A review: Machine learning for strain sensor-integrated soft robots

Haitao Yang, Wenbo Wu
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引用次数: 3

Abstract

Compliant and soft sensors that detect machinal deformations become prevalent in emerging soft robots for closed-loop feedback control. In contrast to conventional sensing applications, the stretchy body of the soft robot enables programmable actuating behaviors and automated manipulations across a wide strain range, which poses high requirements for the integrated sensors of customized sensor characteristics, high-throughput data processing, and timely decision-making. As various soft robotic sensors (strain, pressure, shear, etc.) meet similar challenges, in this perspective, we choose strain sensor as a representative example and summarize the latest advancement of strain sensor-integrated soft robotic design driven by machine learning techniques, including sensor materials optimization, sensor signal analyses, and in-sensor computing. These machine learning implementations greatly accelerate robot automation, reduce resource consumption, and expand the working scenarios of soft robots. We also discuss the prospects of fusing machine learning and soft sensing technology for creating next-generation intelligent soft robots.
应变传感器集成软机器人的机器学习研究进展
用于检测机器变形的柔性传感器在新兴的软机器人闭环反馈控制中变得普遍。与传统传感应用相比,软机器人的弹性体可以实现可编程的驱动行为和跨大应变范围的自动化操作,这对集成传感器的定制化特性、高通量数据处理和及时决策提出了很高的要求。鉴于各种软机器人传感器(应变、压力、剪切等)都面临着类似的挑战,从这个角度出发,我们以应变传感器为代表,总结了机器学习技术驱动下应变传感器集成软机器人设计的最新进展,包括传感器材料优化、传感器信号分析和传感器内计算。这些机器学习的实现大大加快了机器人自动化,减少了资源消耗,扩展了软机器人的工作场景。我们还讨论了融合机器学习和软传感技术以创建下一代智能软机器人的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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