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Fluorescence optical fiber measurement system based on an advanced Neural Network (NN) ensemble algorithm

机译:基于高级神经网络集成算法的荧光光纤测量系统

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Noisy Spread based Ensemble Neural Networks is a new neural network ensemble algorithm with high integration, anti-interference and high precision. In this paper, it''s applied to fluorescence spectra of the oil in water (classification and identification). The method uses optical spectroscopy to measure excitation fluorescence spectroscopy in the pool of crude oil and mineral oil in the range 230 ∼ 400nm, belong to UV spectral region: spectral interval of 5nm, recording fluorescence spectroscopy data, then the integration neural networks were established by the enhanced T individual neural networks. Vote method for the classification of fluorescence spectra characteristics and the average method for nonlinear regression. Experiments show that the neural network integrated for fluorescence spectral measurement system of oil in water identification and processing higher accuracy.
机译:基于噪声扩散的集成神经网络是一种具有高集成度,抗干扰性和高精度的新型神经网络集成算法。本文将其应用于水中油类的荧光光谱(分类和鉴定)。该方法利用光谱法在230〜400nm范围内的原油和矿物油池中测量激发荧光光谱,属于紫外光谱区域:光谱间隔为5nm,记录荧光光谱数据,然后通过积分神经网络建立。增强的T个人神经网络。荧光光谱特征分类的投票法和非线性回归的平均法。实验表明,集成的神经网络用于水中油类荧光光谱测量系统的识别和处理具有较高的精度。

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