Oscar F. BECERRA-ANGARITA, Yuli A. ALVAREZ-PIZARRO
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Granger causality procedeture to diagnosis and failture in industrial systems
Industrial process supervision is an important subject now days due to the increased requirement for safer processes for operators and effective for companies. Control loops affected by disturbs, are grouped with PCA, based on their increased variability and the causal relationships between them are detected via Granger causality. A graph drawing algorithm allows indicating the source of the disturbance. The procedure is applied to data from a simulated chemical process CSTR. The proposed procedeture correctly indicated the sources of disturbances.