2022 年 14 巻 p. 975-986
Maritime transport data released by governments, consultants, and other organizations are essential in preparing various logistics plans and policies. In international cargo flow data pertaining to ports, aggregate data, such as annual and monthly statistics of imports and exports are commonly published. However, certain port authorities and data distribution agencies publish detailed data, such as shipment sizes (payload) of ships calling at ports. In this study, we estimated the shipment sizes using machine learning based on detailed iron ore trade data and automatic identification system (AIS) data. Additionally, we developed a method to adjust the estimates by applying a matrix-balancing technique to improve the accuracy of the obtained estimates.