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Prediction of component concentrations in sodium aluminate liquor using stochastic configuration networks

机译:使用随机配置网络预测铝酸钠液中的组分浓度

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Online measuring of component concentrations in sodium aluminate liquor is essential and important to Bayer alumina production process. They are the basis of closed- loop control and optimization and affect the final product quality. There are three main components in sodium aluminate liquor, termed caustic hydroxide, alumina and sodium carbonate (their concentrations are represented by c(K), c(A) and c(C), respectively). They are obtained off-line by titration analysis and suffered from larger time delays. To solve this problem, a hybrid model for cK and cA is proposed by combining a mechanism model and a stochastic configuration network (SCN) compensation model. An SCN-based model for c(C) is also proposed using the estimated values of c(K) and c(A) from the hybrid model. A real-world application conducted in Henan Branch of China Aluminum Co. Ltd demonstrates the effectiveness of the proposed modelling techniques. Experimental results show that our proposed method performs favourably in terms of the prediction accuracy, compared against the regress model, BP neural networks, RBF neural networks and random vector functional link model.
机译:在培养铝酸钠液中的组分浓度的在线测量对于拜耳氧化铝生产过程至关重要,重要。它们是闭环控制和优化的基础,并影响最终产品质量。铝酸钠液中存在三种主要成分,称为硫酸盐,氧化铝和碳酸钠(其浓度)分别分别由C(k),C(a)和c(c)表示)。通过滴定分析离线获得,并遭受较大的时间延迟。为了解决这个问题,通过组合机制模型和随机配置网络(SCN)补偿模型来提出用于CK和CA的混合模型。使用来自混合模型的C(k)和C(a)的估计值,还提出了一种基于SCN的C(C)模型。中国铝业有限公司河南分公司进行的现实世界申请表明了拟议的建模技术的有效性。实验结果表明,我们所提出的方法在预测准确性方面表现出有利地,与回归模型,BP神经网络,RBF神经网络和随机向量功能链路模型相比。

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