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Feedforward Neural Network for Force Coding of an MRI-Compatible Tactile Sensor Array Based on Fiber Bragg Grating

机译:基于光纤布拉格光栅的MRI兼容触觉传感器阵列力编码的前馈神经网络

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This work shows the development and characterization of a fiber optic tactile sensor based on Fiber Bragg Grating (FBG) technology. The sensor is a 3×3 array of FBGs encapsulated in a PDMS compliant polymer. The strain experienced by each FBG is transduced into a Bragg wavelength shift and the inverse characteristics of the sensor were computed by means of a feedforward neural network. A 21 mN RMSE error was achieved in estimating the force over the 8 N experimented load range while including all probing sites in the neural network training procedure, whereas the median force RMSE was 199 mN across the 200 instances of a Monte Carlo randomized selection of experimental sessions to evaluate the calibration under generalized probing conditions. The static metrological properties and the possibility to fabricate sensors with relatively high spatial resolution make the proposed design attractive for the sensorization of robotic hands. Furthermore, the proved MRI-compatibility of the sensor opens other application scenarios, such as the possibility to employ the array for force measurement during functional MRI-measured brain activation.
机译:这项工作展示了基于光纤布拉格光栅(FBG)技术的光纤触觉传感器的开发和特性。传感器是3×3的FBG阵列,封装在PDMS兼容聚合物中。每个FBG所经历的应变被转换为布拉格波长偏移,并且借助于前馈神经网络来计算传感器的逆特性。在估算8 N实验载荷范围内的力时(包括神经网络训练过程中的所有探测部位),获得了21 mN RMSE误差,而在蒙特卡洛随机选择的200个实例中,中位力RMSE为199 mN会议,以评估广义探测条件下的校准。静态计量特性以及制造具有相对较高空间分辨率的传感器的可能性使所提出的设计对机械手的传感具有吸引力。此外,传感器的MRI兼容性证明可打开其他应用场景,例如在功能性MRI测量的大脑激活过程中采用阵列进行力测量的可能性。

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