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Herbal drug raw materials differentiation by neural networks using non-metals content

机译:利用非金属含量的神经网络区分草药原料

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摘要

Three-layer artificial neural networks (ANN) capable of recognizing the type of raw material (herbs, leaves, flowers, fruits, roots or barks) using the non-metals (N, P, S, Cl, I, B) contents as inputs were designed. Two different types of feed-forward ANNs - multilayer perceptron (MLP) and radial basis function (RBF), best suited for solving classification problems, were used. Phosphorus, nitrogen, sulfur and boron were significant in recognition; chlorine and iodine did not contribute much to differentiation. A high recognition rate was observed for barks, fruits and herbs, while discrimination of herbs from leaves was less effective. MLP was more effective than RBF.
机译:三层人工神经网络(ANN),能够使用非金属(N,P,S,Cl,I,B)含量识别原料类型(药草,树叶,花朵,水果,根或树皮)设计输入。使用了最适合解决分类问题的两种不同类型的前馈ANN-多层感知器(MLP)和径向基函数(RBF)。磷,氮,硫和硼在识别中很重要;氯和碘对分化没有太大贡献。对树皮,水果和草药的识别率很高,而从叶中区分草药的效果不佳。 MLP比RBF更有效。

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