Flocculation-dewatering prediction of fine mineral tailings using a hybrid machine learning approach

被引:54
作者
Qi, Chongchong [1 ,2 ]
Ly, Hai-Bang [3 ]
Chen, Qiusong [1 ]
Tien-Thinh Le [4 ]
Vuong Minh Le [5 ]
Binh Thai Pham [3 ]
机构
[1] Cent South Univ, Sch Resources & Safety Engn, Changsha 410083, Peoples R China
[2] Univ Western Australia, Sch Civil Environm & Min Engn, Perth, WA 6009, Australia
[3] Univ Transport Technol, Hanoi 100000, Vietnam
[4] Duy Tan Univ, Inst Res & Dev, Da Nang 550000, Vietnam
[5] Vietnam Natl Univ Agr, Fac Engn, Hanoi 100000, Vietnam
关键词
Polymer; Flocculation and dewatering; Mineral processing tailings; Principal component analysis; PSO and ANFIS; Monte Carlo simulations; PRINCIPAL COMPONENT ANALYSIS; NEURAL-NETWORK; UNCERTAINTY QUANTIFICATION; MODELING UNCERTAINTIES; HIGH-FREQUENCY; PARTICLE-SIZE; OPTIMIZATION; IDENTIFICATION; DYNAMICS; STRENGTH;
D O I
10.1016/j.chemosphere.2019.125450
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Polymer-assisted flocculation-dewatering of mineral processing tailings (MPT) is crucial for its environmental disposal. To reduce the number of laboratory experiments, this study proposes a novel and hybrid machine learning (ML) method for the prediction of the flocculation-dewatering performance. The proposed ML method utilizes principle component analysis (PCA) for the dimension-reduction of the input space. Then, ML prediction is performed using the combination of particle swarm optimisation (PSO) and adaptive neuro-fuzzy inference system (ANFIS). Monte Carlo simulations are used for the converged results. An experimental dataset of 102 data instances is prepared. 17 variables are chosen as inputs and the initial settling rate (ISR) is chosen as the output. Along with the raw dataset, two new datasets are prepared based on the cumulative sum of variance, namely PCA99 with 9 variables and PCA95 with 7 variables. The results show that Monte Carlo simulations need to be performed for over 100 times to reach the converged results. Based on the statistic indicators, it is found that the ML prediction on PCA99 and PCA95 is better than that on the raw dataset (average correlation coefficient is 0.85 for the raw dataset, 0.89 for the PCA99 dataset and 0.88 for the PCA95 dataset). Overall speaking, ML prediction has good prediction performance and it can be employed by the mine site to improve the efficiency and cost-effectiveness. This study presents a benchmark study for the prediction of ISR, which, with better consolidation and development, can become important tools for analysing and modelling flocculate-settling experiments. (C) 2019 Elsevier Ltd. All rights reserved.
引用
收藏
页数:16
相关论文
共 78 条
[1]  
[Anonymous], 2005, Fuzzy systems engineering: theory and practice
[2]   Development of artificial intelligence models for the prediction of Compression Coefficient of soil: An application of Monte Carlo sensitivity analysis [J].
Binh Thai Pham ;
Manh Duc Nguyen ;
Dong Van Dao ;
Prakash, Indra ;
Hai-Bang Ly ;
Tien-Thinh Le ;
Lanh Si Ho ;
Kien Trung Nguyen ;
Trinh Quoc Ngo ;
Vu Hoang ;
Le Hoang Son ;
Huong Thanh Thi Ngo ;
Hieu Trung Tran ;
Ngoc Minh Do ;
Hiep Van Le ;
Huu Loc Ho ;
Dieu Tien Bui .
SCIENCE OF THE TOTAL ENVIRONMENT, 2019, 679 :172-184
[3]   A novel artificial intelligence approach based on Multi-layer Perceptron Neural Network and Biogeography-based Optimization for predicting coefficient of consolidation of soil [J].
Binh Thai Pham ;
Manh Duc Nguyen ;
Kien-Trinh Thi Bui ;
Prakash, Indra ;
Chapi, Kamran ;
Dieu Tien Bui .
CATENA, 2019, 173 :302-311
[4]   A coupled multivariate statistics, geostatistical and machine-learning approach to address soil pollution in a prototypical Hg-mining site in a natural reserve [J].
Boente, C. ;
Albuquerque, M. T. D. ;
Gerassis, S. ;
Rodriguez-Valdes, E. ;
Gallego, J. R. .
CHEMOSPHERE, 2019, 218 :767-777
[5]   Organic polyelectrolytes in water treatment [J].
Bolto, Brian ;
Gregory, John .
WATER RESEARCH, 2007, 41 (11) :2301-2324
[6]   Uncertainty quantification in computational linear structural dynamics for viscoelastic composite structures [J].
Capillon, R. ;
Desceliers, C. ;
Soize, C. .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2016, 305 :154-172
[7]   Assessing Dynamic Conditions of the Retaining Wall: Developing Two Hybrid Intelligent Models [J].
Chen, Hui ;
Asteris, Panagiotis G. ;
Armaghani, Danial Jahed ;
Gordan, Behrouz ;
Pham, Binh Thai .
APPLIED SCIENCES-BASEL, 2019, 9 (06)
[8]   Prediction of bioavailability and toxicity of complex chemical mixtures through machine learning models [J].
Cipullo, S. ;
Snapir, B. ;
Prpich, G. ;
Campo, P. ;
Coulon, F. .
CHEMOSPHERE, 2019, 215 :388-395
[9]   Parameter Selection and Performance Comparison of Particle Swarm Optimization in Sensor Networks Localization [J].
Cui, Huanqing ;
Shu, Minglei ;
Song, Min ;
Wang, Yinglong .
SENSORS, 2017, 17 (03)
[10]  
Defernez M, 1999, ANALYST, V124, P1675, DOI 10.1039/a905556h