A novel application of non-parametric system identification algorithm for a surface ship has been employ on this study with the aim of modelling ships dynamics with low quantity of data. The algorithm is based on multi-output Gaussian processes and its ability to model the dynamic system of a ship without losing the relationships between coupled outputs is explored. Data obtained from the simulation of a parametric model of a container ship is used for the training and validation of the multi-output Gaussian processes. The required methodology and metric to implement Gaussian processes for a 4 degrees of freedom (DoF) ship is also presented in this paper. Results show that multi-output Gaussian processes can be accurately applied for non-pa...
This article presents new applications of recursive identification methods to estimation of ship man...
It is common today that operational data is recorded onboard ships within the Internet of Ships (IoS...
Abstract — Different models can be used for nonlinear dy-namic systems identification and the Gaussi...
A novel application of non-parametric system identification algorithm for a surface ship has been em...
Non-parametric system identification with Gaussian processes for underwater vehicles is explored in ...
The system identification of a ship dynamics model is crucial for the intelligent navigation and des...
This thesis is concerned with investigating the use of Gaussian Process (GP) models for the identifi...
This paper describes the identification of nonlinear dynamic systems with a Gaussian process (GP) pr...
Different system identification methods have been applied to determine ship steering dynamics from f...
Autonomous underwater vehicles (AUVs) are increasingly being used in commercial, military and scient...
As marine vessels are becoming increasingly automated, having accurate simulation models available i...
Initial dissertation research in the area of real-time system identification of ship hydrodynamic co...
Identifying the ship’s maneuvering dynamics can build models for ship maneuverability predictions wi...
This paper describes a discrete linear model for the course-changing manoeuvres of a ship. A non-lin...
Abstract: The Gaussian process model is an example of a flexible, probabilistic, nonparametric model...
This article presents new applications of recursive identification methods to estimation of ship man...
It is common today that operational data is recorded onboard ships within the Internet of Ships (IoS...
Abstract — Different models can be used for nonlinear dy-namic systems identification and the Gaussi...
A novel application of non-parametric system identification algorithm for a surface ship has been em...
Non-parametric system identification with Gaussian processes for underwater vehicles is explored in ...
The system identification of a ship dynamics model is crucial for the intelligent navigation and des...
This thesis is concerned with investigating the use of Gaussian Process (GP) models for the identifi...
This paper describes the identification of nonlinear dynamic systems with a Gaussian process (GP) pr...
Different system identification methods have been applied to determine ship steering dynamics from f...
Autonomous underwater vehicles (AUVs) are increasingly being used in commercial, military and scient...
As marine vessels are becoming increasingly automated, having accurate simulation models available i...
Initial dissertation research in the area of real-time system identification of ship hydrodynamic co...
Identifying the ship’s maneuvering dynamics can build models for ship maneuverability predictions wi...
This paper describes a discrete linear model for the course-changing manoeuvres of a ship. A non-lin...
Abstract: The Gaussian process model is an example of a flexible, probabilistic, nonparametric model...
This article presents new applications of recursive identification methods to estimation of ship man...
It is common today that operational data is recorded onboard ships within the Internet of Ships (IoS...
Abstract — Different models can be used for nonlinear dy-namic systems identification and the Gaussi...