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Hybrid Digital Twin using Physics-Informed Neural Networks (PFE / Internship)

Integration Objects

StageHybride3 à 6 moisRémunéréDate limite : 10 déc. 2025
Physics-Informed Neural NetworksDigital TwinProcess SimulationAI/MLExplainable AIProcess Engineeringsoftware development

Postuler

Description

Project Overview

  • Develop a PINN-based hybrid digital twin that detects precursors to process issues, monitors efficiency, and identifies root causes through physics-consistent AI.
  • Merge physical models with explainable machine learning to predict deviations early and provide transparent diagnostic insights to improve efficiency, reliability, and reduce downtime.

Deliverables

  • PINN Model: A unified Physics-Informed Neural Network capturing system dynamics, efficiency trends, and early degradation signals, along with training and validation data/results.
  • Hybrid Digital Twin Application: A PINN-driven simulation and diagnostic engine for anomaly and root-cause detection of energy inefficiency.
  • Python Codebase: End-to-end scripts for data handling, PINN training, evaluation, and deployment.
  • Monitoring Interface: A lightweight dashboard for real-time anomaly alerts and interpretable diagnostic outputs.
  • Technical Documentation: A complete methodological and validation report.

Technical Scope & Keywords

  • Focus areas include Hybrid Digital Twin, Physics-Informed Neural Networks (PINNs), Process Simulation, Dynamic Behavior Prediction, Data-Driven Modeling, Root Cause Analysis, and Explainable AI.
  • Work involves model development (PINNs), data preparation, model validation, interpretability methods, dashboarding for monitoring and alerts, and preparing reproducible code and documentation.

Application

  • To apply, send your CV to careers@integrationobjects.com.
  • In your application, emphasize experience with PINNs or physics-guided ML, process simulation, model validation, and building deployable Python codebases.