基于GA-BP神经网络的塔式磨粉机磨粉能耗预测与优化

IF 1.3 4区 工程技术 Q4 CHEMISTRY, PHYSICAL
Ziyang Wang, Ying Hou, Ahmed Sobhy
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引用次数: 0

摘要

磨矿通常负责将有价值的矿物从宿主岩石中解放出来,但在能源和介质消耗方面可能需要很高的成本,但与传统磨矿相比,塔式磨矿机是一种独特的节能磨矿机。在塔式磨机中,许多操作参数影响研磨性能,如已知固体浓度的浆料量、螺杆混合器速度、介质填充率、料球比和介质特性。为此,进行了25组磨削试验,建立了磨削功耗与工作参数之间的关系。基于反向传播“BP”神经网络建立预测模型,通过遗传算法GA进一步优化,保证模型的准确性,并进行验证。试验结果表明,采用通用算法反向传播“GA-BP”神经网络后,反向传播“BP”神经网络预测模型预测值与实际值的相对误差在3%以内,降低到2%以内。在磨矿浓度为66.49%、螺杆转速为301.86 r/min、介质填充率为20.47%、介质配比为96.61%、料球比为0.1394的预测工况下,获得最佳磨矿功耗为41.069 kWh/t。在最优条件下进行的室内验证试验,磨矿电耗为41.85 kWh/t,相对误差为1.87%,说明采用遗传算法和BP神经网络对塔式磨矿电耗进行优化是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction and optimization of tower mill grinding power consumption based on GA-BP neural network
Grinding is commonly responsible for the liberation of valuable minerals from host rocks but can entail high costs in terms of energy and medium consumption, but a tower mill is a unique power-saving grinding machine over traditional mills. In a tower mill, many operating parameters affect the grinding performance, such as the amount of slurry with a known solid concentration, screw mixer speed, medium filling rate, material-ball ratio, and medium properties. Thus, 25 groups of grinding tests were conducted to establish the relationship between the grinding power consumption and operating parameters. The prediction model was established based on the backpropagation “BP” neural network, further optimized by the genetic algorithm GA to ensure the accuracy of the model, and verified. The test results show that the relative error of the predicted and actual values of the backpropagation “BP” neural network prediction model within 3% was reduced to within 2% by conducting the generic algorithm backpropagation “GA-BP” neural network. The optimum grinding power consumption of 41.069 kWh/t was obtained at the predicted operating parameters of 66.49% grinding concentration, 301.86 r/min screw speed, 20.47% medium filling rate, 96.61% medium ratio, and 0.1394 material-ball ratio. The verifying laboratory test at the optimum conditions, produced a grinding power consumption of 41.85 kWh/t with a relative error of 1.87%, showing the feasibility of using the genetic algorithm and BP neural network to optimize the grinding power consumption of the tower mill.
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来源期刊
Physicochemical Problems of Mineral Processing
Physicochemical Problems of Mineral Processing CHEMISTRY, PHYSICAL-MINING & MINERAL PROCESSING
自引率
6.70%
发文量
99
期刊介绍: Physicochemical Problems of Mineral Processing is an international, open access journal which covers theoretical approaches and their practical applications in all aspects of mineral processing and extractive metallurgy. Criteria for publication in the Physicochemical Problems of Mineral Processing journal are novelty, quality and current interest. Manuscripts which only make routine use of minor extensions to well established methodologies are not appropriate for the journal. Topics of interest Analytical techniques and applied mineralogy Computer applications Comminution, classification and sorting Froth flotation Solid-liquid separation Gravity concentration Magnetic and electric separation Hydro and biohydrometallurgy Extractive metallurgy Recycling and mineral wastes Environmental aspects of mineral processing and other mineral processing related subjects.
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