2011
DOI: 10.1029/2011jd015850
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A hybrid-domain approach for modeling climate data time series

Abstract: [1] In order to model climate data time series that often contain periodic variations, trends, and sudden changes in mean (mean shifts, mostly artificial), this study proposes a hybrid-domain (HD) algorithm, which incorporates a time domain test and a newly developed frequency domain test through an iterative procedure that is analogue to the well known backfitting algorithm. A two-phase competition procedure is developed to address the confounding issue between modeling periodic variations and mean shifts. A … Show more

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Cited by 4 publications
(2 citation statements)
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“…The true content of ε includes the spatial difference between the climate of the candidate series and that of the reference series. For this climate effect, ε tends to have persistence and is often modelled with a first order autoregressive process (Lund et al ., 2007; Wen et al ., 2011). However, in a separate Europe‐wide application of AHOPS, autocorrelation for monthly precipitation was found to be low and not significant when the annual cycle is removed (Rustemeier et al ., 2017).…”
Section: Methodsmentioning
confidence: 99%
“…The true content of ε includes the spatial difference between the climate of the candidate series and that of the reference series. For this climate effect, ε tends to have persistence and is often modelled with a first order autoregressive process (Lund et al ., 2007; Wen et al ., 2011). However, in a separate Europe‐wide application of AHOPS, autocorrelation for monthly precipitation was found to be low and not significant when the annual cycle is removed (Rustemeier et al ., 2017).…”
Section: Methodsmentioning
confidence: 99%
“…Because of these induced trends, it was decided that the focus be moved to the Period 1 results only. Future improvements to the RHtests will include the ability to account for a trend change (Wen et al 2011).…”
Section: Rhtestsv3mentioning
confidence: 99%