首页> 外文会议>Sohn International Symposium on Advanced Processing of Metals and Materials vol.3; 20060827-31; San Diego,CA(US) >MODELING STUDIES OF SEMI-COMMERCIAL FLOTATION COLUMN FOR BENEFICIATION OF SILLIMANITE USING ARTIFICIAL NEURAL NETWORK
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MODELING STUDIES OF SEMI-COMMERCIAL FLOTATION COLUMN FOR BENEFICIATION OF SILLIMANITE USING ARTIFICIAL NEURAL NETWORK

机译:人工神经网络对硅锰矿精矿用半浮选塔的建模研究

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The present paper discusses a three layer feed forward artificial neural network (ANN) model, trained using the error back propagation algorithm, has been established to simulate the column flotation circuit used for beneficiation of Sillimanite. Parameters such as superficial air velocity, wash water rate, froth height, % solid, feed velocity, sodium silicate and oleic cid are considered as process operating variables and % yield of Sillimanite is the output of the experiment. The results from the ANN modeling, involving the non linear relationship between inputs and outputs, indicate good agreement with experimental observations. The network model validates the experimentally observed trends. The optimal model parameters in terms of network weights have been estimated and can be used for computing parameters of the process over wide-ranging experimental conditions.
机译:本文讨论了一种使用误差反向传播算法训练的三层前馈人工神经网络(ANN)模型,以模拟用于硅线石选矿的柱浮选电路。诸如表观空气速度,洗涤水速度,泡沫高度,固体%,进料速度,硅酸钠和油酸的参数被认为是工艺操作变量,而硅线石的%收率是实验的输出。 ANN建模的结果涉及输入和输出之间的非线性关系,表明与实验观察结果吻合良好。网络模型验证了实验观察到的趋势。已经估计了基于网络权重的最佳模型参数,可将其用于在广泛的实验条件下计算过程的参数。

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