PhD Position F/M PhD Position - Structural Methods for Mixed Model/Data Digital Twin Engineering

Le descriptif de l’offre ci-dessous est en Anglais

Type de contrat : CDD

Niveau de diplôme exigé : Bac + 5 ou équivalent

Fonction : Doctorant

Niveau d'expérience souhaité : Jeune diplômé

A propos du centre ou de la direction fonctionnelle

The Inria Centre at Rennes University is one of Inria's eight centres and has more than thirty research teams. The Inria Centre is a major and recognized player in the field of digital sciences. It is at the heart of a rich R&D and innovation ecosystem: highly innovative PMEs, large industrial groups, competitiveness clusters, research and higher education players, laboratories of excellence, technological research institute, etc.

Contexte et atouts du poste

The PhD will be conducted within Hycomes team of the Inria center at Rennes University and in the realm of the Engineering Digital Twins (EDT) program, a national initiative aiming to advance the science and engineering of digital twin systems.

The candidate will work in a research environment combining expertise in:

  • modeling languages such as Modelica
  • hybrid systems and dynamical systems
  • structural analysis of differential-algebraic equations
  • large-scale simulation and digital twin architectures

Facilities and Resources

  • Access to advanced modeling and simulation tools
  • Collaboration with researchers specializing in Modelica and hybrid systems
  • Opportunities to test methods on real-world engineering models
  • Participation in international scientific collaborations

Mission confiée

Position Overview

We are seeking a highly motivated PhD candidate to contribute to the Engineering Digital Twins (EDT) program within Catalyst: the Reliable Hybrid Model Forge. The research focuses on developing new methods, algorithms, and tools that help designers correct model/data mismatches in digital twins of physics-dominated systems.

Modern modeling languages and tools allow engineers to build large-scale models directly from first principles of physics. Languages such as Modelica enable scalable modeling of complex cyber-physical systems, often using modeling paradigms such as port-Hamiltonian systems.

While assembling models from component libraries is relatively straightforward, practitioners often face major challenges in:

  • parameter identification
  • consistent model initialization
  • fine-tuning of model dynamics
  • integrating empirical models for poorly understood subsystems

This PhD aims to develop scalable methods that combine physics-based modeling with data-driven approaches to improve the reliability and accuracy of digital twin models.

Research Focus

A key challenge in digital twin engineering is the integration of experimental or simulated data into complex physics-based models.

Existing approaches typically rely on optimization-based data assimilation techniques, including:

  • data reconciliation
  • system identification
  • deep learning approaches such as autoencoders

Although powerful, these methods often do not scale well to large dynamical systems involving thousands of variables.

This PhD proposes to address this challenge using structural analysis techniques for differential-algebraic equation (DAE) systems.

The core research idea is to transform the problem of data integration into the analysis of structurally overdetermined models. By leveraging structural analysis algorithms, it becomes possible to compute Minimal Structurally Overdetermined (MSO) subsystems, which can act as parity spaces to detect inconsistencies between model predictions and observed data.

These MSO subsystems can be solved using measured data, and the resulting residuals provide indicators of model inconsistencies. This approach enables the localization of model/data mismatches and supports targeted model corrections. Ultimately, the goal is to assist designers in discovering structural deficiencies in equation-based models, by identifying where the available data cannot be explained by the current set of equations.

The PhD research will investigate:

  • Structural Analysis for Digital Twin Models: Adapting DAE structural analysis algorithms for model/data integration
  • Parity Space Construction using MSOs: Identifying subsystems suitable for mismatch detection
  • Scalable Algorithms for Large Systems: Leveraging graph-based algorithms with polynomial complexity
  • Model Diagnosis and Correction: Using statistical analysis of residuals to localize inconsistencies

The proposed methods are particularly attractive because they scale well to large sparse systems, potentially containing millions of equations, and do not require prior knowledge of the reachable state space.

Principales activités

  • Conduct research on structural analysis methods for differential-algebraic equation systems
  • Develop algorithms to detect and localize model/data mismatches
  • Implement prototype tools supporting model validation in digital twin workflows
  • Evaluate scalability on large-scale engineering models
  • Collaborate with researchers working on modeling languages and digital twin platforms
  • Publish results in international conferences and journals
  • Participate in EDT consortium activities and collaborative research meetings

Compétences

Required qualifications:

  • Master’s degree in Computer Science, Applied Mathematics, Automatic Control, or related fields
  • Strong background in dynamical systems, numerical methods, or scientific computing
  • Interest in modeling languages and digital twin technologies
  • Strong analytical and problem-solving skills
  • Good communication skills in English 

Preferred qualifications:

  • Knowledge of differential-algebraic equations (DAEs)
  • Experience with modeling tools such as Modelica
  • Background in control systems, system identification, or data assimilation
  • Familiarity with graph algorithms or structural system analysis

Avantages

  • Subsidized meals
  • Partial reimbursement of public transport costs
  • Leave: 7 weeks of annual leave + 10 extra days off due to RTT (statutory reduction in working hours) + possibility of exceptional leave (sick children, moving home, etc.)
  • Possibility of teleworking (after 6 months of employment) and flexible organization of working hours
  • Professional equipment available (videoconferencing, loan of computer equipment, etc.)
  • Social, cultural and sports events and activities
  • Access to vocational training
  • Social security coverage

Rémunération

monthly gross salary 2300 euros