Marvin Kastner, M.Sc.

Adresse

Technische Universität Hamburg
Institut für Maritime Logistik
Am Schwarzenberg-Campus 4 (D)
21073 Hamburg

 

Kontaktdaten & Profile

Büro: Gebäude D Raum 5.007
Tel.: +49 40 42878 4793
E-Mail: marvin.kastner(at)tuhh(dot)de
ORCiD: 0000-0001-8289-2943
LinkedIn: https://www.linkedin.com/in/marvin-kastner/
ResearchGate: https://www.researchgate.net/profile/Marvin-Kastner
Google scholar: https://scholar.google.de/citations?user=lAR-oVAAAAAJ&hl=de&oi=ao
Scopus: https://www.scopus.com/authid/detail.uri?authorId=57221938031



Forschungsschwerpunkte

  • simulationsgestütztes Planen von Container-Terminals
  • Optimierung der Ablaufplanung im Yard von Container-Terminals
  • technologiegestützte Verbesserung der maritimen Sicherheit
  • Maschinelles Lernen in der maritimen Logistik
  • Optimierung multivariater Black-box Funktionen

Vorträge und Workshops (Auszug)

  • 26.09.2024 ein Vortrag auf der Hamburg International Conference of Logistics (HICL): "Hinterland rail connectivity of seaport container terminals" mit den Koautoren Owais Ahmed Shaikh, Yasser Shaikh und Anish Sundar Gowthaman
  • 06.05.2024 ein Workshop an der Graduiertenakademie der TUHH: "Einführung in Jupyter Notebooks" [mehr]
  • 25.01.2023 ein Vortrag auf dem 7. Suderburger Logistik-Forum: "KI-unterstützte Planung von Güterumschlaganlagen am Beispiel von Containerterminals"
  • 15.09.2022 ein Vortrag bei den MLE-Days 2022: "Synthetische Daten für das Reinforcement-Learning bei Container-Terminal-Steuerungen"
  • 28.06.2022 ein Workshop an der Graduiertenakademie der TUHH: "Einführung in Jupyter Notebooks" [mehr]
  • 02.07.2021 ein Workshop bei den MLE-Days 2021: "Methoden des Maschinellen Lernens in der Maritimen Logistik" [zip]
  • 16.03.2021 ein Workshop an der Graduiertenakademie der TUHH: "Einführung in Jupyter Notebooks" [mehr]
  • 30.11.2020 im Rahmen der Vortragsreihe "Train Your Engineering Network" der MLE-Initiative: "How to Talk About Machine Learning with Jupyter Notebooks" [mehr]
  • 22.11.2019 auf der DISRUPT NOW! AI for Hamburg: "Künstliche Intelligenz in der maritimen Wirtschaft" [mehr]
  • 29.10.2019 im Rahmen der forschungsbörse: "Maritime Logistik - Ein Rundumschlag" [mehr]
  • 23.10.2019 bei der Open Access Week 2019 an der TUHH: "Datenanalyse - Offener Workshop: Daten auswerten und visualisieren mit Jupyter Notebooks" [mehr] [git]
  • 16.11.2018 beim GI DevCamp Hamburg: "Mobility Research and GDPR"
  • 27.09.2018 beim SGKV AK zum Thema Lkw-Ankünfte: "Prognoseverfahren und neuronale Netze – Was ist möglich?"


Veröffentlichungen (Auszug)

2024

[182970]
Title: Synthetically generating traffic scenarios for simulation-based container terminal planning.
Written by: Kastner, Marvin and Grasse, Ole
in: <em>PIANC Yearbook 2023</em>. (2024).
Volume: Number:
on pages:
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Editor:
Publisher:
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how published:
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URL: https://pianc.app.box.com/s/vhe61hcxttpakyihjda76pk552itajmc
ARXIVID:
PMID:

[pdf] [www]

Note: conflowgen

Abstract: More than 80 percent of world trade is delivered via sea, making the maritime supply chain a very important backbone for the economy (UNCTAD 2020). Containerized trade regularly outperforms other types of transport in terms of growth, coinciding with consistent increases of average container vessel sizes (UNCTAD 2020). Container terminal operations are heavily affected by this development, since less but larger port calls create unwanted peaks and stress on the terminals and the hinterland. Not all container terminals are affected equally by the described situation. Economic cycles and events such as the global COVID-19 pandemic or the Russian war in Ukraine change the global supply chains, trade characteristics and transport demands between ports in the world. In 2004, Hartmann proposed an approach to create scenarios for simulation and optimization in the sense of container terminal planning and logistics. Due to the significant changes in maritime trade over the years, a new approach for generating synthetic container flow data became practical. In 2021, we introduced a rethought and reworked approach on this topic.The proposed tool, named ConFlowGen, aims to assist planners, scientists, and other maritime experts with providing comprehensive container flow scenarios based on minimal inputs and assumptions of the user. In this paper, we introduce ConFlowGen`s general principle of operation in an exemplary use case in the context of container terminal planning.

2023
[182970]
Title: Synthetically generating traffic scenarios for simulation-based container terminal planning.
Written by: Kastner, Marvin and Grasse, Ole
in: <em>PIANC Yearbook 2023</em>. (2024).
Volume: Number:
on pages:
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI:
URL: https://pianc.app.box.com/s/vhe61hcxttpakyihjda76pk552itajmc
ARXIVID:
PMID:

[pdf] [www]

Note: conflowgen

Abstract: More than 80 percent of world trade is delivered via sea, making the maritime supply chain a very important backbone for the economy (UNCTAD 2020). Containerized trade regularly outperforms other types of transport in terms of growth, coinciding with consistent increases of average container vessel sizes (UNCTAD 2020). Container terminal operations are heavily affected by this development, since less but larger port calls create unwanted peaks and stress on the terminals and the hinterland. Not all container terminals are affected equally by the described situation. Economic cycles and events such as the global COVID-19 pandemic or the Russian war in Ukraine change the global supply chains, trade characteristics and transport demands between ports in the world. In 2004, Hartmann proposed an approach to create scenarios for simulation and optimization in the sense of container terminal planning and logistics. Due to the significant changes in maritime trade over the years, a new approach for generating synthetic container flow data became practical. In 2021, we introduced a rethought and reworked approach on this topic.The proposed tool, named ConFlowGen, aims to assist planners, scientists, and other maritime experts with providing comprehensive container flow scenarios based on minimal inputs and assumptions of the user. In this paper, we introduce ConFlowGen`s general principle of operation in an exemplary use case in the context of container terminal planning.

2022
[182970]
Title: Synthetically generating traffic scenarios for simulation-based container terminal planning.
Written by: Kastner, Marvin and Grasse, Ole
in: <em>PIANC Yearbook 2023</em>. (2024).
Volume: Number:
on pages:
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI:
URL: https://pianc.app.box.com/s/vhe61hcxttpakyihjda76pk552itajmc
ARXIVID:
PMID:

[pdf] [www]

Note: conflowgen

Abstract: More than 80 percent of world trade is delivered via sea, making the maritime supply chain a very important backbone for the economy (UNCTAD 2020). Containerized trade regularly outperforms other types of transport in terms of growth, coinciding with consistent increases of average container vessel sizes (UNCTAD 2020). Container terminal operations are heavily affected by this development, since less but larger port calls create unwanted peaks and stress on the terminals and the hinterland. Not all container terminals are affected equally by the described situation. Economic cycles and events such as the global COVID-19 pandemic or the Russian war in Ukraine change the global supply chains, trade characteristics and transport demands between ports in the world. In 2004, Hartmann proposed an approach to create scenarios for simulation and optimization in the sense of container terminal planning and logistics. Due to the significant changes in maritime trade over the years, a new approach for generating synthetic container flow data became practical. In 2021, we introduced a rethought and reworked approach on this topic.The proposed tool, named ConFlowGen, aims to assist planners, scientists, and other maritime experts with providing comprehensive container flow scenarios based on minimal inputs and assumptions of the user. In this paper, we introduce ConFlowGen`s general principle of operation in an exemplary use case in the context of container terminal planning.

2021
[182970]
Title: Synthetically generating traffic scenarios for simulation-based container terminal planning.
Written by: Kastner, Marvin and Grasse, Ole
in: <em>PIANC Yearbook 2023</em>. (2024).
Volume: Number:
on pages:
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI:
URL: https://pianc.app.box.com/s/vhe61hcxttpakyihjda76pk552itajmc
ARXIVID:
PMID:

[pdf] [www]

Note: conflowgen

Abstract: More than 80 percent of world trade is delivered via sea, making the maritime supply chain a very important backbone for the economy (UNCTAD 2020). Containerized trade regularly outperforms other types of transport in terms of growth, coinciding with consistent increases of average container vessel sizes (UNCTAD 2020). Container terminal operations are heavily affected by this development, since less but larger port calls create unwanted peaks and stress on the terminals and the hinterland. Not all container terminals are affected equally by the described situation. Economic cycles and events such as the global COVID-19 pandemic or the Russian war in Ukraine change the global supply chains, trade characteristics and transport demands between ports in the world. In 2004, Hartmann proposed an approach to create scenarios for simulation and optimization in the sense of container terminal planning and logistics. Due to the significant changes in maritime trade over the years, a new approach for generating synthetic container flow data became practical. In 2021, we introduced a rethought and reworked approach on this topic.The proposed tool, named ConFlowGen, aims to assist planners, scientists, and other maritime experts with providing comprehensive container flow scenarios based on minimal inputs and assumptions of the user. In this paper, we introduce ConFlowGen`s general principle of operation in an exemplary use case in the context of container terminal planning.

2020
[182970]
Title: Synthetically generating traffic scenarios for simulation-based container terminal planning.
Written by: Kastner, Marvin and Grasse, Ole
in: <em>PIANC Yearbook 2023</em>. (2024).
Volume: Number:
on pages:
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI:
URL: https://pianc.app.box.com/s/vhe61hcxttpakyihjda76pk552itajmc
ARXIVID:
PMID:

[pdf] [www]

Note: conflowgen

Abstract: More than 80 percent of world trade is delivered via sea, making the maritime supply chain a very important backbone for the economy (UNCTAD 2020). Containerized trade regularly outperforms other types of transport in terms of growth, coinciding with consistent increases of average container vessel sizes (UNCTAD 2020). Container terminal operations are heavily affected by this development, since less but larger port calls create unwanted peaks and stress on the terminals and the hinterland. Not all container terminals are affected equally by the described situation. Economic cycles and events such as the global COVID-19 pandemic or the Russian war in Ukraine change the global supply chains, trade characteristics and transport demands between ports in the world. In 2004, Hartmann proposed an approach to create scenarios for simulation and optimization in the sense of container terminal planning and logistics. Due to the significant changes in maritime trade over the years, a new approach for generating synthetic container flow data became practical. In 2021, we introduced a rethought and reworked approach on this topic.The proposed tool, named ConFlowGen, aims to assist planners, scientists, and other maritime experts with providing comprehensive container flow scenarios based on minimal inputs and assumptions of the user. In this paper, we introduce ConFlowGen`s general principle of operation in an exemplary use case in the context of container terminal planning.

2019
[182970]
Title: Synthetically generating traffic scenarios for simulation-based container terminal planning.
Written by: Kastner, Marvin and Grasse, Ole
in: <em>PIANC Yearbook 2023</em>. (2024).
Volume: Number:
on pages:
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI:
URL: https://pianc.app.box.com/s/vhe61hcxttpakyihjda76pk552itajmc
ARXIVID:
PMID:

[pdf] [www]

Note: conflowgen

Abstract: More than 80 percent of world trade is delivered via sea, making the maritime supply chain a very important backbone for the economy (UNCTAD 2020). Containerized trade regularly outperforms other types of transport in terms of growth, coinciding with consistent increases of average container vessel sizes (UNCTAD 2020). Container terminal operations are heavily affected by this development, since less but larger port calls create unwanted peaks and stress on the terminals and the hinterland. Not all container terminals are affected equally by the described situation. Economic cycles and events such as the global COVID-19 pandemic or the Russian war in Ukraine change the global supply chains, trade characteristics and transport demands between ports in the world. In 2004, Hartmann proposed an approach to create scenarios for simulation and optimization in the sense of container terminal planning and logistics. Due to the significant changes in maritime trade over the years, a new approach for generating synthetic container flow data became practical. In 2021, we introduced a rethought and reworked approach on this topic.The proposed tool, named ConFlowGen, aims to assist planners, scientists, and other maritime experts with providing comprehensive container flow scenarios based on minimal inputs and assumptions of the user. In this paper, we introduce ConFlowGen`s general principle of operation in an exemplary use case in the context of container terminal planning.