The navigability potential of the Northeast Passage has gradually emerged with the melting of Arctic sea ice. For the purpose of navigation safety in the Arctic area, a reliable daily sea ice concentration (SIC) prediction result is required. As the mature application of deep learning technique in short-term prediction of other fields (atmosphere, ocean, and hurricane, etc.), a new model was proposed for daily SIC prediction by selecting multiple factors, adopting gradient loss function (Grad-loss) and incorporating an improved predictive recurrent neural network (PredRNN++). Three control experiments are designed to test the impact of these three improvements for model performance with multiple indicators. Results show that the proposed mo...
Arctic sea ice forecasting is a major scientific effort with fundamental challenges at play. To addr...
Accurate seasonal forecasts of sea ice are highly valuable, particularly in the context of sea ice l...
Antarctic sea ice concentration (SIC) prediction at seasonal scale has been documented, but a gap re...
Changes in Arctic sea ice affect atmospheric circulation, ocean current, and polar ecosystems. There...
Arctic sea ice is one of the key factors closely related to climate change and energy balance. The s...
In this paper, we applied an artificial neural network (ANN) to the short-term prediction of the Arc...
Warming of the Arctic leads to a decrease in sea ice, and the decrease of sea ice, in turn, results ...
Arctic sea ice plays a significant role in climate systems, and its prediction is important for copi...
The Arctic sea ice is an important indicator of the progress of global warming and climate change. P...
Annual reductions in Arctic sea ice extent (SIE) due to global warming. According to International P...
Abstract: Anthropogenic warming has led to an unprecedented year-round reduction in Arctic sea ice e...
Abstract: Physics-based simulations of Arctic sea ice are highly complex, involving transport betw...
In this study, the potential for sea ice concentration prediction using machine‐learning methods is ...
Abstract: Anthropogenic warming has led to an unprecedented year-round reduction in Arctic sea ice e...
In this study, the potential for sea ice concentration prediction using machine‐learning methods is ...
Arctic sea ice forecasting is a major scientific effort with fundamental challenges at play. To addr...
Accurate seasonal forecasts of sea ice are highly valuable, particularly in the context of sea ice l...
Antarctic sea ice concentration (SIC) prediction at seasonal scale has been documented, but a gap re...
Changes in Arctic sea ice affect atmospheric circulation, ocean current, and polar ecosystems. There...
Arctic sea ice is one of the key factors closely related to climate change and energy balance. The s...
In this paper, we applied an artificial neural network (ANN) to the short-term prediction of the Arc...
Warming of the Arctic leads to a decrease in sea ice, and the decrease of sea ice, in turn, results ...
Arctic sea ice plays a significant role in climate systems, and its prediction is important for copi...
The Arctic sea ice is an important indicator of the progress of global warming and climate change. P...
Annual reductions in Arctic sea ice extent (SIE) due to global warming. According to International P...
Abstract: Anthropogenic warming has led to an unprecedented year-round reduction in Arctic sea ice e...
Abstract: Physics-based simulations of Arctic sea ice are highly complex, involving transport betw...
In this study, the potential for sea ice concentration prediction using machine‐learning methods is ...
Abstract: Anthropogenic warming has led to an unprecedented year-round reduction in Arctic sea ice e...
In this study, the potential for sea ice concentration prediction using machine‐learning methods is ...
Arctic sea ice forecasting is a major scientific effort with fundamental challenges at play. To addr...
Accurate seasonal forecasts of sea ice are highly valuable, particularly in the context of sea ice l...
Antarctic sea ice concentration (SIC) prediction at seasonal scale has been documented, but a gap re...