Abstract

Transparency in transport processes is becoming increasingly important for transport companies to improve internal processes and to be able to compete for customers. One important element to increase transparency is reliable, up-to-date and accurate arrival time prediction, commonly referred to as estimated time of arrival (ETA). ETAs are not easy to determine, especially for intermodal freight transports, in which freight is transported in an intermodal container, using multiple modes of transportation. This computational study describes the structure of an ETA prediction model for intermodal freight transport networks (IFTN), in which schedule-based and non-schedule-based transports are combined, based on machine learning (ML). For each leg of the intermodal freight transport, an individual ML prediction model is developed and trained using the corresponding historical transport data and external data. The research presented in this study shows that the ML approach produces reliable ETA predictions for intermodal freight transport. These predictions comprise processing times at logistics nodes such as inland terminals and transport times on road and rail. Consequently, the outcome of this research allows decision makers to proactively communicate disruption effects to actors along the intermodal transportation chain. These actors can then initiate measures to counteract potential critical delays at subsequent stages of transport. This approach leads to increased process efficiency for all actors in the realization of complex transport operations and thus has a positive effect on the resilience and profitability of IFTNs.

Highlights

  • IntroductionDriven by supply chains with a more and more global reach, today’s freight transport networks must connect increasingly distant production and sales regions, and such global competition leads to increasing demands for service, delivery times and cost efficiency

  • This computational study describes the structure of an estimated time of arrival (ETA) prediction model for intermodal freight transport networks (IFTN), in which schedule-based and non-schedule-based transports are combined, based on machine learning (ML)

  • The research presented in this study shows that the ML approach produces reliable ETA predictions for intermodal freight transport

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Summary

Introduction

Driven by supply chains with a more and more global reach, today’s freight transport networks must connect increasingly distant production and sales regions, and such global competition leads to increasing demands for service, delivery times and cost efficiency. Constraints such as limited space in facilities and regulations (e.g., environmental protection and customs) must be considered. Interviews revealed that instead of short but unstable transport times, companies prefer somewhat slower transports with a reliable arrival time, as this allows them to establish stable processes along the supply chain This requires more transparency along all of the production and transport processes. The transport processes are of particular importance, as they do not take place in a protected environment such as a factory building, but on a shared infrastructure where they are exposed to environmental influences

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