›› 2014, Vol. 22 ›› Issue (11/12): 1243-1253.DOI: 10.1016/j.cjche.2014.09.021
• PROCESS SYSTEMS ENGINEERING AND PROCESS SAFETY • Previous Articles Next Articles
Lianfang Cai, Xuemin Tian, Ni Zhang
Lianfang Cai, Xuemin Tian, Ni Zhang
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|||JIANG Qingchao, YAN Xuefeng . Statistical Monitoring of Chemical Processes Based on Sensitive Kernel Principal Components [J]. Chin.J.Chem.Eng., 2013, 21(6): 633-643.|
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|||DENG Xiaogang, TIAN Xuemin. Sparse Kernel Locality Preserving Projection and Its Application in Nonlinear Process Fault Detection [J]. Chin.J.Chem.Eng., 2013, 21(2): 163-170.|