TY - JOUR
T1 - Bayesian optimization of multiscale kernel principal component analysis and its application to model Gas-to-liquid (GTL) process data
AU - Fezai, Radhia
AU - Malluhi, Byanne
AU - Basha, Nour
AU - Ibrahim, Gasim
AU - Choudhury, Hanif A.
AU - Challiwala, Mohamed S.
AU - Nounou, Hazem
AU - Elbashir, Nimir
AU - Nounou, Mohamed
N1 - Publisher Copyright:
© 2023 Elsevier Ltd
PY - 2023/12/1
Y1 - 2023/12/1
N2 - Kernel methods map the data from original space into a higher-dimensional space in which linear methods are applied. In many applications, the inverse mapping is also important, and the pre-image of a feature vector must be found in the original space. Kernel principal component analysis (KPCA) based kernel density estimation (KDE) has been developed to solve this problem. However, the performance of the KPCA technique greatly depends on the choice of some parameters which can lead to poor modeling performance when these parameters are not well identified. Thus, fully Bayesian optimization KPCA (BOKPCA) is proposed to enhance the performance of the KPCA model. BOKPCA method aims to automatically select the best parameters of the KPCA model. Generally, kernel methods struggle to handle nonlinear data contaminated with high levels of noise. This is because the noise affects every principal component, making it challenging to mitigate its influence during the reconstruction step. Consequently, to further enhance the ability of KPCA and BOKPCA models, we propose to integrate multi-scale filtering with these two models. The efficiency of the proposed methods are evaluated using a simulated nonlinear process and real data generated from a bench-scale Fischer–Tropsch (FT) process.
AB - Kernel methods map the data from original space into a higher-dimensional space in which linear methods are applied. In many applications, the inverse mapping is also important, and the pre-image of a feature vector must be found in the original space. Kernel principal component analysis (KPCA) based kernel density estimation (KDE) has been developed to solve this problem. However, the performance of the KPCA technique greatly depends on the choice of some parameters which can lead to poor modeling performance when these parameters are not well identified. Thus, fully Bayesian optimization KPCA (BOKPCA) is proposed to enhance the performance of the KPCA model. BOKPCA method aims to automatically select the best parameters of the KPCA model. Generally, kernel methods struggle to handle nonlinear data contaminated with high levels of noise. This is because the noise affects every principal component, making it challenging to mitigate its influence during the reconstruction step. Consequently, to further enhance the ability of KPCA and BOKPCA models, we propose to integrate multi-scale filtering with these two models. The efficiency of the proposed methods are evaluated using a simulated nonlinear process and real data generated from a bench-scale Fischer–Tropsch (FT) process.
KW - Bayesian Optimization
KW - Bayesian Optimization KPCA
KW - Filtering
KW - Gas-to-liquid (GTL) processes
KW - KPCA based kernel density estimation (KDE)
KW - Kernel PCA
KW - Multi-scale (MS)
KW - Pre-image
KW - Principal component analysis (PCA)
UR - http://www.scopus.com/inward/record.url?scp=85174191330&partnerID=8YFLogxK
U2 - 10.1016/j.energy.2023.129221
DO - 10.1016/j.energy.2023.129221
M3 - Article
AN - SCOPUS:85174191330
SN - 0360-5442
VL - 284
JO - Energy
JF - Energy
M1 - 129221
ER -