A 3 sensor multipoint optical fibre water sensor utilising artificial neural network pattern recognition

W. Lyons, D. King, C. Flanagan, E. Lewis, H. Ewald, S. Lochmann
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引用次数: 9

Abstract

A multipoint sensor on a 1 km continuous length of fibre has been investigated and proven to be capable of detecting the presence of air, ethanol and water at each of three independent sensing points using OTDR techniques. Artificial neural network signal processing techniques have allowed the resulting OTDR signals to be accurately determined using pattern recognition. Each of the U-bend evanescent wave absorption sensors were developed with 62.5 /spl mu/m polymer-clad silica fibre, which had its cladding removed in the sensing region. Although the length of the fibre used in this investigation was 1 km, longer or shorter lengths may be used as required. Earlier results from a single U-bend sensor have shown that a multilayer perceptron is required to adequately classify the data. Initial results have shown that it is possible to train a network to recognise trends such as ageing of the bare fibre when immersed in water, and therefore possible to separate out such effects from genuine changes in the measurand. It is envisaged that a more sophisticated multipoint U-bend evanescent wave sensor system will be developed, with the resulting complex signals being processed using Artificial neural network pattern recognition techniques. This will result in the development of a 'smart system', with the ability to interpret and separate relevant measurand data from the data received from cross coupling signals from external or interfering parameters as well as faults or defects detected in the fibre.
一种利用人工神经网络模式识别的3传感器多点光纤水传感器
已经研究了一种连续长度为1公里的光纤上的多点传感器,并证明能够使用OTDR技术在三个独立的感测点中检测空气、乙醇和水的存在。人工神经网络信号处理技术允许使用模式识别准确地确定产生的OTDR信号。采用62.5 /spl mu/m聚合物包层二氧化硅纤维,在传感区域去除包层,研制了u型型倏变波吸收传感器。虽然本研究中使用的纤维长度为1公里,但根据需要可以使用更长或更短的长度。早期单个u型传感器的结果表明,需要多层感知器来充分分类数据。初步结果表明,训练一个网络来识别裸露纤维在浸入水中时的老化等趋势是可能的,因此有可能将这些影响从测量的真实变化中分离出来。预计将开发出更复杂的多点u型弯道隐波传感器系统,并使用人工神经网络模式识别技术处理由此产生的复杂信号。这将导致“智能系统”的发展,具有解释和分离相关测量数据的能力,这些数据来自外部或干扰参数的交叉耦合信号,以及光纤中检测到的故障或缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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