为输入。该方法受到人类灵巧操纵物体时传入反应的神经生理学研究的强烈启发。采用有限元方法对手指和物体进行了建模,并进行了仿真实验。据我们所知,这是第一次将模拟的人类传入信号与有限元分析和人工神经网络相结合,来估计摩擦系数。
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A Bio-inspired Method for Friction Estimation
Few years old children lift and manipulate unfamiliar objects more dexterously than todaypsilas robots. Therefore, it has arisen an interest at the artificial intelligence community to look for inspiration on neurophysiological studies to design better models for the robots. The estimation of the friction coefficient of the objectpsilas material is a crucial information in a human dexterous manipulation. Humans estimate the friction coefficient based on the responses of their tactile mechanoreceptors. In this paper, we propose a method to estimate the friction coefficient using artificial neural networks that receive as input simulated human afferent responses. This method is strongly inspired on neurophysiological studies of the afferent responses during the human dexterous manipulation of objects. Finite element analysis was used to model a finger and an object, and simulated experiments using the proposed method were done. To the best of our knowledge, this is the first time that simulated human afferent signals are combined with finite element analysis and artificial neural networks, to estimate the friction coefficient.
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