
Large‐Scale Surface Shape Sensing with Learning‐Based Computational Mechanics
Author(s) -
Wang Kui,
Mak ChiHin,
Ho Justin D. L.,
Liu Zhiyu,
Sze KamYim,
Wong Kenneth K. Y.,
Althoefer Kaspar,
Liu Yunhui,
Fukuda Toshio,
Kwok Ka-Wai
Publication year - 2021
Publication title -
advanced intelligent systems
Language(s) - English
Resource type - Journals
ISSN - 2640-4567
DOI - 10.1002/aisy.202100089
Subject(s) - computer science , process (computing) , surface (topology) , artificial intelligence , robot , scale (ratio) , machine learning , physics , geometry , mathematics , quantum mechanics , operating system
Proprioception, the ability to perceive one's own configuration and movement in space, enables organisms to safely and accurately interact with their environment and each other. The underlying sensory nerves that make this possible are highly dense and use sophisticated communication pathways to propagate signals from nerves in muscle, skin, and joints to the central nervous system wherein the organism can process and react to stimuli. In a step forward to realize robots with such perceptive capability, a flexible sensor framework that incorporates a novel modeling strategy, taking advantage of computational mechanics and machine learning, is proposed. The sensor framework on a large flexible sensor that transforms sparsely distributed strains into continuous surface is implemented. Finite element (FE) analysis is utilized to determine design parameters, while an FE model is built to enrich the morphological data used in the supervised training to achieve continuous surface reconstruction. A mapping between the local strain data and the enriched surface data is subsequently trained using ensemble learning. This hybrid approach enables real time, robust, and high‐order surface reconstruction. The sensing performance is evaluated in terms of accuracy, repeatability, and feasibility with numerous scenarios, which has not been demonstrated on such a large‐scale sensor before.