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超细全尾砂絮凝沉降参数优化模型
引用本文:王新民,刘吉祥,陈秋松,肖崇春,万孝衡. 超细全尾砂絮凝沉降参数优化模型[J]. 科技导报(北京), 2014, 32(17): 23-28. DOI: 10.3981/j.issn.1000-7857.2014.17.003
作者姓名:王新民  刘吉祥  陈秋松  肖崇春  万孝衡
作者单位:中南大学资源与安全工程学院, 长沙 410083
基金项目:“十二五”国家科技支撑计划项目(2012BAC09B02)
摘    要: 为了得到最优的絮凝沉降参数,以絮凝沉降正交试验数据为训练样本和检验样本建立BP 神经网络预测模型。絮凝剂单耗、料浆浓度及絮凝剂浓度作为输入因子,沉降速度和极限浓度作为输出因子。对比隐含层节点数对模型训练过程及预测精度的影响,选取最佳预测模型节点数为9。将絮凝沉降参数细化输入到预测模型中,从而搜索出优选样本,优选参数絮凝剂单耗为4.5 g/t,絮凝剂浓度为0.11%,料浆浓度为15%。经实验对比,该模型对絮凝沉降参数预测结果的相对误差能控制在5%左右,精确度较高,可以作为絮凝沉降参数优选的一种新思路。

关 键 词:BP 神经网络  全尾砂  絮凝沉降  动态放砂  
收稿时间:2014-03-05

Optimal Flocculating Sedimentation Parameters of Unclassified Tailings
WANG Xinmin,LIU Jixiang,CHEN Qiusong,XIAO Chongchun,WAN Xiaoheng. Optimal Flocculating Sedimentation Parameters of Unclassified Tailings[J]. Science & Technology Review, 2014, 32(17): 23-28. DOI: 10.3981/j.issn.1000-7857.2014.17.003
Authors:WANG Xinmin  LIU Jixiang  CHEN Qiusong  XIAO Chongchun  WAN Xiaoheng
Affiliation:School of Resourcrs and Safety Engineering, Central South University, Changsha 410083, China
Abstract:Back-propagation neural network was used to optimize the flocculating sedimentation parameters. To get the best network mode, some learning and training samples were established by the numbered orthogonal blasting tests. In the process of establishing the network mode, the tailings concentration, flocculant consumption and flocculant concentration were used as the input data, the sedimentation speed and limiting concentration were confirmed to be the synthesized output data. Comparison of the influences of hidden layer nodes on model training process and prediction accuracy indicates that the optimal hidden layer node was 9. By entering the refined flocculating sedimentation parameters into the prediction model, optimal samples are searched and the optimal parameters show that the flocculating agent consumption is 4.5 g/t, flocculating concentration is 0.11% and tailings concentration is 15%. Compared with that of the experimental results, the relative error of the prediction results can be controlled at about 5%. The application indicates this mode has relatively high accuracy, providing a new method to optimize the flocculating sedimentation parameters.
Keywords:back-propagation neural network  unclassified tailings  flocculating sedimentation  dynamic sand release  
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