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On-line prediction of ferrous ion concentration in goethite process based on self-adjusting structure RBF neural network

机译:基于自调节结构RBF神经网络的粘性丝石凝固亚铁离子浓度的在线预测

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摘要

Outlet ferrous ion concentration is an essential indicator to manipulate the goethite process in the zinc hydrometallurgy plant. However, it cannot be measured on-line, which leads to the delay of this feedback information. In this study, a self-adjusting structure radial basis function neural network (SAS-RBFNN) is developed to predict the outlet ferrous ion concentration on-line. First, a supervised cluster algorithm is proposed to initialize the RBFNN. Then, the network structure is adjusted by the developed self-adjusting structure mechanism. This mechanism can merge or divide the hidden neurons according to the distance of the clusters to achieve the adaptability of the RBFNN. Finally, the connection weights are determined by the gradient-based algorithm. The convergence of the SAS-RBFNN is analyzed by the Lyapunov criterion. A simulation for a benchmark problem shows the effectiveness of the proposed network. The SAS-RBFNN is then applied to predict the outlet ferrous ion concentration in the goethite process. The results demonstrate that this network can provide a more accurate prediction than the mathematical model, even under the fluctuating production condition. (C) 2019 Elsevier Ltd. All rights reserved.
机译:出口亚铁离子浓度是操纵锌氢冶金植物中的甘蓝工艺的必要指标。但是,它无法在线测量,这导致该反馈信息的延迟。在该研究中,开发了一种自调节结构径向基函数神经网络(SAS-RBFNN)以预测在线上的出口亚铁离子浓度。首先,提出了一种监督的集群算法来初始化RBFNN。然后,通过开发的自调节结构机制调节网络结构。该机制可以根据簇的距离来合并或划分隐藏的神经元以实现RBFNN的适应性。最后,连接权重由基于梯度的算法确定。通过Lyapunov标准分析SAS-RBFNN的收敛性。基准问题的模拟显示了所提出的网络的有效性。然后施加SAS-RBFNN以预测可甘土工艺中的出口亚铁离子浓度。结果表明,即使在波动的生产条件下,该网络也可以提供比数学模型更准确的预测。 (c)2019年elestvier有限公司保留所有权利。

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