Journal of Shanghai Jiao Tong University ›› 2021, Vol. 55 ›› Issue (11): 1417-1428.doi: 10.16183/j.cnki.jsjtu.2020.290
Special Issue: 《上海交通大学学报》2021年12期专题汇总专辑; 《上海交通大学学报》2021年“自动化技术、计算机技术”专题
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ZHAO Xiaoqianga,b,c(), MOU Miaoa
Received:
2020-09-14
Online:
2021-11-28
Published:
2021-12-03
CLC Number:
ZHAO Xiaoqiang, MOU Miao. Batch Process Monitoring with Dynamic-Static Joint Indicator Based on GSFA-GNPE[J]. Journal of Shanghai Jiao Tong University, 2021, 55(11): 1417-1428.
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URL: https://xuebao.sjtu.edu.cn/EN/10.16183/j.cnki.jsjtu.2020.290
Tab.2
Detection rates and false alarm rates of three algorithms for Fault 1 and Fault 2
故障序号 | NPE | SFA | GSFA-GNPE | ||||||
---|---|---|---|---|---|---|---|---|---|
T2 | SPE | S2 | SPE | BIC-C2 | BIC-SPE | BIC | |||
1 | 0.905/0.190 | 0.850/0.110 | 0.795/0.185 | 0.794/0.160 | 0.985/0.065 | 0.920/0.105 | 0.995/0.095 | ||
2 | 0.75/0.16 | 0.925/0.085 | 0.630/0.145 | 0.63/0.12 | 0.835/0.145 | 0.895/0.060 | 0.945/0.065 |
Tab.5
Fault detection rates of four failed batches during penicillin fermentation
故障 序号 | NPE | SFA | TNPE | DPCA | GSFA-GNPE | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
T2 | SPE | S2 | SPE | T2 | SPE | T2 | SPE | BIC-C2 | BIC-SPE | BIC | ||||||
1 | 1/0.085 | 1/0.005 | 1/0.05 | 1/0.005 | 1/0.06 | 0.995/0.005 | 0.99/0.08 | 1/0.05 | 1/0.04 | 1/0.04 | 1/0.005 | |||||
2 | 0.945/0.1 | 0.95/0 | 0.875/0.02 | 0.98/0 | 0.97/0.15 | 0.965/0.125 | 0.915/0.25 | 0.95/0.135 | 0.925/0.03 | 1/0 | 0.995/0.03 | |||||
3 | 0.99/0.08 | 1/0.01 | 0.98/0.01 | 1/0.005 | 1/0.065 | 1/0.02 | 0.99/0.005 | 1/0.03 | 1/0.01 | 1/0 | 1/0.01 | |||||
4 | 0.44/0.105 | 0.94/0 | 0.925/0.065 | 0.475/0 | 0.65/0.22 | 0.94/0 | 0.93/0.07 | 0.915/0.05 | 0.815/0.04 | 0.91/0 | 0.975/0.04 |
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