SimPlan Logo
Instant Contact:
+49 6181 40296-0
info@simplan.de
SimPlan Logo weiß
  • Home
  • Services
    • Overview Services
    • Distribution Logistics
    • Production logistics in the process simulation
    • Production processes
    • Transparency with Supply Chain Simulation (SCM)
    • Process simulation in the health care sector: hospital simulation
    • Implementation of simulation tools
    • More services
  • Software
    • Software overview
    • AnyLogic
    • anyLogistix
    • AutoMod
    • Emulate3D
    • PacSi
    • Plant Simulation
    • Simio
    • SimAssist
    • SimVSM
    • Supply Chain Suite (SCS) – Software for Supply Chain Management
    • Building block libraries in the simulation
  • Trainings
    • All Trainings
    • Webseminars
  • References
    • Case studies
    • Customer opinions about projects and trainings
  • News
    • News
    • Newsletter
  • Knowledge
    • SimBlog
    • Videos
    • FAQ
    • SimPlan Books
    • Publications
    • Downloads
  • Research
  • About
    • 30 years of SimPlan
    • Meet our Management
    • Our Corporate Philosophy
    • Company History & Facts
    • Locations
    • SimPlan Certification
  • Career
  • Contact
    • Sales team: We are your contact persons
globe
  • Deutsch
  • English

Research project AI-Mod

Home
Research projects of SimPlan Group
Research project AI-Mod

Research project AI-Mod

Home
Research projects of SimPlan Group
Research project AI-Mod

Research project AI-Mod

Learning procedure for the automatic conversion of a modeled value stream into a value stream capable of simulation

logo-diestral-data

Digital innovation / technology

Building simulation models for a value stream in a factory is a task that can take a lot of time. It is true that it is quick to use an app to build up an initial simple picture (a model) of a value stream. But in order for this model to be simulated, it must meet a number of requirements: the right building blocks (e.g., machines or buffers) must be inserted into the image in the correct sequence, all necessary connections between the building blocks must be correctly and completely defined, and the building blocks must be provided with a set of data (e.g., information about components or processing times).

The idea of the project is to train a learning procedure in such a way that it supports the modeler in fulfilling this requirement and points out where building blocks, edges or data might still be missing. Here, the application of the learning procedure is based on the assumption that the transformation of the first simple model into a complete simulation model can be considered like a game: the learning procedure suggests certain moves (e.g., adding an edge or changing data). If this results in a model that can be better interpreted by the simulation software, it gives positive feedback; otherwise, it gives negative feedback. In this way, the algorithm learns what changes to models are needed to create simulation models.

This kind of linking of learning and simulation, the use of learning directly for modeling support, represents a new application of AI.

You are currently viewing a placeholder content from YouTube. To access the actual content, click the button below. Please note that doing so will share data with third-party providers.

More Information
Unblock content Accept required service and unblock content

The project consortium includes the following partners:

  • SimPlan AG (consortium leader)
  • Hochschule RheinMain – Arbeitsgruppe LAVIS (Learning and Visual Systems)

The AI-Mod research project was funded by the state of Hesse as part of the Distr@l program. The funding started in October 2020 and lasted 2 years.

Trainings

12.05. AnyLogic Short

14.05. Plant Simulation Short

19. – 20.05 Plant Simulation Coaching

Dates

  • SimAssist User Meeting – 13th May 2025, Regensburg
  • Transport Logistic – 2nd – 5th June 2025, Munich
  • Plant User Meeting – 30.06. – 02.07.2025, Amsterdam
  • ASIM 2025 – 24th – 26th September 2025, Dresden
  • Leanbase: Data, Power, Production – 20-21 May 2025, Mannheim

Downloads

In our download area you will find software information, application areas and case studies.

Newsletter

Register now for our newsletter.

Recent Posts

  • Process mining – making processes visible and exploiting potential for improvement
  • Detailed planning of production
  • Project support: We support you with your simulation topics
SimPlan_Refresh_Icon-white_EN

SimPlan AG

Sophie-Scholl-Platz 6
63452 Hanau

Registry Court: Amtsgericht Hanau
Registration number: HRB 6845

Contact

+49 6181 40296-0

info@simplan.de

Newsletter


    Our Channels

    © 2025 SimPlan AG – All rights reserved

    • Home
    • Imprint
    • Compliance
    • Privacy Policy
    • Contact