Relevance vector machine with tuning based on self-adaptive differential evolution approach for predictive modelling of a chemical process

被引:20
作者
Acosta, Simone Massulini [1 ]
Amoroso, Anderson Levati [1 ]
Sant Anna, Angelo Marcio Oliveira [2 ]
Canciglieri Junior, Osiris [3 ]
机构
[1] Univ Tecnol Fed Parana, Acad Dept Elect, Sete Setembro Ave,3165, Curitiba, Parana, Brazil
[2] Univ Fed Bahia, Polytech Sch, Aristides Novis St,2, Salvador, BA, Brazil
[3] Pontificia Univ Catolica Parana, Ind & Syst Engn Grad Program, Imaculada Conceicao St,1155, Curitiba, Parana, Brazil
关键词
Machine learning; Relevance vector machine; Differential evolution; Optimization; POINT PHOSPHORUS-CONTENT; STEELMAKING PROCESS; GAUSSIAN-PROCESSES; BETA REGRESSION; RANDOM FORESTS; OPTIMIZATION; DEPHOSPHORIZATION;
D O I
10.1016/j.apm.2021.01.057
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In the past decade, relevance vector machines have gained the attention of many researchers, and this machine learning technique is a Bayesian sparse kernel method, both for classification and regression problems. In general, the choice of appropriate learning hyperparameters is a crucial step in obtaining a well-tuned model. To overcome this issue, we apply a self-adaptive differential evolution algorithm. In this paper, we propose a relevance vector machine for regression combined with a novel self-adaptive differential evolution approach for predictive modelling of phosphorus concentration levels in a steelmaking process with real data. We compared the performance of proposed relevance vector machine (RVM) with other machine learning techniques, such as random forest (RF), artificial neural network (ANN), K-nearest neighbors (K-NN), and also with statistical learning techniques as, Beta regression model and multiple linear regression model. The RVM has performance better than RF, ANN, K-NN, and statistical techniques used. Our study indicates that RVM models are an adequate tool for the prediction of the phosphorus concentration levels in the steelmaking process. (c) 2021 Elsevier Inc. All rights reserved.
引用
收藏
页码:125 / 142
页数:18
相关论文
共 78 条
  • [51] Mazumdar D, 2010, MODELING OF STEELMAKING PROCESSES, P1
  • [52] Mitchell, 1997, MACH LEARN
  • [53] Prediction of feed abrasive value by artificial neural networks and multiple linear regression
    Norouzian, M. A.
    Asadpour, S.
    [J]. NEURAL COMPUTING & APPLICATIONS, 2012, 21 (05) : 905 - 909
  • [54] Beta control charts for monitoring fraction data
    Oliveira Sant'Anna, Angelo Marcio
    ten Caten, Carla Schwengber
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2012, 39 (11) : 10236 - 10243
  • [55] Pournelle G. H., 1953, Journal of Mammalogy, V34, P133, DOI 10.1890/0012-9658(2002)083[1421:SDEOLC]2.0.CO
  • [56] 2
  • [57] Price K., 2005, NAT COMP SER, DOI 10.1007/3-540-31306-0
  • [58] Machine Learning-Based Prediction of a BOS Reactor Performance from Operating Parameters
    Rahnama, Alireza
    Li, Zushu
    Sridhar, Seetharaman
    [J]. PROCESSES, 2020, 8 (03)
  • [59] Rasmussen CE, 2005, ADAPT COMPUT MACH LE, P1
  • [60] A tutorial on Gaussian process regression: Modelling, exploring, and exploiting functions
    Schulz, Eric
    Speekenbrink, Maarten
    Krause, Andreas
    [J]. JOURNAL OF MATHEMATICAL PSYCHOLOGY, 2018, 85 : 1 - 16