John A. Paulson School of Engineering and Applied Sciences, Harvard University, Cambridge, MA, USA.
Smith College, Northampton, MA, USA.
Nature. 2020 Nov;587(7833):219-224. doi: 10.1038/s41586-020-2892-6. Epub 2020 Nov 11.
Soft machines are a promising design paradigm for human-centric devices and systems required to interact gently with their environment. To enable soft machines to respond intelligently to their surroundings, compliant sensory feedback mechanisms are needed. Specifically, soft alternatives to strain gauges-with high resolution at low strain (less than 5 per cent)-could unlock promising new capabilities in soft systems. However, currently available sensing mechanisms typically possess either high strain sensitivity or high mechanical resilience, but not both. The scarcity of resilient and compliant ultra-sensitive sensing mechanisms has confined their operation to laboratory settings, inhibiting their widespread deployment. Here we present a versatile and compliant transduction mechanism for high-sensitivity strain detection with high mechanical resilience, based on strain-mediated contact in anisotropically resistive structures (SCARS). The mechanism relies upon changes in Ohmic contact between stiff, micro-structured, anisotropically conductive meanders encapsulated by stretchable films. The mechanism achieves high sensitivity, with gauge factors greater than 85,000, while being adaptable for use with high-strength conductors, thus producing sensors resilient to adverse loading conditions. The sensing mechanism also exhibits high linearity, as well as insensitivity to bending and twisting deformations-features that are important for soft device applications. To demonstrate the potential impact of our technology, we construct a sensor-integrated, lightweight, textile-based arm sleeve that can recognize gestures without encumbering the hand. We demonstrate predictive tracking and classification of discrete gestures and continuous hand motions via detection of small muscle movements in the arm. The sleeve demonstration shows the potential of the SCARS technology for the development of unobtrusive, wearable biomechanical feedback systems and human-computer interfaces.
软机器是一种有前途的设计范例,可用于与人相关的设备和系统,这些设备和系统需要与环境轻柔地交互。为了使软机器能够智能地响应其周围环境,需要有顺应性的传感反馈机制。具体来说,需要具有高分辨率(应变小于 5%)的软式替代应变计的应变传感器,这将为软系统解锁有前景的新功能。然而,目前可用的传感机制通常具有高应变灵敏度或高机械弹性,但不能同时具备两者。弹性和顺应性的超灵敏传感机制的稀缺性将其操作限制在实验室环境中,从而抑制了它们的广泛部署。在这里,我们提出了一种基于各向异性电阻结构中的应变介导接触(SCARS)的高灵敏度应变检测的通用顺应性转换机制。该机制依赖于由可拉伸膜封装的刚性微结构各向异性导电曲折之间的欧姆接触变化。该机制实现了高灵敏度,其应变系数大于 85,000,同时还可以适应高强度导体的使用,从而使传感器能够抵抗不利的加载条件。该传感机制还表现出高线性度和对弯曲和扭曲变形的不敏感性,这对于软设备应用很重要。为了展示我们技术的潜在影响,我们构建了一个带有集成传感器的轻型纺织臂套,该臂套可以识别手势而不会妨碍手部运动。我们通过检测手臂中的小肌肉运动,演示了对离散手势和连续手部运动的预测跟踪和分类。该臂套演示展示了 SCARS 技术在开发无干扰、可穿戴生物力学反馈系统和人机界面方面的潜力。