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1D-CNN-Based Distributed Optical Fiber Sensing Signal Feature Learning and Classification Method

机译:基于1D-CNN的分布式光纤传感信号特征学习与分类方法

摘要

A 1D-CNN-based ((one-dimensional convolutional neural network)-based) distributed optical fiber sensing signal feature learning and classification method is provided, which solves a problem that an existing distributed optical fiber sensing system has poor adaptive ability to a complex and changing environment and consumes time and effort due to adoption of manually extracted distinguishable event features, The method includes steps of: segmenting time sequences of distributed optical fiber sensing acoustic and vibration signals acquired at all spatial points, and building a typical event signal dataset; constructing a 1D-CNN model, conducting iterative update training of the network through typical event signals in a training dataset to obtain optimal network parameters, and learning and extracting 1D-CNN distinguishable features of different types of events through an optimal network to obtain typical event signal feature sets; and after training different types of classifiers through the typical event signal feature sets, screening out an optimal classifier.
机译:提供了一种基于一维-CNN((一维卷积神经网络)的)分布式光纤传感信号特征学习和分类方法,解决了现有的分布式光纤传感系统对复杂系统自适应能力差的问题。该方法包括以下步骤:分割在所有空间点处采集的分布式光纤感测声和振动信号的时间序列,并建立典型的事件信号数据集;以及建立一维-神经网络模型,通过训练数据集中的典型事件信号对网络进行迭代更新训练,以获得最优网络参数,并通过最优网络学习和提取不同类型事件的一维-神经网络可区分特征以获得典型事件信号功能集;然后通过典型的事件信号特征集训练不同类型的分类器,从而筛选出最佳分类器。

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