The role of the distribution system operator (DSO) is changing from a passive maintainer of electricity networks to an active coordinator in the edge of the energy system. At the same time, customers become enabled to change from passive energy users to active participants in the local electricity system. Maintaining privacy and grid (cyber) security levels are part of the challenge to face.
A digital transformation at the edge of the distribution grid and at connected customers is unfolding. This opens possibilities for deploying distributed intelligence to enable smart network operations by collecting and processing data while preserving high levels of privacy for the customers. Exploring AI models for smart System Operation (AISO) is a collaboration project in which DSO Alliander will work together with the TU/e departments of Electrical Engineering (Electrical Energy Systems group) and Mathematics & Computer Science (Interconnected Resource-aware Intelligent Systems, and Stochastic Operations Research) to realize these innovations.
The project will be part of the TU/e's Eindhoven AI Systems Institute (EAISI) and Eindhoven Institute for Renewable Energy Systems (EIRES) programs and therefore share, learn, and disseminate within the EAISI and EIRES communities and through the TU/e master programs Data Science and AI, Medical Engineering and AI Engineering Systems, and educational activities from the TU/e Electrical Energy Systems group and Math & Computer Science department.
If you are eager to work with a multi-disciplinary team focusing on AI-driven applications to support the DSO then this is the right position for you.
Job Description The project focuses on synthetical data generation, AI-driven state estimation, stochastic modelling and reliability assessment, and grid-edge optimal solutions. These models will be combined with the AI-driven state estimations to enhance network observability and grid monitoring. Additionally, integration with the stochastic modelling and reliability assessment process will provide valuable insights into the impact of uncertainties on grid reliability. Finally, in conjunction with the developed edge intelligence, these advancements will enable optimal solutions for the electricity grids in the Netherlands and e.g. the rest of Europe, while maintaining user privacy.
The research results will be immediately utilized by Alliander for congestion estimation and flexibility procurement. To achieve this, it is part of this project that all the developed (AI-driven) models and algorithms are also implemented in production-ready open-source packages.
One of the four main research tracks (RTs) of AISO is as follows:
RT4: Grid-edge optimal solutionsAlong with the new generation of smart meters and the emerging development of virtual grid concept, there is a clear trend for system operation to push intelligence towards the edge devices.
To this end, within this research track, the successful candidate will work on designing privacy-aware accurate, fast, and efficient semi/self-learning AI models that can deliver results comparable with cloud-based fully supervised AI models. More specifically, the research will include:
- Designing self-learning edge AI models based on the privacy/security-by-design principle
- Tackling AI model generalization
- Optimization of distributed and centralized AI model design and load balancing
- Integration and validation of simulation-based solutions in the virtual grid environment
See for the other 3 reseach tracks below:
PhD1 / RT1: Synthetical data generation using multivariate models.
PhD2 / RT2: AI-driven state estimation and prediction.PhD3 / RT3: Stochastic modelling and reliability assessment