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Intelligent prediction model of matte grade in copper flash smelting process

机译:铜闪速熔炼过程中亚光品位的智能预测模型

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Due to the importance of detecting the matte grade in the copper flash smelting process, the mechanism model was established according to the multi-phase and multi-component mathematic model. Meanwhile this procedure was a complicated production process with characteristics of large time delay, nonlinearity and so on. A fuzzy neural network model was set up through a great deal of production data. Besides a novel constrained gradient descent algorithm used to update the parameters was put forward to improve the parameters learning efficiency. Ultimately the self-adaptive combination technology was adopted to paralleled integrate two models in order to obtain the prediction model of the matte grade. Industrial data validation shows that the intelligently integrated model is more precise than a single model. It can not only predict the matte grade exactly but also provide optimal control of the copper flash smelting process with potent guidance.
机译:由于在铜闪速熔炼过程中检测毛面等级的重要性,根据多相多组分数学模型建立了机理模型。同时,该过程是一个复杂的生产过程,具有时延大,非线性等特点。通过大量生产数据建立了模糊神经网络模型。提出了一种新颖的约束梯度下降算法来更新参数,以提高参数学习效率。最终,采用自适应组合技术对两个模型进行并行整合,以得到磨砂等级的预测模型。工业数据验证表明,智能集成模型比单个模型更精确。它不仅可以准确地预测冰铜的品位,还可以在有效的指导下提供对铜闪速熔炼过程的最佳控制。

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