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Combination of one-dimensional convolutional neural network and negative correlation learning on spectral calibration

机译:一维卷积神经网络与负相关学习对光谱校准的组合

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The advantage of data-sensitive deep learning methods used in spectral calibration is not obvious when the amount of available data is insufficient. To solve this problem, this paper proposes a new method that combines one-dimensional convolution neural network (1-dim CNN) with negative correlation learning (NCL). First, we create several identical one-dimensional convolutional neural networks as subnetworks of the NCL system. Second, we add the error function of each subnetwork to a negative correlation penalty term that is related to the correlation between the networks and then use this composite error function to back-propagate these networks for parameter adjustment. Finally, after the model has converged, we take the average of the results of all subnetworks as the result of the whole model. We compare CNN_NCL with PLS,creating diversity partial least squares (CDPLS) and a single 1-dim CNN on the pharmaceutical tablet dataset and diesel fuels dataset. The experimental results show that CNN_NCL performs better than PLS and CDPLS when the number of samples is sufficient. Additionally, CNN_NCL can always be more effective than a single CNN regardless of the data scale. Therefore, in the context of the era of big data, CNN_NCL is a fairly efficient model for spectral calibration.
机译:在可用数据量不足的情况下,光谱校准中使用的数据敏感深度学习方法的优点是不明显的。为了解决这个问题,本文提出了一种新方法,将一维卷积神经网络(1-DIM CNN)与负相关学习(NCL)结合起来。首先,我们创建几个相同的一维卷积神经网络作为NCL系统的子网。其次,我们将每个子网的错误函数添加到负相关惩罚项,与网络之间的相关性相关,然后使用该复合误差函数来返回传播这些网络以进行参数调整。最后,在模型融合后,我们将所有子网的结果平均为整个模型的结果。我们将CNN_NCL与PLS进行比较,在制药平板电脑数据集和柴油燃料数据集上创建分集偏最小二乘(CDPL)和单个1-DIM CNN。实验结果表明,当样品的数量足够时,CNN_NCL比PLS和CDPL更好。另外,无论数据刻度如何,CNN_NCL总是比单个CNN更有效。因此,在大数据时代的背景下,CNN_NCL是一种相当有效的光谱校准模型。

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