Toward Reducing Unproductive Container Moves: Predicting Service Requirements and Dwell Times
arXiv cs.LG / 4/9/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
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.
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