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Online Estimation of the pH Value for Froth Flotation of Bauxite Based on Adaptive Multiple Neural Networks

机译:基于自适应多个神经网络的铝土矿泡沫浮选PH值的在线估算

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摘要

PH value is an essential factor in the control of froth flotation process. However, it cannot be measured online because the online-pH detector is easily damaged due to the poor field conditions, and maintenance is always delayed. Therefore, considering of the characteristics that the pH value fluctuate around a prescribed value due to the variation of the operating conditions when the ore is stable, and the prescribed control range of pH value changes when the ore type changes, multiple RBF networks based on sample classification and adaptive retraining strategy are proposed corresponding to these two characteristics for the online estimation of the pH value. Simulation results using the industrial data collected in a flotation process of bauxite show that an improvement in predictive accuracy and fitting capability can be achieved by adaptive multiple neural networks (Adaptive MNN) (RMSE=0.0957, R~2=0.6503) in comparison with the MNN (RMSE=0.1591, R~2=0.2312) and the single RBF neural network model (RMSE=0.2023, R~2=0.1930).
机译:pH值是控制泡沫浮选过程的必要因素。但是,它不能在线测量,因为由于现场条件较差,并且始终延迟,在线pH检测器容易损坏。因此,考虑由于在矿石稳定的操作条件的变化以及当矿石型改变时,在矿石改变时,PH值因操作条件的变化而导致的pH值围绕规定值波动的特性,并且当矿石型变化时,基于样本的多个RBF网络变化提出了对对应于对pH值的在线估计的这两个特征的分类和自适应再培训策略。使用铝土矿浮选过程中收集的工业数据的仿真结果表明,通过自适应多个神经网络(Adaptive MNN)(RMSE = 0.0957,R〜2 = 0.6503)可以实现预测精度和拟合能力的提高MNN(RMSE = 0.1591,R〜2 = 0.2312)和单个RBF神经网络模型(RMSE = 0.2023,R〜2 = 0.1930)。

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