A collection of Fault Diagnosis python codes
pip install -r requirements.txt
python CPLS_demo.py
Qin, S. J. , & Zheng, Y. . (2013). Quality‐relevant and process‐relevant fault monitoring with concurrent projection to latent structures. AIChE Journal*,* 59.
在文件目录下
pip install -r requirements.txt
python DiCCA_demo.py
Yining Dong ∗, ∗∗ S. Joe Qin ∗∗, & ∗∗∗. (2018). Dynamic-inner canonical correlation and causality analysis for high dimensional time series data. IFAC-PapersOnLine, 51(18), 476-481.
在文件目录下
pip install -r requirements.txt
python Dipca_demo.py
Dong, Y. , & Qin, S. J. . (2017). A novel dynamic pca algorithm for dynamic data modeling and process monitoring. Journal of Process Control, S095915241730094X.
pip install -r requirements.txt
python DiPLS_demo.py
在DiPLS1.0基础上,将DiPLS封装成类
pip install -r requirements.txt
python DiPLS_demo.py
Dong, Y. , & Qin, S. J. . (2015). Dynamic-inner partial least squares for dynamic data modeling. IFAC-PapersOnLine, 48(8), 117-122.
程序包括两个应用案例, 一个是数值仿真案例,另外一个TE过程.
- 利用累积方差贡献率选取主元的数量
- 贡献图
- 重构贡献图
对于数值仿真案例, 运行demo_numerical_example.m
对于TE过程, 运行demo_TE.m
待补充
pip install -r requirements.txt
python TPLS_demo.py
Zhou, Donghua, Li, Gang, Qin, & S., et al. (2009). Total projection to latent structures for process monitoring. AIChE Journal.
pip install -r requirements.txt
python TPLS_demo.py
将TPLS相关函数封装成类
Zhou, Donghua, Li, Gang, Qin, & S., et al. (2009). Total projection to latent structures for process monitoring. AIChE Journal.
Code From:LeiHu