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首页> 外文期刊>International Journal of Coal Preparation and Utilization >Prediction of Gas Holdup in a Flotation Column by Artificial Neural Network
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Prediction of Gas Holdup in a Flotation Column by Artificial Neural Network

机译:人工神经网络预测浮选柱的含气量。

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Flotation column is one of the separation technologies investigated for removal of gangue mineral from coal fines. The effect of process variables, such as gas flow rate, feed flow rate, and frother dosage on gas holdup, were investigated. In this study, the measurement of gas holdup in presence of coal fines was carried out in a laboratory flotation column by a phase separation method. Detailed parametric study was performed to observe the effect of slurry concentration, gas flow rate, slurry flow rate, and frother concentration on gas holdup. An artificial neural network approach with three layers was systematically employed to predict gas holdup using some of the experimental results. The rest of the experimental results were successfully compared with the model predictions with less than 5% average error. In this work, emphasis was made on random selection of training data and small network. The developed trained network was also able to capture the non-linear prediction of gas holdup with new operating conditions that were not used in the training process and enhanced the physical understanding of the process.
机译:浮选塔是用于从煤粉中去除脉石矿物的分离技术之一。研究了工艺变量(例如气体流量,进料流量和起泡剂量)对气体滞留量的影响。在这项研究中,通过相分离法在实验室浮选塔中进行了煤粉存在下气体滞留量的测量。进行了详细的参数研究,以观察泥浆浓度,气体流速,泥浆流速和起泡剂浓度对气体滞留率的影响。利用一些实验结果,系统地采用三层人工神经网络方法来预测气体滞留率。将其余的实验结果成功地与模型预测值进行比较,平均误差小于5%。在这项工作中,重点是随机选择训练数据和小型网络。开发的训练网络还能够利用训练过程中未使用的新操作条件来捕获气体滞留量的非线性预测,并增强了对过程的物理理解。

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