Lee Dae Sung, Park Jong Moon, Vanrolleghem Peter A
Advanced Environmental Biotechnology Research Center (AEBRC), School of Environmental Science and Engineering, Pohang University of Science and Technology, San 31, Hyoja-dong, Nam-gu, Pohang, Gyeongbuk 790-784, Republic of Korea.
J Biotechnol. 2005 Mar 16;116(2):195-210. doi: 10.1016/j.jbiotec.2004.10.012. Epub 2004 Dec 25.
In recent years, multiscale monitoring approaches, which combine principal component analysis (PCA) and multi-resolution analysis (MRA), have received considerable attention. These approaches are potentially very efficient for detecting and analyzing diverse ranges of faults and disturbances in chemical and biochemical processes. In this work, multiscale PCA is proposed for fault detection and diagnosis of batch processes. Using MRA, measurement data are decomposed into approximation and details at different scales. Adaptive multiway PCA (MPCA) models are developed to update the covariance structure at each scale to deal with changing process conditions. Process monitoring by a unifying adaptive multiscale MPCA involves combining only those scales where significant disturbances are detected. This multiscale approach facilitates diagnosis of the detected fault as it hints to the time-scale under which the fault affects the process. The proposed adaptive multiscale method is successfully applied to a pilot-scale sequencing batch reactor for biological wastewater treatment.
近年来,结合主成分分析(PCA)和多分辨率分析(MRA)的多尺度监测方法受到了广泛关注。这些方法对于检测和分析化学及生化过程中各种类型的故障和干扰可能非常有效。在这项工作中,提出了多尺度PCA用于间歇过程的故障检测与诊断。利用MRA,将测量数据分解为不同尺度下的近似值和细节。开发了自适应多向PCA(MPCA)模型,以在每个尺度上更新协方差结构,从而应对不断变化的过程条件。通过统一的自适应多尺度MPCA进行过程监测,仅涉及将检测到显著干扰的那些尺度进行组合。这种多尺度方法有助于对检测到的故障进行诊断,因为它提示了故障影响过程的时间尺度。所提出的自适应多尺度方法成功应用于用于生物废水处理的中试规模序批式反应器。