Oldfrey Ben, Jackson Richard, Smitham Peter, Miodownik Mark
CoMPLEX, University College London, London, United Kingdom.
Institute of Making, University College London, London, United Kingdom.
Front Robot AI. 2019 May 8;6:27. doi: 10.3389/frobt.2019.00027. eCollection 2019.
There is a growing need for flexible stretch sensors to monitor real time stress and strain in wearable technology. However, developing stretch sensors with linear responses is difficult due to viscoelastic and strain rate dependent effects. Instead of trying to engineer the perfect linear sensor we take a deep learning approach which can cope with non-linearity and yet still deliver reliable results. We present a general method for calibrating highly hysteretic resistive stretch sensors. We show results for textile and elastomeric stretch sensors however we believe the method is directly applicable to any physical choice of sensor material and fabrication, and easily adaptable to other sensing methods, such as those based on capacitance. Our algorithm does not require any a priori knowledge of the physical attributes or geometry of the sensor to be calibrated, which is a key advantage as stretchable sensors are generally applicable to highly complex geometries with integrated electronics requiring bespoke manufacture. The method involves three-stages. The first stage requires a calibration step in which the strain of the sensor material is measured using a webcam while the electrical response is measured via a set of arduino-based electronics. During this data collection stage, the strain is applied manually by pulling the sensor over a range of strains and strain rates corresponding to the realistic in-use strain and strain rates. The correlated data between electrical resistance and measured strain and strain rate are stored. In the second stage the data is passed to a Long Short Term Memory Neural Network (LSTM) which is trained using part of the data set. The ability of the LSTM to predict the strain state given a stream of unseen electrical resistance data is then assessed and the maximum errors established. In the third stage the sensor is removed from the webcam calibration set-up and embedded in the wearable application where the live stream of electrical resistance is the only measure of strain-this corresponds to the proposed use case. Highly accurate stretch topology mapping is achieved for the three commercially available flexible sensor materials tested.
在可穿戴技术中,对能够监测实时应力和应变的柔性拉伸传感器的需求日益增长。然而,由于粘弹性和应变率相关效应,开发具有线性响应的拉伸传感器具有挑战性。我们没有试图设计出完美的线性传感器,而是采用了一种深度学习方法,该方法可以应对非线性问题,同时仍能提供可靠的结果。我们提出了一种校准具有高度滞后性的电阻式拉伸传感器的通用方法。我们展示了纺织和弹性体拉伸传感器的结果,但我们认为该方法可直接应用于任何传感器材料和制造的物理选择,并易于适应其他传感方法,如基于电容的方法。我们的算法不需要对要校准的传感器的物理属性或几何形状有任何先验知识,这是一个关键优势,因为可拉伸传感器通常适用于具有集成电子设备且需要定制制造的高度复杂几何形状。该方法包括三个阶段。第一阶段需要一个校准步骤,其中使用网络摄像头测量传感器材料的应变,同时通过一组基于 Arduino 的电子设备测量电响应。在这个数据收集阶段,通过在一系列与实际使用中的应变和应变率相对应的应变和应变率范围内拉动传感器来手动施加应变。电阻与测量的应变和应变率之间的相关数据被存储。在第二阶段,数据被传递到一个长短期记忆神经网络(LSTM),该网络使用部分数据集进行训练。然后评估 LSTM 根据一系列未见过的电阻数据预测应变状态的能力,并确定最大误差。在第三阶段,将传感器从网络摄像头校准设置中取出并嵌入可穿戴应用中,其中电阻的实时流是应变的唯一测量值——这对应于提议的用例。对于测试的三种市售柔性传感器材料,实现了高度准确的拉伸拓扑映射。