Back to search results

PhD Studentship: Self-learning battery management systems for lithium–sulfur batteries

Cranfield University - Faculty of Engineering and Applied Science

Qualification Type: PhD
Location: Cranfield
Funding for: UK Students
Funding amount: £20,780
Hours: Full Time
Placed On: 11th June 2026
Closes: 22nd July 2026
Reference: CRAN-0089

Self-learning battery management systems for lithium–sulfur batteries PhD

This fully funded PhD by the Faraday Institution, facilitates the use of next-generation Lithium-Sulfur (Li-S) batteries for transport systems. You will combine hands-on experiments with physics-based data-driven modelling to understand how Li-S batteries perform in real applications and develop suitable battery management systems (BMS) for that technology, capable of coping with the unfamiliar, reducing time, self-calibration, and optimising performance throughout the battery’s life. The project contributes to the development of next-generation battery systems, aligned with the UK’s ambitions for advanced energy technologies.

Lithium–sulfur (Li-S) batteries are a promising alternative to today’s lithium-ion batteries because they offer much higher theoretical energy density and use low-cost, sustainable materials. However, Li-S batteries are difficult to manage in real applications. Their electrochemical behaviour is highly complex, and they suffer from fast capacity loss, unstable reactions, and challenges in estimating key internal states such as state-of-charge (SoC) and state-of-health (SoH). Existing battery management systems (BMS), designed mainly for lithium-ion chemistries, cannot accurately track or predict these behaviours, which limits the safe and efficient use of Li-S batteries. Today, we do have techniques for estimating SoC and SoH in Li-S batteries; these depend on data collected a posteriori before deployment, so it is necessary to completely age a set of batteries in a representative environment in order to design BMS algorithms for them.  

This studentship will consider how a BMS for Li-S could learn ‘on the go’. This opens up a pathway to quickly deploy new build standards of Li-S, and to transfer into new applications with different duty cycles and conditions. This would smooth the pathway for the latest technologies, and maximise the potential for early deployment in applications. This project aims to develop a physics-based, self-learning BMS tailored specifically for Li-S batteries. The research will combine physics-driven models with machine-learning algorithms that can update themselves as the battery operates. By integrating real-time sensor data, the BMS will continuously refine its internal model, improving the accuracy and allowing the system to adapt to ageing, changing conditions, and different usage patterns. The final outcome will be an intelligent BMS capable of coping with the unfamiliar, reducing time, self-calibration, and optimising performance throughout the battery’s life. The project contributes to the development of next-generation battery systems, aligned with the UK’s ambitions for advanced energy technologies.

At a glance

  • Application deadline: 22 Jul 2026
  • Start date: 28 Sep 2026
  • Duration: 4 years (full-time)
  • Eligibility: UK
  • Reference: CRAN-0089

Supervisor

1st Supervisor: Dr Abbas Fotouhi

2nd Supervisor: Prof Daniel Auger

Entry requirements

First or second class UK honours degree or equivalent in a related discipline.

Funding

Sponsored by the Faraday Institution, the PhD researcher receives a UKRI stipend for 4 years. 

Stipend: £20,780 Tax free
Towards Fees: £5,006 
Travel, consumables and conferences: £3,230 
Total/year: £29,016
There is a supportive Faraday training programme valued at £5,000 per year, providing over 280 hours of structured development.

This PhD is open to home students only (UK nationals or those with settled status). Check if you are eligible here.

How to apply

For further information please contact:   

Name: Dr Abbas Fotouhi
Email: a.fotouhi@cranfield.ac.uk

Applicants must complete both of the following steps:

  1. Submit a short Faraday Institution expression of interest form.
    b. Apply through the university application process by completing the online application form.

 

We value your feedback on the quality of our adverts. If you have a comment to make about the overall quality of this advert, or its categorisation then please send us your feedback
Advert information

Type / Role:

Subject Area(s):

Location(s):

PhD tools
 

PhD Alert Created

Job Alert Created

Your PhD alert has been successfully created for this search.

Your job alert has been successfully created for this search.

Ok Ok

PhD Alert Created

Job Alert Created

Your PhD alert has been successfully created for this search.

Your job alert has been successfully created for this search.

Manage your job alerts Manage your job alerts

Account Verification Missing

In order to create multiple job alerts, you must first verify your email address to complete your account creation

Request verification email Request verification email

jobs.ac.uk Account Required

In order to create multiple alerts, you must create a jobs.ac.uk jobseeker account

Create Account Create Account

Alert Creation Failed

Unfortunately, your account is currently blocked. Please login to unblock your account.

Email Address Blocked

We received a delivery failure message when attempting to send you an email and therefore your email address has been blocked. You will not receive job alerts until your email address is unblocked. To do so, please choose from one of the two options below.

Max Alerts Reached

A maximum of 5 Job Alerts can be created against your account. Please remove an existing alert in order to create this new Job Alert

Manage your job alerts Manage your job alerts

Creation Failed

Unfortunately, your alert was not created at this time. Please try again.

Ok Ok

Create PhD Alert

Create Job Alert

When you create this PhD alert we will email you a selection of PhDs matching your criteria.When you create this job alert we will email you a selection of jobs matching your criteria. Our Terms and Conditions and Privacy Policy apply to this service. Any personal data you provide in setting up this alert is processed in accordance with our Privacy Notice

Create PhD Alert

Create Job Alert

When you create this PhD alert we will email you a selection of PhDs matching your criteria.When you create this job alert we will email you a selection of jobs matching your criteria. Our Terms and Conditions and Privacy Policy apply to this service. Any personal data you provide in setting up this alert is processed in accordance with our Privacy Notice

 
 
 
More PhDs from Cranfield University

Show all PhDs for this organisation …

More PhDs like this
Join in and follow us

Browser Upgrade Recommended

jobs.ac.uk has been optimised for the latest browsers.

For the best user experience, we recommend viewing jobs.ac.uk on one of the following:

Google Chrome Firefox Microsoft Edge