基于SVR的挥发性窑反应速率模型

B. Qin, Qinghu Chen, RuXia Shan, Xin Wang
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引用次数: 0

摘要

提出了一种新的挥发性窑反应速率建模方法。首先利用采集到的物料质量和窑温数据,通过实验得到相应的反应速率数据,然后对数据进行归一化处理,分为训练样本和测试样本,然后采用交叉验证的方法,利用训练样本得到支持向量机回归(SVR)模型的参数。基于这些参数建立了挥发窑反应速率模型,最后用试验样品验证了模型的准确性,结果相关系数达到0.9以上,说明SVR方法的泛化能力较强,该反应速率模型可以作为挥发窑反应速率模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Reaction Rate Model of Volatile Kiln Based on SVR
A new method of reaction rate modeling of volatile kiln was proposed. First, use the collected material mass and kiln temperature data to get the corresponding reaction rate data by experiments, then proceed the data normalization processing and grouped into training samples and test samples, after that, adopting cross validation method to obtained the parameters of support vector machine regression (SVR) model by use of the training sample. volatile kiln reaction rate model was built based on these parameters, and finally use the test sample to verify the accuracy of the model, and the results of the correlation coefficient reached more than 0.9, which shows that the method of SVR's generalization ability is stronger and this reaction rate model can be used as the volatilization kiln reaction rate model.
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