professor profile picture

Daniel Auger

Prof

Cranfield University

Country flag

United Kingdom

Has open position

This profile is automatically generated from trusted academic sources.

Google Scholar

.

ORCID

.

LinkedIn

Social connections

How do I reach out?

Sign in for free to see their profile details and contact information.

Meet Kite AI

Contact this professor

LinkedIn
ORCID
Google Scholar

Research Interests

Automotive Engineering

10%

Artificial Intelligence

10%

Mechanical Engineering

10%

Energy Storage Systems

10%

Physics

10%

Electrical Engineering

10%

Machine Learning

10%

Ask ApplyKite AI

Start chatting
How can you help me contact this professor?
What are this professor's research interests?
How should I write an email to this professor?

Positions1

Publisher
source

Abbas Fotouhi

University Name
.

Cranfield University

Fully Funded PhD in Self-Learning Battery Management Systems for Lithium–Sulfur Batteries

Fully funded PhD opportunity at Cranfield University in Self-Learning Battery Management Systems (BMS) for Lithium–Sulfur Batteries . The project is hosted in the Advanced Vehicle Engineering Centre (AVEC) and is supervised by Dr Abbas Fotouhi and Prof Daniel Auger . This research focuses on battery management systems , lithium–sulfur batteries , machine learning , battery modelling , and real-time data analytics . The aim is to develop an intelligent, physics-based, self-learning BMS that can adapt to ageing, changing conditions, and different usage patterns, improving performance, safety, reliability, and lifetime of next-generation Li-S batteries. The PhD candidate will join Cranfield’s battery research environment and have access to the Battery Lab and experimental facilities, with training provided before lab use. The project is supported by the Faraday Institution and includes a UKRI stipend for 4 years , plus funding towards fees, travel, consumables, and conferences. A bespoke Faraday training programme is also included. Eligibility: applicants should hold a first or second class UK honours degree or equivalent in a related discipline. Coding, modelling and simulation, machine learning, and battery systems experience are advantageous. The opportunity is open to home students only (UK nationals or those with settled status). Deadline: 22 July 2026. Reference: CRAN-0089.

just-published