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Production Indices Prediction Model of Ore Dressing Process Based on PCA-GA-BP Neural Network

机译:基于PCA-GA-BP神经网络的选矿工艺生产指标预测模型

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In order to determine the global production indices' real-time completion situation after plan's layer upon layer's decomposition and transmition to working procedure and work team. A neural network model based on PCA-GA-BP was proposed to reasonable modify the production plan. The principle component analysis(PCA) was used to select the most relevant process features and to eliminate the correlations of the input variables; back-propagation(BP) neural network was used to characterize the nonlinearity and accuracy; genetic algorithm(GA) was employed to optimize the parameters and structure of the BP neural network by improving GA' fitness function. Carried on prediction to weak magnetic concentrate taste and weak magnetic tailings taste according to actual production data. The Simulation results show that the proposed method provides promising prediction reliability and accuracy.
机译:为了确定全球生产指标在计划的层层分解并传递给工作程序和工作团队后的实时完成情况。提出了一种基于PCA-GA-BP的神经网络模型,以合理修改生产计划。主成分分析(PCA)用于选择最相关的过程特征并消除输入变量的相关性; BP神经网络用于表征非线性和精度。通过改进遗传算法的适应度函数,采用遗传算法(GA)对BP神经网络的参数和结构进行优化。根据实际生产数据对弱磁精矿味和弱磁尾矿味进行预测。仿真结果表明,该方法具有良好的预测可靠性和准确性。

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