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Predict Afferent Tactile Neural Signal for Artificial Nerve Based on Finite Element Human Hand Model

机译:基于有限元人手模型的人工神经传入触觉神经信号预测

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This paper aims to investigate the biomechanical aspect of human hand tactile perception by using finite element method and build the artificial neural nerve which can be interfaced with human afferent nerve. A subject-specific digital human hand finite element model (FE-DHHM) was developed based on CT and MR images. The geometries of phalanges, carpal bones, wrist bones, ligaments, tendons, subcutaneous tissue, epidermis and dermis were all included. The material properties were derived from in-vivo and in-vitro experiment results which are available in the literature, the boundary and loading conditions which were kinematic motion data and muscle forces, were captured based on the specific subject. This FE-DHHM was validated against in-vivo test results of the same subject based on contact pressure and contact areas. The whole active touch procedure was performed and simulated, the strain energy density near the locations of mechanoreceptors including slowly adapting type 1 (SA-I) and rapidly adapting (RA) were extracted and then used as inputs into the transduction and neural-dynamics (Izhikevivh neuro model) sub-model to predict neural spike or somatosensory information. A prototype of 'artificial nerve' which can produce the action potential signal is presented. Therefore the FE-DHHM presented in this paper can make a detailed and quantitative evaluation into biomechanical and neurophysiological aspects of human hand tactile perception and manipulation. The results obtained in this paper can be applied to design of bionic or neuro-robotic hand in the near future.
机译:本文旨在通过有限元方法研究人手触觉的生物力学方面,并构建可与人传入神经对接的人工神经。基于CT和MR图像,开发了特定对象的数字人手有限元模型(FE-DHHM)。包括趾骨,腕骨,腕骨,韧带,肌腱,皮下组织,表皮和真皮的几何形状。材料特性来自体内和体外实验结果,这些结果可从文献中获得,并根据特定对象捕获了运动运动数据和肌肉力的边界和载荷条件。根据接触压力和接触面积,针对同一受试者的体内测试结果验证了该FE-DHHM。执行并模拟了整个主动触摸过程,提取了机械感受器位置附近的应变能密度,包括缓慢适应的1型(SA-I)和快速适应的(RA),然后用作转导和神经动力学的输入( Izhikevivh神经模型)子模型可预测神经高峰或体感信息。提出了可以产生动作电位信号的“人工神经”原型。因此,本文提出的FE-DHHM可以对人的手触觉感知和操纵的生物力学和神经生理学方面进行详细和定量的评估。本文获得的结果可在不久的将来应用于仿生或神经机器人手的设计。

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