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Connectionist approach for modeling the dry roll magnetic separator

机译:联结主义方法建模干辊磁选机

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摘要

Magnetic separation is an age-old technique for mineral beneficiation operations. The existing mathematical models for magnetic separators are quite complicated, and it is very difficult to measure the theoretical separation efficiency. The connectionist approach of modeling, to establish the relationships of the inputs and outputs, is preferred for this kind of problem. Experiments were carried out on a high-intensity roll magnetic separator to develop a database using four input variables (magnetic flux intensity, particle size, splitter position and roll speed) and two output variables (weight recovery and Fe recovery). The artificial neural network (ANN) and statistical methods (MLRG) were used to model the magnetic separation process. For the ANN, the regression coefficient (R~2) values between the predicted and measured results were 0.89 and 0.94 for Fe recovery and weight recovery, respectively. Compared to ANN, the multivariable linear regression analysis showed inferior performance in predicting the weight recovery and the Fe recovery. The ANN models for the roll magnetic separator can predict the separation efficiency up to an acceptable limit. These models can be used to modify the operational parameters at mineral beneficiation plants to minimize the effects of variations in the raw material characteristics.
机译:磁选是一种古老的技术矿物选矿操作。磁选机的数学模型很复杂,很难测量理论分离效率。联结主义的方法建模建立输入和的关系这类问题的输出,是首选。实验进行了高强度辊磁选机开发一个数据库使用四个输入变量(磁通强度、颗粒大小、分束器和位置轧制速度)和两个输出变量(重量恢复和铁恢复)。网络(安)和统计方法(MLRG)用于模型磁分离过程。安,回归系数(R ~ 2)值之间的预测和测量结果分别为0.89和0.94的铁复苏和体重吗复苏,分别。多变量线性回归分析显示低性能预测的重量复苏和Fe复苏。辊磁选机可以预测分离效率达到一个可接受的极限。这些模型可用于修改在矿物选矿操作参数植物的变化的影响降到最低原料特性。

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