PhD Scholarship: Smart Grids, University of Exeter, Cornwall, UK

Postdoctoral Position in UK United Kingdom

PhD Scholarship: Smart Grids: This PhD opportunity focuses on developing a multi-agent reinforcement learning framework to secure and optimize renewable-energy-driven smart grids under cyber-attack scenarios. The project blends control engineering, data science, machine learning, cyber-security, and energy systems. Work will be carried out at the University of Exeterโ€™s Penryn Campus under the guidance of an interdisciplinary supervisory team.

PhD Scholarship: Multi-Agent Reinforcement Learning for Cyber-Physical Smart Grids

Engineering and Physical Sciences Research Council (EPSRC) Doctoral Landscape Award


Quick Overview

ItemDetails
DesignationPhD Candidate
FundingEPSRC Doctoral Landscape Award
Project TitleMulti-agent Reinforcement Learning-based Cyber-Physical Networked Control for Renewable Energy Fed Smart Grids under Cyber-Attacks
SupervisorsDr Saptarshi Das (Lead), Dr Shuyue Lin
DepartmentEarth and Environmental Sciences
ProgrammePhD in Earth and Environmental Science
LocationDDM Building, Penryn Campus, University of Exeter, Cornwall
Application ModeOnline Application
Contacts.das3@exeter.ac.uk

Designation

PhD Candidate โ€“ EPSRC-funded doctoral researcher.


Research Area

The work sits at the intersection of:

  • Multi-agent reinforcement learning
  • Cyber-physical systems
  • Smart grid optimization
  • Renewable energy integration
  • Cyber-attack detection and resilience
  • Federated learning
  • Game-theoretic energy market modelling

Location

DDM Building
Penryn Campus
University of Exeter, Cornwall, UK


Eligibility / Qualification

Applicants should hold:

  • A strong Masterโ€™s degree in Mathematics, Statistics, Computer Science, Engineering, or Physics
  • Solid programming ability
  • Strong analytical and problem-solving skills
  • Good writing and presentation skills

Job Description (PhD Project Work)

Hereโ€™s what the role involves:

  • Designing a multi-agent reinforcement learning architecture for real-time control of renewable-energy-fed smart grids.
  • Modelling and managing DERs such as solar, wind, marine, bioenergy, and storage technologies including batteries, fuel cells, hydrogen storage, and PHEVs.
  • Addressing voltage and frequency regulation, economic scheduling, and fault-tolerant control.
  • Incorporating cyber-attack scenarios such as false-data injection, DoS attacks, and network reconfiguration disruptions.
  • Using deep neural networks to scale decision-making in large, complex state-action spaces.
  • Implementing federated learning for agent-level coordination while protecting data privacy.
  • Embedding game-theoretic concepts for energy trading and negotiation among grid actors.
  • Validating algorithms through simulation testbeds and hardware-in-the-loop microgrid setups.
  • Advancing secure, resilient, and efficient next-generation smart grid operations.

How to Apply

Submit your application through the official University of Exeter portal.
Application Link: APPLY HERE
For project-related queries, contact: s.das3@exeter.ac.uk

Make sure you meet the entry requirements for the PhD in Earth and Environmental Science before applying.


Last Date to Apply

Until position filled

Link

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