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Hybrid Gaussian/Non-Gaussian Quality-Related Nonlinear Process Monitoring

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Process Monitoring and Fault Diagnosis Based on Multivariable Statistical Analysis

Part of the book series: Engineering Applications of Computational Methods ((EACM,volume 19))

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Abstract

In complex industrial processes, the mixed characteristics of Gaussian/non-Gaussian and nonlinear data are a common phenomenon. This process is characterized by a nonlinear distribution among the different variables, while some variables are non-Gaussian.

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Kong, X., Luo, J., Feng, X. (2024). Hybrid Gaussian/Non-Gaussian Quality-Related Nonlinear Process Monitoring. In: Process Monitoring and Fault Diagnosis Based on Multivariable Statistical Analysis. Engineering Applications of Computational Methods, vol 19. Springer, Singapore. https://doi.org/10.1007/978-981-99-8775-7_10

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