In this study, we propose an effective method using deep learning to strengthen real-time vessel carbon dioxide emission management. We propose a method to predict real-time carbon dioxide emissions of the vessel in three steps: (1) convert the trajectory data of the fixed time interval into a spatial–temporal sequence, (2) apply a long short-term memory (LSTM) model to predict the future trajectory and vessel status data of the vessel, and (3) predict the carbon dioxide emissions. Automatic identification system (AIS) database of a liquefied natural gas (LNG) vessel were selected as the sample and we reconstructed the trajectory data with a fixed time interval using cubic spline interpolation. Applying the interpolated AIS data, the carbon...
Data-driven methods open up unprecedented possibilities for maritime surveillance using automatic id...
The contemporary trend shows a shift from rule-based algorithms to deep learning. In the last few ye...
Accurately measuring carbon dioxide (CO2) emissions is critical for effectively implementing carbon ...
Reducing CO2 emissions from coal-fired power plants is an urgent global issue. Effective and precise...
The work status of ships’ engines and boilers has a significant impact on emission estimates, which ...
The global greenhouse gas emitted from shipping activities is one of the factors contributing to glo...
The current understanding of CO2 emission concentrations in hybrid vehicles (HVs) is limited, due to...
This paper presents a study on using deep learning for the modelling of a post-combustion CO 2 captu...
The objective of this study is to develop a shipping emission inventory model incorporating Machine ...
This study aimed to respond to the national “carbon peak” mid-and long-term policy plan, comprehensi...
Fluid Catalytic Cracking (FCC), a key unit for secondary processing of heavy oil, is one of the main...
In recent years, machine learning has evolved in a fast pace as both algorithms and computing power ...
In recent years, machine learning has evolved in a fast pace as both algorithms and computing power ...
Freshwater reservoirs are considered as the source of atmospheric greenhouse gas (GHG), but more tha...
It is necessary to accurately calculate ship carbon emissions for shipping suitability. The state-of...
Data-driven methods open up unprecedented possibilities for maritime surveillance using automatic id...
The contemporary trend shows a shift from rule-based algorithms to deep learning. In the last few ye...
Accurately measuring carbon dioxide (CO2) emissions is critical for effectively implementing carbon ...
Reducing CO2 emissions from coal-fired power plants is an urgent global issue. Effective and precise...
The work status of ships’ engines and boilers has a significant impact on emission estimates, which ...
The global greenhouse gas emitted from shipping activities is one of the factors contributing to glo...
The current understanding of CO2 emission concentrations in hybrid vehicles (HVs) is limited, due to...
This paper presents a study on using deep learning for the modelling of a post-combustion CO 2 captu...
The objective of this study is to develop a shipping emission inventory model incorporating Machine ...
This study aimed to respond to the national “carbon peak” mid-and long-term policy plan, comprehensi...
Fluid Catalytic Cracking (FCC), a key unit for secondary processing of heavy oil, is one of the main...
In recent years, machine learning has evolved in a fast pace as both algorithms and computing power ...
In recent years, machine learning has evolved in a fast pace as both algorithms and computing power ...
Freshwater reservoirs are considered as the source of atmospheric greenhouse gas (GHG), but more tha...
It is necessary to accurately calculate ship carbon emissions for shipping suitability. The state-of...
Data-driven methods open up unprecedented possibilities for maritime surveillance using automatic id...
The contemporary trend shows a shift from rule-based algorithms to deep learning. In the last few ye...
Accurately measuring carbon dioxide (CO2) emissions is critical for effectively implementing carbon ...