PhD Vacancy
Modern low-carbon
energy systems such as photovoltaic (PV) arrays and battery energy storage
systems (BESS) generate extensive measurement data (electrical, thermal,
imaging and diagnostic).
However, there is
currently no generic, metrology-grounded AI/ML framework that fuses these
heterogeneous data with physics-based models to create trustworthy,
asset-specific digital twins with quantified uncertainty.
This project will
develop a measurement-science-driven digital twin framework for energy assets,
initially demonstrated on PV modules/fields and battery systems using existing
NPL datasets. The work will integrate suitable physics-based models (for example
PV performance modelling, electro-thermal and thermofluid dynamics) with deep
learning and multi-fidelity modelling.
Bayesian
fusion/inference methods will also be integrated for state estimation,
uncertainty quantification, anomaly detection, remaining-life prediction and
operational optimisation.
Research aims and
indicative work packages: Develop a generalizable, multisensory digital twin
methodology for PV and battery systems that is metrology-guided and
uncertainty-aware.
- Create Bayesian data
fusion and uncertainty quantification approaches that deliver traceable
confidence intervals for model outputs to aid decision making.
- Validate the framework
using calibrated datasets (including ageing, diagnostic, thermal and electrical
performance measurements).
- Demonstrate asset
health assessment capabilities including anomaly detection and remaining-life
prediction with quantified uncertainty.
- Align outputs with
emerging best practice in digital metrology for energy systems and support
dissemination through stakeholder engagement routes.
Training environment
and collaboration:
NPL will provide the
measurement-science foundation, calibrated datasets, specialist support in data
science and uncertainty, and host the student for an extended placement with
facilities and training.
Mansim will provide
industrial supervision, training and access to commercial CFD/AI platforms and
representative industrial case studies, supporting rapid translation of
outcomes into practice.