Toward Reducing Unproductive Container Moves: Predicting Service Requirements and Dwell Times

arXiv cs.LG / 4/9/2026

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Key Points

  • The study uses historical container terminal operational data to predict which containers will require pre-clearance service before cargo release and to estimate their expected dwell times in the yard.
  • It builds and evaluates machine learning models with a data-preparation pipeline that includes cargo-description classification and deduplication of consignee records to improve feature quality and consistency.
  • Model performance is validated across multiple temporal splits and shows consistent gains over both rule-based heuristics and random baselines, improving precision and recall.
  • The authors argue that these predictions can directly support strategic planning and resource allocation by reducing unproductive container moves and enabling more data-driven yard operations.

Abstract

This article presents the results of a data science study conducted at a container terminal, aimed at reducing unproductive container moves through the prediction of service requirements and container dwell times. We develop and evaluate machine learning models that leverage historical operational data to anticipate which containers will require pre-clearance handling services prior to cargo release and to estimate how long they are expected to remain in the terminal. As part of the data preparation process, we implement a classification system for cargo descriptions and perform deduplication of consignee records to improve data consistency and feature quality. These predictive capabilities provide valuable inputs for strategic planning and resource allocation in yard operations. Across multiple temporal validation periods, the proposed models consistently outperform existing rule-based heuristics and random baselines in precision and recall. These results demonstrate the practical value of predictive analytics for improving operational efficiency and supporting data-driven decision-making in container terminal logistics.