The Cutter Suction Dredger (CSD) is one of the key equipment dedicated to the construction and maintenance projects of harbours, ports and navigational channels. Among the dredging manipulations, the swing process is the most tedious and recurring work for human operators, which often leads to accidents because of carelessness or fatigue of the operators. This paper aims at producing a learning approach for the intelligent control of the swing process of a CSD so as to release human operators from such a boring and heavy task. To this end, the swing process control is formulated as a sequential decision making problem, and Deep Reinforcement Learning (DRL) is employed to design the learning approach based on deterministic policy gradient. T...
Objectives The tracking control of intelligent ships often faces the problem of low controller stabi...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
This article presents a general approach to derive an end effector trajectory tracking controller fo...
The Cutter Suction Dredger (CSD) is one of the key equipment dedicated to the construction and maint...
This work presents a reinforcement learning approach for intelligent decision-making of a Cutter Suc...
This paper presents the idea of using machine learning techniques to simulate and demonstrate learni...
The problem of following, or tracking a predefined path, has been a long standing problem in the con...
Various researchers proposed several types of methods, algorithms, and simulator to control bottom h...
Classic methods for Dynamic Positioning (DP) of surface vessels often consists of first calculating ...
We propose an exploration method that incorporates lookahead search over basic learnt skills and the...
In shipyards, blocks are controlled by connecting the crane and block with wires during block erecti...
In this paper, a Deep Reinforcement Learning (DRL)-based approach for learning mobile cleaning robot...
Automation in any industry has a control system as its base, and control systems are composed of a c...
In this investigation, the nonlinear swing-up problem associated with the cart-pole system modeled a...
LPS (Logic-based Production System) is a framework that combines logic programs with reactive rules ...
Objectives The tracking control of intelligent ships often faces the problem of low controller stabi...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
This article presents a general approach to derive an end effector trajectory tracking controller fo...
The Cutter Suction Dredger (CSD) is one of the key equipment dedicated to the construction and maint...
This work presents a reinforcement learning approach for intelligent decision-making of a Cutter Suc...
This paper presents the idea of using machine learning techniques to simulate and demonstrate learni...
The problem of following, or tracking a predefined path, has been a long standing problem in the con...
Various researchers proposed several types of methods, algorithms, and simulator to control bottom h...
Classic methods for Dynamic Positioning (DP) of surface vessels often consists of first calculating ...
We propose an exploration method that incorporates lookahead search over basic learnt skills and the...
In shipyards, blocks are controlled by connecting the crane and block with wires during block erecti...
In this paper, a Deep Reinforcement Learning (DRL)-based approach for learning mobile cleaning robot...
Automation in any industry has a control system as its base, and control systems are composed of a c...
In this investigation, the nonlinear swing-up problem associated with the cart-pole system modeled a...
LPS (Logic-based Production System) is a framework that combines logic programs with reactive rules ...
Objectives The tracking control of intelligent ships often faces the problem of low controller stabi...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
This article presents a general approach to derive an end effector trajectory tracking controller fo...