TY - GEN
T1 - Novel Mahalanobis Distance and Variable Nearest Neighbors to Construct Weight Matrix based LPP
T2 - 2022 Chinese Automation Congress, CAC 2022
AU - Zhu, Qun Xiong
AU - Qing, Hao Yang
AU - Zhang, Ning
AU - Xu, Yuan
AU - He, Yan Lin
N1 - Publisher Copyright:
© 2022 IEEE.
PY - 2022
Y1 - 2022
N2 - Fault diagnosis techniques based on data-driven algorithms go mainstream gradually in industrial processes. Unfortunately, traditional data-driven algorithms cannot deal with massive high-dimensional and nonlinear strong correlation data. Based on this problem, Novel Mahalanobis Distance and Variable Nearest Neighbors to Construct Weight Matrix based LPP (MV-LPP) is proposed in this paper. MV-LPP replaces the Euclidean distance used to measure the similarity between two sample points with the Mahalanobis distance, which takes in account the correlation of the samples, so that it can exclude the interference of correlation between the variables. Besides, the MV-LPP algorithm, corresponding to the location of each sample point in the data set, optimizes the method to screen the nearest neighbor points in the locality preserving projections algorithm, to the extent that MV-LPP can obtain the appropriate number of nearest neighbor points and the weight matrix can better preserver the spatial structure shape and achieve a better mapping effect. In final, a dataset of Tennessee Eastman Process (TEP) is utilized to validate the MV-LPP method and the positive results proved its effectiveness.
AB - Fault diagnosis techniques based on data-driven algorithms go mainstream gradually in industrial processes. Unfortunately, traditional data-driven algorithms cannot deal with massive high-dimensional and nonlinear strong correlation data. Based on this problem, Novel Mahalanobis Distance and Variable Nearest Neighbors to Construct Weight Matrix based LPP (MV-LPP) is proposed in this paper. MV-LPP replaces the Euclidean distance used to measure the similarity between two sample points with the Mahalanobis distance, which takes in account the correlation of the samples, so that it can exclude the interference of correlation between the variables. Besides, the MV-LPP algorithm, corresponding to the location of each sample point in the data set, optimizes the method to screen the nearest neighbor points in the locality preserving projections algorithm, to the extent that MV-LPP can obtain the appropriate number of nearest neighbor points and the weight matrix can better preserver the spatial structure shape and achieve a better mapping effect. In final, a dataset of Tennessee Eastman Process (TEP) is utilized to validate the MV-LPP method and the positive results proved its effectiveness.
KW - Fault Diagnosis
KW - Locality Preserving Projections
KW - Nearest Neighbors
KW - Tennessee Eastman Process
UR - http://www.scopus.com/inward/record.url?scp=85151131775&partnerID=8YFLogxK
U2 - 10.1109/CAC57257.2022.10056115
DO - 10.1109/CAC57257.2022.10056115
M3 - Conference contribution
AN - SCOPUS:85151131775
T3 - Proceedings - 2022 Chinese Automation Congress, CAC 2022
SP - 2263
EP - 2267
BT - Proceedings - 2022 Chinese Automation Congress, CAC 2022
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 25 November 2022 through 27 November 2022
ER -