Fatahi Rasoul, Khosravi Rasoul, Siavoshi Hossein, Yazdani Samaneh, Hadavandi Esmaiel, Chehreh Chelgani Saeed
School of Mining Engineering, College of Engineering, University of Tehran, Tehran 16846-13114, Iran.
Department of Mining, Faculty of Engineering, Lorestan University, Khorramabad 68151-44316, Iran.
Materials (Basel). 2021 Jun 10;14(12):3220. doi: 10.3390/ma14123220.
In cement mills, ventilation is a critical key for maintaining temperature and material transportation. However, relationships between operational variables and ventilation factors for an industrial cement ball mill were not addressed until today. This investigation is going to fill this gap based on a newly developed concept named "conscious laboratory (CL)". For constructing the CL, a boosted neural network (BNN), as a recently developed comprehensive artificial intelligence model, was applied through over 35 different variables, with more than 2000 records monitored for an industrial cement ball mill. BNN could assess multivariable nonlinear relationships among this vast dataset, and indicated mill outlet pressure and the ampere of the separator fan had the highest rank for the ventilation prediction. BNN could accurately model ventilation factors based on the operational variables with a root mean square error (RMSE) of 0.6. BNN showed a lower error than other traditional machine learning models (RMSE: random forest 0.71, support vector regression: 0.76). Since improving the milling efficiency has an essential role in machine development and energy utilization, these results can open a new window to the optimal designing of comminution units for the material technologies.
在水泥厂中,通风是维持温度和物料输送的关键因素。然而,工业水泥球磨机运行变量与通风因素之间的关系至今尚未得到研究。本研究将基于一个名为“意识实验室(CL)”的新开发概念填补这一空白。为构建CL,采用了一种最近开发的综合人工智能模型——增强神经网络(BNN),该模型通过35多个不同变量对一台工业水泥球磨机进行了2000多条记录的监测。BNN可以评估这个庞大数据集中的多变量非线性关系,并表明磨机出口压力和选粉机风扇电流在通风预测中排名最高。BNN能够基于运行变量准确地对通风因素进行建模,均方根误差(RMSE)为0.6。与其他传统机器学习模型相比,BNN的误差更低(RMSE:随机森林为0.71,支持向量回归为0.76)。由于提高粉磨效率在机器开发和能源利用中具有重要作用,这些结果可为材料技术的粉碎单元优化设计打开一扇新窗口。