Abstract

Effective barge scheduling in the logistic domain requires advanced information on the availability of the port terminals and the maritime traffic in their vicinity. To enable a long-term prediction of vessel arrival times, we investigate how to use the publicly available automatic identification system (AIS) data to identify maritime patterns and transform them into a directed graph that can be used to estimate the potential trajectories and destination points. To tackle this problem, we use a genetic algorithm (GA) to cluster vessel position data. Then, we show how to enhance the process to allow fast computation of incremental data coming from the sensors, including the importance of adding a quad tree structure for data preprocessing. Focusing on a real case implementation, characterized by partially incomplete and noisy AIS data, we show how the algorithm can handle routes intersecting the regions with missing data and the repercussions this has on the route graph. Finally, postprocessing is explained that handles graph pruning and filtering. We validate the results produced by the GA by comparing resulting patterns with known inland water routes for two Dutch provinces followed by the simulation using synthetic data to highlight the strengths and weaknesses of this approach.

Highlights

  • The availability of reliable information is a prerequisite of any planning

  • Our novel contribution aims at expending the data science body of knowledge by showing that periodic inconsistencies in large data sets can be effectively tackled by memory-based algorithm, such as the modified genetic algorithm, that we present in this paper

  • The tests 1–3 were run with setting the limit to only 100 epochs. As this number of epochs is typically insufficient for the genetic algorithm (GA) to converge to a good solution, we use it to compare how the accuracy increases with the increase in the epoch limit

Read more

Summary

Introduction

The availability of reliable information is a prerequisite of any planning. With the ongoing process of continuous cost minimization in the logistics sector, the ability to adequately and timely provide solid information about the present and future state is essential for any type of planning. For Dutch logistics service providers (LSPs), it is essential to maximize the utilization of inland water transportation resources. The most important such resource of LSPs are barges that in an. Since deep sea vessels have priority over barges, the occurrence of such an event forces barges into a waiting state, until the terminal becomes available to service them again. Minimization of expenses through maximization of resource utilization is only possible if there is an effective way to estimate deep sea vessel destinations, and arrival times, thereby estimating terminal disturbances, and creating optimal scheduling policies taking those into account

Objectives
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call