State Key Laboratory of Fluid Power and Mechatronic Systems, School of Mechanical Engineering, Zhejiang University, Hangzhou, 310027, China.
Zhejiang Key Laboratory of Intelligent Operation and Maintenance Robot, Hangzhou, 310000, China.
Adv Sci (Weinh). 2023 Nov;10(32):e2303949. doi: 10.1002/advs.202303949. Epub 2023 Sep 22.
Skin-like flexible sensors play vital roles in healthcare and human-machine interactions. However, general goals focus on pursuing intrinsic static and dynamic performance of skin-like sensors themselves accompanied with diverse trial-and-error attempts. Such a forward strategy almost isolates the design of sensors from resulting applications. Here, a machine learning (ML)-guided design of flexible tactile sensor system is reported, enabling a high classification accuracy (≈99.58%) of tactile perception in six dynamic touch modalities. Different from the intuition-driven sensor design, such ML-guided performance optimization is realized by introducing a support vector machine-based ML algorithm along with specific statistical criteria for fabrication parameters selection to excavate features deeply concealed in raw sensing data. This inverse design merges the statistical learning criteria into the design phase of sensing hardware, bridging the gap between the device structures and algorithms. Using the optimized tactile sensor, the high-quality recognizable signals in handwriting applications are obtained. Besides, with the additional data processing, a robot hand assembled with the sensor is able to complete real-time touch-decoding of an 11-digit braille phone number with high accuracy.
皮肤般柔韧的传感器在医疗保健和人机交互中发挥着重要作用。然而,一般的目标集中在追求自身的内在静态和动态性能,同时伴随着各种反复试验。这种前瞻性策略几乎将传感器的设计与最终应用隔离开来。在这里,我们报告了一种机器学习(ML)指导的柔性触觉传感器系统设计,能够实现六种动态触觉模式下触觉感知的高分类精度(≈99.58%)。与直觉驱动的传感器设计不同,这种基于支持向量机的 ML 算法的性能优化是通过引入特定的统计标准来选择制造参数,以从原始传感数据中挖掘出深度隐藏的特征来实现的。这种逆向设计将统计学习标准纳入到传感硬件的设计阶段,弥合了设备结构和算法之间的差距。使用优化后的触觉传感器,在手写应用中获得了高质量的可识别信号。此外,通过额外的数据处理,装配有该传感器的机器人手能够以高精度实时解码 11 位盲文电话号码。