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An Improved UKFNN Based on Iterative Renewal for Intelligent Modeling of Aluminum Electrolysis

机译:基于铝电解智能建模迭代更新的一种改进的UKFNN

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Establishing an intelligent production model for aluminum electrolysis has always been a technical problem due to the existence of more parameters and multiple chemical and physical reactions in the manufacturing system of aluminum electrolysis. An iterative renewal approach tagged with Iterated Unscented Kalman Neural Networks (IUKFNN) is developed to approximate the intelligent modelling of direct current consumption from the electrolytic aluminum industry in this study. In the propose model, iterative idea and UKFNN are integrated. And the new idea of iterative updating is adopted to improve estimator precision of the model. To be more precise, after estimated states are obtained in the UKFNN algorithm, the estimated value is returned to the measurement updating to re-sample, so that the estimated value is more accurate. The experimental results indicate that the model can significantly predict the direct current consumption in the manufacturing system of aluminum electrolysis, and the precision of the model IUKFNN is higher than UKFNN. Consequently, this paper presents a better intelligent modeling method for further approaching the real energy consumption model in electrolytic aluminum manufacturing process.
机译:为铝电解建立智能制作模型一直是一种技术问题,因为铝电解制造系统中存在更多参数和多种化学和物理反应。开发了一种用迭代的Kalman神经网络(IukFNN)标记的迭代续订方法,以近似于本研究中电解铝工业的直接电流消耗的智能建模。在“提议”模型中,迭代理念和UKFNN已集成。并采用了迭代更新的新思路来提高模型的估计精度。更精确的是,在UKFNN算法中获得估计状态之后,估计值返回到测量更新以重新采样,因此估计值更准确。实验结果表明,该模型可以显着预测铝电解制造系统中的直流消耗,型材型Iukfnn的精度高于UKFNN。因此,本文介绍了一种更好的智能建模方法,用于进一步接近电解铝制造工艺中的真实能耗模型。

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