Wenlan JiangTao ZhangHuangang Wang
In this paper, a novel variant of PCA, joint sparse principal component analysis(JSPCA), is adopted into robust sparse fault detection. By imposing l 2,1 norm jointly on the loss function and the regularization term of traditional sparse PCA, the JSPCA based fault detection method achieves sparse feature selection and robust fault detection simultaneously without high computation cost. The effectiveness of the proposed method is evaluated on the Tennessee Eastman process.
Yi LiuJiusun ZengLei XieShihua LuoHongye Su
Yi LiuJiusun ZengLei XieShihua LuoHongye Su
Shuangyan YiZhihui LaiZhenyu HeYiu‐ming CheungYang Liu
Shriram GajjarMurat KülahçıAhmet Palazoğlu
Hui ZouTrevor HastieRobert Tibshirani