Data-Driven Modeling for Privacy-Preserving Energy Prediction of Industrial Robots

    Publikation: Beitrag in Buch oder TagungsbandVortrag mit Beitrag in TagungsbandBegutachtung

    Abstract

    This study presents a data-driven, privacy-preserving framework for predicting the energy consumption of industrial robots. First, we compare different machine-learning based approaches for the modeling problem and show that high accuracy can be achieved. Second, to protect sensitive data in collaborative workflows, privacy-preserving machine learning (ppML) techniques based on multi-party computation (MPC) are applied to the trained models. The approach enables accurate energy modeling while maintaining data confidentiality, which is critical in industrial settings where intellectual property protection is essential, thus promoting safe and efficient energy optimization in collaborative workflows.
    OriginalspracheEnglisch
    TitelAutomation, Robotics & Communications for Industry 4.0/5.0 2025
    UntertitelProceedings of the 5th Winter IFSA Conference on Automation, Robotics & Communications for Industry 4.0/5.0 (ARCI' 2025), 19-21 February 2025, Granada, Spain
    Redakteure/-innenSergey Y. Yurish
    ErscheinungsortBrussels
    Seiten184-189
    Seitenumfang6
    ISBN (elektronisch)978-84-09-69171-5
    DOIs
    PublikationsstatusVeröffentlicht - März 2025
    Veranstaltung5th Winter IFSA Conference on Automation, Robotics & Communications for Industry 4.0/5.0 - Granada, Granada, Spanien
    Dauer: 19 Feb. 202521 Feb. 2025

    Konferenz

    Konferenz5th Winter IFSA Conference on Automation, Robotics & Communications for Industry 4.0/5.0
    KurztitelARCI' 2025
    Land/GebietSpanien
    StadtGranada
    Zeitraum19/02/2521/02/25

    Research Field

    • Cyber Security

    Web of Science subject categories (JCR Impact Factors)

    • Robotics & Automatic Control

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