We present a reinforcement learning (RL) model that is based on Q-learning for the autonomous control of ship auxiliary power networks. The development and application of the proposed model is demonstrated using a case-study ship as the platform. The auxiliary power network of the ship is represented as a Markov Decision Process (MDP). Q-learning is then used to teach an agent to operate in this MDP by choosing actions in each operating state which would minimize fuel consumption while also respecting the boundary conditions of the network. The presented work is based on an extensive data set received from one of the cruise-line operators on the Baltic Sea. This data set was preprocessed to extract information for the state representation o...
Reinforcement learning (RL)algorithm is employed in solving energy management problem for electrifie...
The design of reliable protection systems is essential in order to guarantee the secure operation of...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
AbstractConsidering our depleting resources, efficient energy production and transmission is the nee...
Human experience is regarded as an indispensable part of artificial intelligence in the process of c...
This degree project, conducted at ABB, aims to analyze and solve differentsituations that a crew on ...
With the development of artificial intelligence, intelligent and unmanned driving has received exten...
Autonomous shipping is a heavily researched topic, and currently, there are large amounts of ship tr...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
A reinforcement learning algorithm based on Deep Q-Networks (DQN) is used for the path following and...
Offshore crane operations are frequently carried out under adverse weather conditions. While offshor...
The present study investigates an energy management strategy based on reinforcement learning for ser...
The production and consumption of electricity need to be balanced at all times. Due to the ever-grow...
The paper proposes a spatial-temporal recurrent neural network architecture for Deep $Q$-Networks to...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
Reinforcement learning (RL)algorithm is employed in solving energy management problem for electrifie...
The design of reliable protection systems is essential in order to guarantee the secure operation of...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
AbstractConsidering our depleting resources, efficient energy production and transmission is the nee...
Human experience is regarded as an indispensable part of artificial intelligence in the process of c...
This degree project, conducted at ABB, aims to analyze and solve differentsituations that a crew on ...
With the development of artificial intelligence, intelligent and unmanned driving has received exten...
Autonomous shipping is a heavily researched topic, and currently, there are large amounts of ship tr...
This paper presents the design and implementation of a learning controller for the Automatic Generat...
A reinforcement learning algorithm based on Deep Q-Networks (DQN) is used for the path following and...
Offshore crane operations are frequently carried out under adverse weather conditions. While offshor...
The present study investigates an energy management strategy based on reinforcement learning for ser...
The production and consumption of electricity need to be balanced at all times. Due to the ever-grow...
The paper proposes a spatial-temporal recurrent neural network architecture for Deep $Q$-Networks to...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...
Reinforcement learning (RL)algorithm is employed in solving energy management problem for electrifie...
The design of reliable protection systems is essential in order to guarantee the secure operation of...
To achieve persistent systems in the future, autonomous underwater vehicles (AUVs) will need to auto...