The purpose of this study is to improve the prediction of container volumes in Busan ports by applying external variables and time-series data decomposition methods to deep learning prediction models. Previous studies on container volume forecasting were based on traditional statistical methodologies, such as ARIMA, SARIMA, and regression. However, these methods do not explain the complexity and variability of data caused by changes in the external environment, such as the global financial crisis and economic fluctuations. Deep learning can explore the inherent patterns of data and analyze the characteristics (time series, external environmental variables, and outliers); hence, the accuracy of deep learning-based volume prediction models is...
Long short-term volume forecasting is essential for companies regarding their logistics service oper...
Long short-term volume forecasting is essential for companies regarding their logistics service oper...
Background: long term volume forecasting is important for logistics service providers for planning t...
In recent years, technologies forecasting demand based on deep learning and big data have accelerate...
With the increasing availability of large datasets and improvements in prediction algorithms, machin...
Background With the development of global trade, the volume of goods transported around the world is...
Background With the development of global trade, the volume of goods transported around the world is...
Accurate forecasts of containerised freight volumes are unquestionably important for port terminal o...
Accurate forecasts of containerised freight volumes are unquestionably important for port terminal o...
The global nature of seaport operations makes shipping companies susceptible to potential impacts. S...
Accurate forecasts of containerised freight volumes are unquestionably important for port terminal o...
Abstract: Unlike the existing regression analysis, this study anticipated future marine traffic volu...
AbstractContainerization is one of the important factors for Thailand's economics. However, forecast...
COVID-19 has imposed tremendously complex impacts on the container throughput of ports, which poses ...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
Long short-term volume forecasting is essential for companies regarding their logistics service oper...
Long short-term volume forecasting is essential for companies regarding their logistics service oper...
Background: long term volume forecasting is important for logistics service providers for planning t...
In recent years, technologies forecasting demand based on deep learning and big data have accelerate...
With the increasing availability of large datasets and improvements in prediction algorithms, machin...
Background With the development of global trade, the volume of goods transported around the world is...
Background With the development of global trade, the volume of goods transported around the world is...
Accurate forecasts of containerised freight volumes are unquestionably important for port terminal o...
Accurate forecasts of containerised freight volumes are unquestionably important for port terminal o...
The global nature of seaport operations makes shipping companies susceptible to potential impacts. S...
Accurate forecasts of containerised freight volumes are unquestionably important for port terminal o...
Abstract: Unlike the existing regression analysis, this study anticipated future marine traffic volu...
AbstractContainerization is one of the important factors for Thailand's economics. However, forecast...
COVID-19 has imposed tremendously complex impacts on the container throughput of ports, which poses ...
This thesis investigates whether multivariate machine learning forecasting methods, using informatio...
Long short-term volume forecasting is essential for companies regarding their logistics service oper...
Long short-term volume forecasting is essential for companies regarding their logistics service oper...
Background: long term volume forecasting is important for logistics service providers for planning t...