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Computational Neuroscience Applied in Surface Roughness Fiber Optic Sensor

机译:计算神经科学在表面粗糙度光纤传感器中的应用

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摘要

Computational neuroscience has been widely used in fiber optic sensor signal output. This paper introduces a method for processing the Surface Roughness Fiber Optic Sensor output signals with a radial basis function neural network. The output signal of the sensor and the laser intensity signal as the light source are added to the input of the RBF neural network at the same time, and with the ability of the RBF neural network to approach the non-linear function with arbitrary precision, to achieve the nonlinear compensation of the sensor and reduction of the effect of changes in laser output light intensity at the same time. The Surface Roughness Fiber Optic Sensor adopting this method has low requirements on the stability of the output power of laser, featuring large measuring range, high accuracy, good repeatability, measuring of special surfaces such as minor area, and the bottom surface of holed etc. The measurements were given and various factors that affect the measurement were analyzed and discussed.
机译:计算神经科学已广泛用于光纤传感器信号输出。本文介绍了一种利用径向基函数神经网络处理表面粗糙度光纤传感器输出信号的方法。传感器的输出信号和作为光源的激光强度信号被同时添加到RBF神经网络的输入中,并且具有RBF神经网络能够以任意精度接近非线性函数的能力,同时实现传感器的非线性补偿和减少激光输出光强变化的影响。采用这种方法的表面粗糙度光纤传感器对激光输出功率的稳定性要求不高,具有测量范围大,精度高,重复性好,对特殊区域(如小面积区域,带孔底面)的测量等优点。给出了测量值,并对影响测量的各种因素进行了分析和讨论。

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