Soft measurement for a ball mill load parameters based on integration of semi-supervised multi-source domain adaptation

LI Sisi1,2, YAN Gaowei1, YAN Fei1, CHENG Lan1, DU Yonggui1

Journal of Vibration and Shock ›› 2019, Vol. 38 ›› Issue (19) : 202-207.

PDF(774 KB)
PDF(774 KB)
Journal of Vibration and Shock ›› 2019, Vol. 38 ›› Issue (19) : 202-207.

Soft measurement for a ball mill load parameters based on integration of semi-supervised multi-source domain adaptation

  • LI Sisi1,2, YAN Gaowei1, YAN Fei1, CHENG Lan1, DU Yonggui1
Author information +
History +

Abstract

Aiming at the model mismatch problem caused by distribution difference between historical data and data to be measured after changes of a ball mill’s working conditions and the problem of less samples of working conditions to be measured, a soft measurement method for ball mill load parameters based on semi-supervised domain adaptation was studied here. Considering effects of output label on the characteristic transform matrix, firstly constraint conditions were integrated to search the characteristic transform matrix, and historical data anddata to be measured were projected into the common subspace. Then, a regression model was established according to the projected historical data and less labeled data to be measured to obtain load parameters of unlabeled data to be measured. Considering different working conditions’ historical data having information complementation feature, a soft measurement model based on integration of semi-supervised multi-source domain adaptation was built to further improve the correctness of soft measurement model. The measured data of multi-working condition tests of ball mills in laboratory showed that the proposed method can effectively improve the prediction accuracy of ball mill load parameters.

Key words

 transfer learning / ball mill load parameter / semi-supervised domain adaptation / multi-source domain

Cite this article

Download Citations
LI Sisi1,2, YAN Gaowei1, YAN Fei1, CHENG Lan1, DU Yonggui1. Soft measurement for a ball mill load parameters based on integration of semi-supervised multi-source domain adaptation[J]. Journal of Vibration and Shock, 2019, 38(19): 202-207

References

[1] 刘强,秦泗钊. 过程工业大数据建模研究展望[J]. 自动化学报,2016,42(2):161-171.
LIU Qiang, QIN Sizhao. Perspectives on big data modeling of process industries[J]. Acta Automatica Sinica, 2016, 42(2):161-171.
[2] 汤健,郑秀萍,赵立杰,等. 基于频域特征提取与信息融合的磨机负荷软测量[J]. 仪器仪表学报,2010, 31(10):2161-2167.
TANG Jian, ZHENG Xiuping, ZHAO Lijie, et al. Soft sensing of mill load based on frequency domain feature extraction and information fusion[J]. Chinese Journal of Scientific Instrument, 2010, 31(10):2161-2167.
[3] DAS S P, DAS D P, BEHERA S K, et al. Interpretation of mill vibration signal via wireless sensing[J]. Minerals Engineering, 2011, 24(3-4): 245-251.
[4] 刘卓,柴天佑,汤健. 一种多尺度球磨机筒体振动频谱分析与建模方法[J]. 东北大学学报(自然科学版),2015,36(3):305-308.
LIU Zhuo, CHAI Tianyou, TANG Jian. Multi-scale Shell Vibration Frequency Spectrum Analysis and Modeling Approach of Ball Mill[J]. Journal of Northeastern University(Natural Science), 2015, 36(3):305-308.
[5] SU Z G, WANG P H, SONG Z L. Kernel based nonlinear fuzzy regression model[J]. Engineering Applications of Artificial Intelligence, 2013, 26(2):724-738.
[6] TANG J, WANG D H, CHAI T Y. Predicting mill load using partial least squares and extreme learning machines[J]. Soft Computing, 2012, 16(9): 1585-1594.
[7] MA H H, HU Y, SHI H B. A novel local neighborhood standardization strategy and its application in fault detection of multimode processes[J]. Chemometrics and Intelligent Laboratory Systems, 2012, 118: 287-300.
[8] RATO T J, REIS M S. Markovian and Non-Markovian sensitivity enhancing transformations for process monitoring[J]. Chemical Engineering Science, 2017, 163:223-233.
[9] MA Y X, SHI H B, Ma H H, et al. Dynamic process monitoring using adaptive local outlier factor[J]. Chemometrics and Intelligent Laboratory Systems, 2013, 127:89-101.
[10] JAFFEL I, TAOUALI O, HARKAT M F, et al. Moving window KPCA with reduced complexity for nonlinear dynamic process monitoring[J]. ISA Transactions, 2016, 64:184-192.
[11] SHAO W M, TIAN X M. Semi-supervised selective ensemble learning based on distance to model for nonlinear soft sensor development[J]. Neurocomputing, 2017, 222:91-104.
[12] 张景祥,王士同,邓赵红,等. 融合异构特征的子空间迁移学习算法[J].自动化学报,2014,40(2):236-246.
ZHANG Jingxiang,WANG Shitong,DENG Zhaohong,et al. A subspace transfer learning algorithm integrating heterogeneous features[J]. Acta Automatica Sinica, 2014, 40(2):236-246.
[13] ZUO H, ZHANG G Q, PEDRYCZ W,et al. Fuzzy regression transfer learning in Takagi-Sugeno fuzzy models[J]. IEEE Transactions on Fuzzy Systems, 2017, 25(6):1795-1807.
[14] ZHANG L, LIU Y, DENG P L. Odor recognition in multiple E-nose systems with cross-domain discriminative subspace learning[J]. IEEE Transactions on Instrumentation &Measurement, 2017, 66(7):1679-1692.
[15] 杜永贵,李思思,阎高伟,等. 基于流形正则化域适应湿式球磨机负荷参数软测量[J]. 化工学报,2018,69(3): 1244-1251. 
DU Yonggui, LI Sisi, YAN Gaowei, et al. Soft sensor of wet ball mill load parameter based on domain adaptation with manifold regularization[J]. CIESC Journal, 2018, 69(3): 1244-1251. 
[16] GRETTON A, BOUSQUET O, SMOLA A, et al. Measuring statistical dependence with Hilbert-Schmidt norms[C]. //International Conference on Algorithmic Learning Theory. Algorithmic learning theory. Berlin, Heidelberg:Springer, 2005. 63-77.
[17] 汤健,田福庆,贾美英,等. 基于频谱数据驱动的旋转机械设备负荷软测量[M].北京:国防工业出版社,2015.
[18] HE X F, CAI D, YAN S C, et al. Neighborhood Preserving Embedding[C].// ICCV'05 Proceedings of the Tenth IEEE International Conference on Computer Vision. USA: IEEE Computer Society Washington, 2005. 1208-1213.
PDF(774 KB)

Accesses

Citation

Detail

Sections
Recommended

/