The partial least squares (PLS) algorithm is a commonly used key performance indicator (KPI)-related performance monitoring method. To address nonlinear features in the process, this paper proposes neural component analysis (NCA)-PLS, which combines PLS with NCA. (NCA)-PLS realizes all the principles of PLS by introducing a new loss function and a new principal component selection mechanism to NCA. Then, the gradient descent formulas for network training are rederived. NCA-PLS can extract components with large correlations with KPI variables and adopt them for data reconstruction. Simulation tests using a mathematical model and the Tennessee Eastman process show that NCA-PLS can successfully handle nonlinear relationships in process data and that it performs much better than PLS, KPLS, and NCA.
CITATION STYLE
Li, Z., Wang, Y., Hou, W., Lu, S., Xue, Y., & Deprizon, S. (2022). Neural Component Analysis for Key Performance Indicator Monitoring. ACS Omega, 7(42), 37248–37255. https://doi.org/10.1021/acsomega.2c03515
Mendeley helps you to discover research relevant for your work.