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A Method of Amino Acid Terahertz Spectrum Recognition Based on the Convolutional Neural Network and Bidirectional Gated Recurrent Network Model

机译:一种基于卷积神经网络和双向门控复发网络模型的氨基酸太赫兹谱识别方法

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In order to improve the accuracy of amino acid identification, a model based on the convolutional neural network (CNN) and bidirectional gated recurrent network (BiGRU) is proposed for terahertz spectrum identification of amino acids. First, we use the CNN to extract the feature information of the terahertz spectrum; then, we use the BiGRU to process the feature vector of the amino acid time-domain spectrum, describe the time series dynamic change information, and finally achieve amino acid identification through the fully connected network. Experiments are carried out on the terahertz spectra of various amino acids. The experimental results show that the CNN-BiGRU model proposed in this study can effectively realize the terahertz spectrum identification of amino acids and will provide a new and effective analysis method for the identification of amino acids by terahertz spectroscopy technology.
机译:为了提高氨基酸鉴定的准确性,提出了一种基于卷积神经网络(CNN)和双向门控经常性网络(BIGRU)的模型,用于氨基酸的太赫兹光谱鉴定。 首先,我们使用CNN提取太赫兹光谱的特征信息; 然后,我们使用BIGRU处理氨基酸时域谱的特征向量,描述时间序列动态变化信息,最后通过完全连接的网络实现氨基酸识别。 实验在各种氨基酸的太赫兹光谱上进行。 实验结果表明,该研究中提出的CNN-BIGRU模型可以有效地实现氨基酸的太赫兹光谱鉴定,并提供了一种通过太赫兹光谱技术鉴定氨基酸的新的有效分析方法。

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