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Flowcean - Model Learning for Cyber-Physical Systems

arXiv cs.LG / 3/13/2026

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Key Points

  • Flowcean is a new framework that automates data-driven model generation for Cyber-Physical Systems, prioritizing modularity and usability.
  • It offers multiple learning strategies, data processing methods, and evaluation metrics to support a wide range of CPS modeling tasks.
  • The framework is designed to integrate diverse learning libraries and tools within a modular, flexible architecture to streamline model generation and evaluation.
  • By making CPS model learning more efficient and accessible, Flowcean aims to accelerate research and practical deployment of CPS models.

Abstract

Effective models of Cyber-Physical Systems (CPS) are crucial for their design and operation. Constructing such models is difficult and time-consuming due to the inherent complexity of CPS. As a result, data-driven model generation using machine learning methods is gaining popularity. In this paper, we present Flowcean, a novel framework designed to automate the generation of models through data-driven learning that focuses on modularity and usability. By offering various learning strategies, data processing methods, and evaluation metrics, our framework provides a comprehensive solution, tailored to CPS scenarios. Flowcean facilitates the integration of diverse learning libraries and tools within a modular and flexible architecture, ensuring adaptability to a wide range of modeling tasks. This streamlines the process of model generation and evaluation, making it more efficient and accessible.