Prediction of Element Component Content Based on Mechanism Analysis and Error Compensation

Rongxiu Lu, Biao Deng, Kanghao Ding, Hui Yang, Jianyong Zhu, Hongliang Liu
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Abstract

To solve the difficulty of rapid and accurate detection of component content in the rare earth extraction process, a component content modeling method combining mechanism model and error compensation model based on just-in-time learning (JITL) was proposed. Considering the different dynamic characteristics of each section, the extraction section is simplified using the segmented-aggregation method, and the mechanism model of the rare earth extraction process based on material balance is established; in view of the error caused by the simplification of the model and the characteristics of some rare earth solutions with color features, the color features of rare earth solution samples are extracted by machine vision technology, and the error compensation model of the mechanism model is established by the just-in-time learning algorithm. Through the experimental verification of the field sample data of the praseodymium/neodymium (Pr/Nd) extraction process, the results show that the modeling method proposed in this paper is suitable for rapid and accurate detection of elemental component content in the rare earth extraction process with ionic color features.
基于机理分析和误差补偿的元素含量预测
为解决稀土萃取过程中组分含量快速准确检测的困难,提出了一种基于即时学习(jit)的机理模型与误差补偿模型相结合的组分含量建模方法。考虑各断面动态特性不同,采用分段聚集法对提取断面进行简化,建立了基于物料平衡的稀土提取过程机理模型;针对模型简化带来的误差以及部分稀土溶液具有颜色特征的特点,采用机器视觉技术提取稀土溶液样品的颜色特征,并采用实时学习算法建立机理模型的误差补偿模型。通过对镨/钕(Pr/Nd)萃取过程现场样品数据的实验验证,结果表明本文提出的建模方法适用于具有离子颜色特征的稀土萃取过程中元素成分含量的快速准确检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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