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A Novel RBF Neural Network Based on Data Dispersion Level and Its Application in BOF Endpoint Prediction

机译:基于数据色散级别的新型RBF神经网络及其在BOF端点预测中的应用

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The Basic Oxygen Furnace (BOF) process is a primary method of steel-making. The endpoint targets must be strictly control. However, it is difficult to accurately predict endpoint targets in BOF. In this paper, a clustering method is proposed in which data dispersion level and new metric are introduced respectively. And the proposed clustering method is applied to obtain accurate neural network centers in order to improve accuracy of Radial Basis Function (RBF) neural network. Then a novel RBF neural network is built for the endpoint prediction in BOF process. Finally, an example of endpoint prediction is shown, the simulation results indicate that the influence of disperse and noisy data is decreased, clustering accuracy is increased and the accuracy of endpoint prediction based on RBF neural networks is improved.
机译:基本氧气炉(BOF)工艺是钢制的主要方法。端点目标必须严格控制。然而,难以准确地预测BOF中的终点目标。在本文中,提出了一种聚类方法,其中分别介绍了数据分散水平和新度量。并且应用了所提出的聚类方法来获得准确的神经网络中心,以提高径向基函数(RBF)神经网络的准确性。然后建立了一种新颖的RBF神经网络,用于BOF过程中的端点预测。最后,示出了端点预测的示例,模拟结果表明分散和噪声数据的影响降低,增加了基于RBF神经网络的端点预测的准确度。

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