首页 /研究 /Tactile perception in hydrogel-based robotic skins using data-driven electrical impedance tomography
PERCEPTION

Tactile perception in hydrogel-based robotic skins using data-driven electrical impedance tomography

David Hardman, Thomas George Thuruthel, Fumiya Iida

发表年份
2023
引用次数
25

摘要

Combining functional soft materials with electrical impedance tomography is a promising method for developing continuum sensorized soft robotic skins with high resolutions. However, reconstructing the tactile stimuli from surface electrode measurements is a challenging ill-posed modelling problem, with FEM and analytic models facing a reality gap. To counter this, we propose and demonstrate a model-free superposition method which uses small amounts of real-world data to develop deformation maps of a soft robotic skin made from a self-healing ionically conductive hydrogel, the properties of which are affected by temperature, humidity, and damage. We demonstrate how this method outperforms a traditional neural network for small datasets, obtaining an average resolution of 12.1 mm over a 170 mm circular skin. Additionally, we explore how this resolution varies over a series of 15,000 consecutive presses, during which damages are continuously propagated. Finally, we demonstrate applications for functional robotic skins: damage detection/localization, environmental monitoring, and multi-touch recognition - all using the same sensing material.

关键词

Electrical impedance tomographySoft roboticsTactile sensorSuperposition principleComputer scienceElectrical impedanceFinite element methodArtificial intelligenceMaterials scienceComputer vision

相关论文

查看 PERCEPTION 分类全部论文