Identification of Autoregressive Moving-Average Parameters of Time Series
نویسندگان
چکیده
,4bstme—A pmeedurefor sequentiaffy eatirnating the parameters and orders of mixed autoregmsive moving-average signaf modefs from tirneserfes data is presented. Iderrtfffftion ia performed by first fderstffying a purely asrtoregmwive aignaf model. Tire parametem and orders of tbe mixed autoregmsaive moving-average proeeaa are then gfven from tbe solutton of sfmple sdgebraic equations involving the purely autoregresive model parameters.
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