Performance prediction of gravity concentrator by using artificial neural network-a case study

被引:0
作者
Panda Lopamudra
Tripathy Sunil Kumar
机构
[1] ResearchandDevelopmentDivisionTataSteelLtd,BurmaMines,Jamshedpur,India
关键词
Chromite; Artificial neural network; Wet shaking table; Performance prediction; Back propagation algorithm;
D O I
暂无
中图分类号
TD922 [重力选矿]; TD951 [黑色金属矿选矿];
学科分类号
081902 ;
摘要
In conventional chromite beneficiation plant, huge quantity of chromite is used to loss in the form of tailing. For recovery these valuable mineral, a gravity concentrator viz. wet shaking table was used.Optimisation along with performance prediction of the unit operation is necessary for efficient recovery.So, in this present study, an artificial neural network(ANN) modeling approach was attempted for predicting the performance of wet shaking table in terms of grade(%) and recovery(%). A three layer feed forward neural network(3:3–11–2:2) was developed by varying the major operating parameters such as wash water flow rate(L/min), deck tilt angle(degree) and slurry feed rate(L/h). The predicted value obtained by the neural network model shows excellent agreement with the experimental values.
引用
收藏
页码:461 / 465
页数:5
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