In this study, an application of deep learning-based neural computing is proposed for efficient real-time state estimation of the Markov chain underwater maneuvering object. The designed intelligent strategy is exploiting the strength of nonlinear autoregressive with an exogenous input (NARX) network model, which has the capability for estimating the dynamics of the systems that follow the discrete-time Markov chain. Nonlinear Bayesian filtering techniques are often applied for underwater maneuvering state estimation applications by following state-space methodology. The robustness and precision of NARX neural network are efficiently investigated for accurate state prediction of the passive Markov chain highly maneuvering underwater target....
This paper describes the detection and tracking of static and dynamic underwater object(s). It addre...
In this paper the author presents an idea of the intelligent ship maneuvering prediction system with...
Oceanographic exploration is one of the fast emerging applications of robotics, and the design of co...
An adaptive target tracking method based on extended Kalman filter (TT-EKF) is proposed to simultane...
In underwater scenario, algorithms that assume constant velocity model are suitable for tracking non...
Developing a reliable model to identify the sea state is significant for the autonomous ship. This p...
Object recognition and tracking is a challenge for underwater vehicles. Traditional algorithm requir...
Autonomous underwater vehicles (AUV) recycling in an underwater environment is particularly challeng...
Real-time predictive control requires a forward model that is both accurate and fast. This paper int...
For non-linear systems (NLSs), the state estimation problem is an essential and important problem. T...
Due to the random nature of the ship's motion in an open water environment, the deployment and ...
Bayesian non-linear filtering is considered in this paper for the state vector estimation of manoeuv...
Abstract: This paper describes the detection and tracking of static and dynamic underwater object(s)...
The chapter is devoted to the design of an intelligent neural network based control system for under...
In this paper, a nonlinear dynamic neural network model is proposed for the identification of ship m...
This paper describes the detection and tracking of static and dynamic underwater object(s). It addre...
In this paper the author presents an idea of the intelligent ship maneuvering prediction system with...
Oceanographic exploration is one of the fast emerging applications of robotics, and the design of co...
An adaptive target tracking method based on extended Kalman filter (TT-EKF) is proposed to simultane...
In underwater scenario, algorithms that assume constant velocity model are suitable for tracking non...
Developing a reliable model to identify the sea state is significant for the autonomous ship. This p...
Object recognition and tracking is a challenge for underwater vehicles. Traditional algorithm requir...
Autonomous underwater vehicles (AUV) recycling in an underwater environment is particularly challeng...
Real-time predictive control requires a forward model that is both accurate and fast. This paper int...
For non-linear systems (NLSs), the state estimation problem is an essential and important problem. T...
Due to the random nature of the ship's motion in an open water environment, the deployment and ...
Bayesian non-linear filtering is considered in this paper for the state vector estimation of manoeuv...
Abstract: This paper describes the detection and tracking of static and dynamic underwater object(s)...
The chapter is devoted to the design of an intelligent neural network based control system for under...
In this paper, a nonlinear dynamic neural network model is proposed for the identification of ship m...
This paper describes the detection and tracking of static and dynamic underwater object(s). It addre...
In this paper the author presents an idea of the intelligent ship maneuvering prediction system with...
Oceanographic exploration is one of the fast emerging applications of robotics, and the design of co...