煤炭工程 ›› 2025, Vol. 57 ›› Issue (10): 186-193.doi: 10. 11799/ ce202510023

• 研究探讨 • 上一篇    下一篇

基于RF-PR混合模型的浮选尾煤灰分检测研究

徐博仁,钮键,郝润芳,郭立旺,郭敏,袁仲云,景超,程永强   

  1. 1. 太原理工大学 电子信息工程学院,山西 太原 030024

    2. 太原理工大学 矿业工程学院,山西 太原 030024

    3. 山西省能源互联网研究院,山西 太原 030024

  • 收稿日期:2024-11-15 修回日期:2025-01-03 出版日期:2025-10-10 发布日期:2025-11-12
  • 通讯作者: 程永强 E-mail:916720011@qq.com

Detection of Coal Ash Content in Flotation Tail based on RF-PR Mixed Model

  • Received:2024-11-15 Revised:2025-01-03 Online:2025-10-10 Published:2025-11-12
  • Contact: cheng yong qiang E-mail:916720011@qq.com

摘要:

为了精确预测浮选尾煤灰分实现浮选自动化控制,基于近红外光谱分析与图像处理技术,提出了一种基于近红外图像分析的浮选尾煤灰分预测方法,构建了多项式回归初步预测(PR)与随机森林(RF)补偿预测混合的浮选尾煤灰分智能检测模型。从尾煤图像的灰度直方图及灰度共生矩阵提取其灰度、纹理共计12个特征数据,经过特征筛选后利用PR建立了的线性预测模型,其均方根误差(RMSE)为2.752,决定系数(R2)为0.977。为了提高预测效果,在PR的基础上引入RF补偿模型,筛选后的灰度、纹理特征数据作为输入,初步预测值与真实值的差值为输出,最终将初步预测值与补偿预测值相加得到浮选尾煤灰分,建立了基于RF-PR混合的浮选尾煤灰分预测模型。该模型具有较高的精度,在低灰分区间(11.1%~21.3%)以及高灰分区间(68.9%~76.2%)段内较初步预测值与尾煤离线化验值的差值减小;在中灰分区间(21.3%~68.9%)段内,较初步预测值的平均绝对误差(MAE)下降0.07。结果表明: RF-PR模型比PR模型和RF模型具有更高的精度,可满足浮选尾煤灰分检测要求。

关键词:

浮选尾煤 , 灰分智能检测 , 近红外光谱 , 图像处理 , 机器学习

Abstract:

Aiming at the problem of accurately predicting the ash content of tailings in the flotation process to achieve automatic control, a prediction method for the ash content of flotation tailings based on near-infrared image analysis was proposed based on near-infrared spectroscopy and image processing technology. A hybrid intelligent detection model for the ash content of flotation tailings was constructed by combining polynomial regression (PR) for preliminary prediction and random forest (RF) for compensation prediction. Twelve feature data including gray level and texture were extracted from the gray histogram and gray-level co-occurrence matrix of tailings images. After feature selection, a linear prediction model was established using PR, with a root mean square error (RMSE) of 2.752 and a coefficient of determination (R2) of 0.977. To improve the prediction effect, an RF compensation model was introduced on the basis of PR. The selected gray level and texture feature data were used as input, and the difference between the preliminary prediction value and the actual value was used as output. Finally, the preliminary prediction value and the compensation prediction value were added to obtain the ash content of flotation tailings, and a prediction model for the ash content of flotation tailings based on RF-PR hybrid was established. This model has high accuracy: in the low ash content range (11.1%-21.3%) and high ash content range (68.9%-76.2%), the difference between the preliminary prediction value and the offline laboratory value of tailings is reduced; in the medium ash content range (21.3%-68.9%), the mean absolute error (MAE) of the preliminary prediction value is reduced by 0.07. The results show that the RF-PR model has higher accuracy than the PR model and the RF model, and can meet the requirements of ash content detection of flotation tailings.

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