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Application of least squares support vector machine in soft sensor of traditional Chinese Medicine extraction

机译:最小二乘支持向量机在中药提取软测量中的应用。

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Aiming at the difficult measurement problem of the extraction rate for plants and herbs with the ultrasonic wave technology, the influence of the various factors on the extraction rate in the ultrasonic extraction process is analyzed and the dynamic process variables which is easily measured and can affect the extraction rate is ensured in this paper. A soft sensor model between the easily measured variables and the ones to be measured is established with the Least Squares Support Vector Machine (LS-SVM) method. Using the optimized model, the impact of process parameters on the extraction rate in the extraction process of Chinese medicine is predicted and analyzed. The learning performance and generalization capability of the model are verified. The conclusion that the extraction temperature has an impact on the extraction rate of the traditional Chinese medicine can be drawn. Finally, the experimental results show that the LS-SVM method is suitable for data modeling of small sample data and characterizes by the quicker calculation speed and stronger generalization ability. The soft sensor model which is established with the LS-SVM method has achieved more accurate prediction on extraction rate of the traditional Chinese medicine.
机译:针对超声波技术难以测量植物和植物提取率的问题,分析了超声提取过程中各种因素对提取率的影响,并动态地测量了容易影响并影响植物提取率的动态过程变量。本文保证了提取率。使用最小二乘支持向量机(LS-SVM)方法在易于测量的变量和要测量的变量之间建立一个软传感器模型。利用优化模型,对中药提取过程中工艺参数对提取率的影响进行了预测和分析。验证了模型的学习性能和泛化能力。可以得出提取温度对中药提取率有影响的结论。最后,实验结果表明,LS-SVM方法适用于小样本数据的数据建模,具有计算速度快,泛化能力强的特点。 LS-SVM方法建立的软传感器模型对中药提取率的预测更加准确。

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