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% Generated by roxygen2: do not edit by hand
% Please edit documentation in R/estpoly.R
\name{oe}
\alias{oe}
\title{Estimate Output-Error Models}
\usage{
oe(x, order = c(1, 1, 0), options = optimOptions())
}
\arguments{
\item{x}{an object of class \code{idframe}}

\item{order}{Specification of the orders: the four integer components 
(nb,nf,nk) are order of polynomial B + 1, order of the polynomial F,
and the input-output delay respectively}

\item{options}{Estimation Options, setup using 
\code{\link{optimOptions}}}
}
\value{
An object of class \code{estpoly} containing the following elements:

\tabular{ll}{
   \code{sys} \tab an \code{idpoly} object containing the 
   fitted OE coefficients \cr
   \code{fitted.values} \tab the predicted response \cr
   \code{residuals} \tab the residuals  \cr
   \code{input} \tab the input data used \cr
   \code{call} \tab the matched call \cr
   \code{stats} \tab A list containing the following fields:
     \code{vcov} - the covariance matrix of the fitted coefficients,
     \code{sigma} - the standard deviation of the innovations \cr
   \code{options} \tab Option set used for estimation. If no 
   custom options were configured, this is a set of default options. \cr
   \code{termination} \tab Termination conditions for the iterative
    search used for prediction error minimization:
     \code{WhyStop} - Reason for termination,
     \code{iter} - Number of Iterations, 
     \code{iter} - Number of Function Evaluations 
    
 }
}
\description{
Fit an output-error model of the specified order given the input-output data
}
\details{
SISO OE models are of the form 
\deqn{
   y[k] + f_1 y[k-1] + \ldots + f_{nf} y[k-nf] = b_{nk} u[k-nk] + 
   \ldots + b_{nk+nb} u[k-nk-nb] + f_{1} e[k-1] + \ldots f_{nf} e[k-nf]
   + e[k] 
}
The function estimates the coefficients using non-linear least squares 
(Levenberg-Marquardt Algorithm)
\\
The data is expected to have no offsets or trends. They can be removed 
using the \code{\link{detrend}} function.
}
\examples{
data(oesim)
z <- dataSlice(data,end=1533) # training set
mod_oe <- oe(z,c(2,1,2))
mod_oe 
plot(mod_oe) # plot the predicted and actual responses

}
\references{
Arun K. Tangirala (2015), \emph{Principles of System Identification: 
Theory and Practice}, CRC Press, Boca Raton. Sections 14.4.1, 17.5.2, 
21.6.3
}