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Safety Aware Autonomous Path Planning Using Model Predictive Reinforcement Learning for Inland Waterways

 
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dc.contributor.authorVanneste, Astrid
dc.contributor.authorVanneste, Simon
dc.contributor.authorVasseur, Olivier
dc.contributor.authorJanssens, Robin
dc.contributor.authorBillast, Mattias
dc.contributor.authorAnwar, Ali
dc.contributor.authorMets, Kevin
dc.contributor.authorDe Schepper, Tom
dc.contributor.authorMercelis, Siegfried
dc.contributor.authorHellinckx, Peter
dc.date.accessioned2026-03-23T15:15:23Z
dc.date.available2026-03-23T15:15:23Z
dc.date.createdwos2025-10-31
dc.date.issued2022
dc.description.abstractIn recent years, interest in autonomous shipping in urban waterways has increased significantly due to the trend of keeping cars and trucks out of city centers. Classical approaches such as Frenet frame based planning and potential field navigation often require tuning of many configuration parameters and sometimes even require a different configuration depending on the situation. In this paper, we propose a novel path planning approach based on reinforcement learning called Model Predictive Reinforcement Learning (MPRL). MPRL calculates a series of waypoints for the vessel to follow. The environment is represented as an occupancy grid map, allowing us to deal with any shape of waterway and any number and shape of obstacles. We demonstrate our approach on two scenarios and compare the resulting path with path planning using a Frenet frame and path planning based on a proximal policy optimization (PPO) agent. Our results show that MPRL outperforms both baselines in both test scenarios. The PPO based approach was not able to reach the goal in either scenario while the Frenet frame approach failed in the scenario consisting of a corner with obstacles. MPRL was able to safely (collision free) navigate to the goal in both of the test scenarios.
dc.description.wosFundingTextThe imec icon Smart Waterway project runs from October 1st 2019 until February 28th 2022 and combines the expertise of industrial partners Seafar, Pozyx, Citymesh and Blue Line Logistics with the scientific expertise of imec research partners IDLab (University of Antwerp and University of Ghent) and TPR from University of Antwerp. The project was realised with the financial support of Flanders Innovation & Entrepreneurship (VLAIO, project no. HBC.2019.0058). Astrid Vanneste and Simon Vanneste are supported by the Research Foundation Flanders (FWO) under Grant Number 1S12121N and Grant Number 1S94120N respectively. We would like to thank Aleksander Chernyavskiy (Seafar NV) for the fruitful discussions about the design of the applications presented in this paper and for allowing us to carry out tests on Seafar's simulation system. We are grateful to Ahmed Ahmed (IDLab) for the help he provided in reviewing classical planning algorithms.
dc.identifier.doi10.1109/IECON49645.2022.9968678
dc.identifier.issn1553-572X
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/58919
dc.language.isoeng
dc.provenance.editstepusergreet.vanhoof@imec.be
dc.publisherIEEE
dc.source.conferenceIECON 2022 – 48th Annual Conference of the IEEE Industrial Electronics Society
dc.source.conferencedate2022-10-17
dc.source.journalIECON 2022 - 48TH ANNUAL CONFERENCE OF THE IEEE INDUSTRIAL ELECTRONICS SOCIETY
dc.source.numberofpages6
dc.title

Safety Aware Autonomous Path Planning Using Model Predictive Reinforcement Learning for Inland Waterways

dc.typeProceedings paper
dspace.entity.typePublication
imec.internal.crawledAt2025-10-22
imec.internal.sourcecrawler
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