In nonlinear system identification, the available observed data are conventionally partitioned into two parts: the training data that are used for model identification and the test data that are used for model performance testing. This sort of ‘hold-out’ or ‘split-sample’ data partitioning method is convenient and the associated model identification procedure is in general easy to implement. The resultant model obtained from such a once-partitioned single training dataset, however, may occasionally lack robustness and generalisation to represent future unseen data, because the performance of the identified model may be highly dependent on how the data partition is made. To overcome the drawback of the hold-out data partitioning method, th...
The identification of polynomial NARX models is typically performed by incremental model building te...
This paper presents a new model identification method for parsimoniously selecting model terms and e...
This study considers the identification problem for a class of nonlinear parameter-varying systems a...
In non-linear system identification, the available observed data are conventionally partitioned into...
Abstract: In nonlinear system identification, the available observed data are conventionally partiti...
In model identification, the existence of uncertainty normally generates negative impact on the accu...
An alternative solution to the model structure selection problem is introduced by conducting a forwa...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
A new adaptive orthogonal search (AOS) algorithm is proposed for model subset selection and non-line...
Model structure selection plays a key role in nonlinear system identification. The first step in non...
Model structure selection plays a key role in non-linear system identification. The first step in no...
Abstract—In this correspondence new robust nonlinear model con-struction algorithms for a large clas...
A sparse representation, with satisfactory approximation accuracy, is usually desirable in any nonl...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
In this correspondence new robust nonlinear model construction algorithms for a large class of linea...
The identification of polynomial NARX models is typically performed by incremental model building te...
This paper presents a new model identification method for parsimoniously selecting model terms and e...
This study considers the identification problem for a class of nonlinear parameter-varying systems a...
In non-linear system identification, the available observed data are conventionally partitioned into...
Abstract: In nonlinear system identification, the available observed data are conventionally partiti...
In model identification, the existence of uncertainty normally generates negative impact on the accu...
An alternative solution to the model structure selection problem is introduced by conducting a forwa...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
A new adaptive orthogonal search (AOS) algorithm is proposed for model subset selection and non-line...
Model structure selection plays a key role in nonlinear system identification. The first step in non...
Model structure selection plays a key role in non-linear system identification. The first step in no...
Abstract—In this correspondence new robust nonlinear model con-struction algorithms for a large clas...
A sparse representation, with satisfactory approximation accuracy, is usually desirable in any nonl...
A new adaptive orthogonal least squares (AOLS) algorithm is proposed for model subset selection and ...
In this correspondence new robust nonlinear model construction algorithms for a large class of linea...
The identification of polynomial NARX models is typically performed by incremental model building te...
This paper presents a new model identification method for parsimoniously selecting model terms and e...
This study considers the identification problem for a class of nonlinear parameter-varying systems a...