2013
DOI: 10.36001/phmconf.2013.v5i1.2316
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Multivariate Fault Detection using Vector Autoregressive Moving Average and Orthogonal Transformation in Residual Space

Abstract: We propose the use of multivariate orthogonal space transformations and Vector Autoregressive Moving-Average (VARMA) models in combination with data-driven system identification models to improve residual-based approaches to fault detection in rolling mills. Introducing VARMA models allows us to build k-step ahead multi-dimensional prediction models including the time lags that best explain the target. Multivariate orthogonal space transformations pro- vide estimates for the dynamical para… Show more

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