基于 PSO 的 AN 识别和预测模型

Pub Date : 2024-05-22 DOI:10.4018/ijcini.344023
Hui Wang, Tie Cai, Dongsheng Cheng, Kangshun Li, Ying Zhou
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引用次数: 0

摘要

根据不同中药材的光谱特征,确定中药材的种类和产地。构建碎片聚类模型。首先,对中红外样本数据进行预处理,建立莱达准则模型,剔除异常数据;然后利用切片模型,根据光谱特征将光谱波划分为不同区域。通过 k-means 聚类模型对每个切片的数据进行聚类。通过支持向量机模型对中药材产地进行识别。将已知产地的某类中药材数据作为训练样本集,将未知产地的中药材数据作为测试集。
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AN Identification and Prediction Model Based on PSO
According to the spectral characteristics of different Chinese medicinal materials, the types of Chinese medicinal materials and the origin of Chinese medicinal materials are identified. Construct a fragmented clustering model. Firstly, the mid-infrared sample data is preprocessed, the Laida criterion model is established, and the abnormal data is eliminated; then the slicing model is used to divide the spectral wave into different regions according to the spectral characteristics. The data of each slice is clustered through the k-means clustering model. The origin of Chinese medicinal materials is identified by the support vector machine model. The data of Chinese medicinal materials with a known origin of a certain type of Chinese medicinal materials is used as the training sample set, and the data of Chinese medicinal materials with unknown origin is used as the test set.
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