Title :
Monitoring for Nonlinear Multiple Modes Process Based on LL-SVDD-MRDA
Author :
Wenli Du ; Ying Tian ; Feng Qian
Author_Institution :
Key Lab. of Adv. Control & Optimization for Chem. Processes, East China Univ. of Sci. & Technol., Shanghai, China
Abstract :
This study proposes an online monitoring technique for nonlinear multiple-mode problems in industrial processes. The contributions of the proposed technique are summarized as follows: 1) Lazy learning (LL), a new adaptive local modeling method, is introduced for multiple-mode process monitoring. In this method, multiple modes are separated and accurately modeled online, and the between-mode dynamic process is considered. 2) The modified receptor density algorithm (MRDA) exhibiting superior nonlinear ability is introduced to analyze the residuals between the actual system output and the model-predicted output. The simulation of the Tennessee Eastman process with multiple operation modes shows that compared with other techniques mentioned in this study, the proposed technique performs more accurately and is more suitable for nonlinear processes with multiple operation modes.
Keywords :
learning (artificial intelligence); process monitoring; production engineering computing; support vector machines; LL-SVDD-MRDA; Tennessee Eastman process; adaptive local modeling method; between-mode dynamic process; industrial processes; lazy learning; modified receptor density algorithm; nonlinear multiple mode process monitoring; nonlinear multiple-mode problems; online monitoring technique; residual analysis; support vector data description; Algorithm design and analysis; Chemical processes; Computerized monitoring; Fault detection; Predictive models; Principal component analysis; Between-mode dynamic process; lazy learning (LL); modified receptor density algorithm (MRDA); multiple operation modes; nonlinear; support vector data description (SVDD);
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
DOI :
10.1109/TASE.2013.2285571