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The application of an artificial neural network in the identification of medicinal rhubarbs by near-infrared spectroscopy

机译:人工神经网络在近红外光谱法鉴别大黄中的应用

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摘要

This paper describes a method to combine near-infrared spectroscopy and a three layer back-propagation artificial neural network in order to identify official and unofficial rhubarbs. Thirty-three samples were taken as the training set, and 62 samples as the test set. The effects of input node number, learning rate and momentum on the final error and recognition accuracy for the training set, and on prediction accuracy for the test set were determined. A neural network with eight input nodes, a 0.5 learning rate, and a momentum of 0.3 can achieve a recognition accuracy of 100% for the training set and a prediction accuracy of 96.8% for the test set. The method described offers a quick and efficient means of identifying rhubarbs. Copyright
机译:本文介绍了一种结合近红外光谱和三层反向传播人工神经网络以识别官方和非官方大黄的方法。将33个样本作为训练集,将62个样本作为测试集。确定了输入节点数,学习率和动量对训练集的最终误差和识别准确性以及测试集的预测准确性的影响。具有八个输入节点,0.5的学习率和0.3的动量的神经网络可以对训练集实现100%的识别精度,对测试集达到96.8%的预测精度。所述方法提供了识别大黄的快速有效方法。版权

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