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MATLAB stands for Matrix Laboratory. MathWorks developed MATLAB as a multi-paradigm numerical computing environment and proprietary programming language. It has evolved significantly over the years to become a tool utilized by engineers, scientists, and mathematicians for various tasks, including matrix calculations, developing algorithms, data analysis, and visualization. MATLAB's applications span various industries and disciplines. It's used in image and signal processing, communications,...

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ML-extendable framework for multiphysics-multiscale simulation workflow and data management using Kadi4Mat.

Somnath Bharech1, Yangyiwei Yang2, Michael Selzer3

  • 1Division Mechanics of Functional Materials, Institute of Materials Science, Technical University Darmstadt, Otto-Berndt-Strasse 3, Darmstadt, 64287, Germany.

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Summary
This summary is machine-generated.

This study introduces a research workflow and data management (RWDM) framework to organize material science data. The framework enhances data-driven design and analysis for simulations, particularly in additive manufacturing.

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Area of Science:

  • Materials Science
  • Computational Science
  • Data Management

Background:

  • Material modeling and simulation are crucial for understanding material behavior across scales.
  • Effective data management and metadata are essential for data-driven material design.
  • Current methods often struggle with managing complex simulation workflows and large datasets.

Purpose of the Study:

  • To propose a Research Workflow and Data Management (RWDM) framework.
  • To manage complex workflows and research data following FAIR principles.
  • To showcase the framework using multiphysics-multiscale simulations for additive manufacturing.

Main Methods:

  • Developed an RWDM framework integrated with Kadi4Mat, an open-source research data infrastructure.
  • Curated simulation input/output data, setups, and scripts in standardized Kadi4Mat records.
  • Interlinked records to form an ontology-based knowledge graph and implemented an automation scheme.

Main Results:

  • Successfully managed complex multiphysics-multiscale simulation data for additive manufacturing.
  • Created standardized, interlinked records for simulation workflows and associated data.
  • Demonstrated an automated scheme for high-throughput simulations and post-processing.

Conclusions:

  • The proposed RWDM framework effectively manages complex simulation workflows and research data.
  • The framework supports FAIR data principles and facilitates data-driven analyses.
  • The integration with Kadi4Mat and knowledge graph creation enhances research reproducibility and discoverability.