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Gaussian Regression based on Models with two Stochastic Processes

Authors:Leithead W. E., University of Strathclyde, United Kingdom
Seng Neo Kian, NUIM, Ireland
Leith D. J., NUIM, Ireland
Topic:1.1 Modelling, Identification & Signal Processing
Session:Time Series Modelling
Keywords: Identification, Gaussian processes, independent priors, independent posteriors

Abstract

When data contains components with different characteristics and it is required to identify both, standard Gaussian regression, based on a model with a single stochastic process, is inadequate. In this paper, a novel adaptation of Gaussian regression, based on models with two stochastic processes, is presented. In both the prior and posterior joint probability distributions, the Gaussian processes for the two components are independent. The effectiveness of the revised Gaussian regression method is demonstrated by application to wind turbine time series data.