首页|Recursive Dynamic Transformed Component Statistical Analysis for Fault Detection in Dynamic Processes

Recursive Dynamic Transformed Component Statistical Analysis for Fault Detection in Dynamic Processes

扫码查看
This paper considers the problem of dynamic process monitoring. Based on the recently proposed recursive transformed component statistical analysis (RTCSA), its dynamic counterpart recursive dynamic transformed component statistical analysis (RDTCSA) is proposed. With time lag shift technique, the augmented sample covariance matrices are used for eigendecomposition and further data transformation. The obtained dynamic transformed components include dynamic information of measurements, whose statistics are used for process monitoring. The difference between RTCSA and RDTCSA for monitoring time-correlated process data is analyzed, which implies that RDTCSA is more sensitive to dynamic changes. In addition, the detectability of RDTCSA for monitoring time-correlated process data is analyzed in a statistical sense. A numerical simulation and the benchmark Tennessee Eastman process (TEP) both indicate the superior fault detectability of RDTCSA compared with the existing methods. Specifically, RDTCSA can effectively detect fault 15 in TEP with detection rate over 95\%.

MonitoringCovariance matricesPrincipal component analysisFault detectionIndexesStandards

Jun Shang、Maoyin Chen

展开 >

2018

IEEE transactions on industrial electronics: Institute of Electrical and Electronics Engineers transactions on industrial electronics
  • 28
  • 43