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首页> 外文期刊>Journal of Cleaner Production >Prediction of pyrite oxidation in a coal washing waste pile using a hybrid method, coupling artificial neural networks and simulated annealing (ANN/SA)
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Prediction of pyrite oxidation in a coal washing waste pile using a hybrid method, coupling artificial neural networks and simulated annealing (ANN/SA)

机译:结合人工神经网络和模拟退火(ANN / SA)的混合方法预测洗煤废渣中黄铁矿的氧化

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摘要

This paper presents a novel hybrid method coupling artificial neural network (ANN) and simulated annealing (SA), called ANN/SA to predict the fraction of pyrite remaining and therefore the pyrite oxidation rate in the wastes at different depths of a coal washing pile in the Alborz Markazi Coalfield, in northeast Iran. Waste depth, oxygen mole fraction and initial pyrite content in the waste particles were used as inputs to the network. The output of the network was the amount of pyrite content remaining. An ANN/SA model with Levenberg-Marquardt algorithm and a 3-4-3-1 arrangement showed a great capability. The network was used to predict the pyrite content remaining at two trenches E and F over the study waste pile once it was trained with the field-measured data. Simulated results obtained by the ANN/SA model were very closer to the experimental data compared to the outputs of simple ANN and multivariable least squares regression methods. The correlation coefficient (R) value, by the ANN/SA model, was 0.999 for training set, and in testing stage it was 0.998 and 0.99957 for trench E and trench F respectively which shows the model prediction was quite satisfactory. The performance of the model on the training and testing data, mean squared error (MSE) and mean absolute percent error (MADE), indicate that it has both good predictive ability and generalisation performance. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文提出了一种结合人工神经网络(ANN)和模拟退火(SA)的新型混合方法-人工神经网络(ANN / SA),预测了不同深度的洗煤堆废渣中黄铁矿的残留比例,从而预测了黄铁矿的氧化速率。伊朗东北部的Alborz Markazi煤田。废物颗粒中的废物深度,氧气摩尔分数和初始黄铁矿含量用作网络的输入。网络的输出是剩余的黄铁矿含量。具有Levenberg-Marquardt算法和3-4-3-1排列的ANN / SA模型显示出了强大的功能。一旦使用现场测量的数据对其进行了训练,该网络将用于预测残留在研究废料堆上方两个沟槽E和F处的黄铁矿含量。与简单的ANN和多变量最小二乘回归方法的输出相比,通过ANN / SA模型获得的模拟结果与实验数据非常接近。对于训练集,ANN / SA模型的相关系数(R)值为0.999,在测试阶段,沟槽E和沟槽F的相关系数分别为0.998和0.99957,这表明模型的预测是令人满意的。该模型在训练和测试数据上的性能,均方误差(MSE)和平均绝对百分比误差(MADE)均表明它具有良好的预测能力和泛化性能。 (C)2016 Elsevier Ltd.保留所有权利。

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