University of Exeter

PhD Studentship: Smart Manufacturing and Digital Twin Modelling for Remanufacturing Systems (PhD (Funded)]

University of Exeter

Verified Visa SponsorExeter, United Kingdom, UKPosted 2 weeks ago

Job Description

Remanufacturing plays a vital role in enabling sustainable and circular production systems by recovering value from end-of-use products and components. A key operational stage within remanufacturing is product recovery and material separation, which strongly influences overall system performance, cost efficiency, and environmental impact. This is a critical stage in remanufacturing where uncertainties make planning and decision-making more complex and difficult to optimise using conventional approaches. This project aims to develop advanced modelling and simulation frameworks to support decision-making in smart remanufacturing systems, enabling improved operational performance, resource efficiency, and sustainability outcomes.

Alongside the Exeter Digital Enterprise Systems (ExDES) research group, the successful candidate will be expected to:

Develop a conceptual modelling and digital twin framework for smart remanufacturing systems to enhance decision-making under uncertainty.

Design and implement the simulation models using appropriate tools (e.g., AnyLogic, Simio, Siemens Plant Sim, Python, MATLAB or other relevant simulation platforms)

Evaluate and validate the proposed framework and assess its impact on operational efficiency and sustainability in remanufacturing contexts

This funded PhD studentship is open to highly motivated candidates with a strong background in Engineering or a closely related discipline. Applicants should have an interest in manufacturing systems, operations research, and simulation modelling.

Candidates with prior experience in areas such as discrete-event simulation, agent-based modelling, systems modelling, digital twins, optimisation, or decision-support systems are especially encouraged to apply.

Applicants should hold (or expect to obtain) a first-class or strong upper second-class undergraduate degree (or international equivalent) in Engineering, Industrial Engineering, Manufacturing Engineering, Systems Engineering, Operations Management, Computer Science, or a related field. A master's degree in a relevant area would be desirable but is not essential.

UK and International tuition fees and an annual tax-free stipend of at least £21,805 per year

Apply (Original)

AI Resume Tailoring

23%
Before
87%
After

Tailor your resume for PhD Studentship: Smart Manufacturing and Digital Twin Modelling for Remanufacturing Systems (PhD (Funded)] roles

Skills & keywords matchedATS-optimized format

Reach hiring managers at University of Exeter

R.
R. T.·Head of HR Operations
EmailLinkedIn
A.
A. J.·Assistant Director of Human Resources (Policy and Reward)
EmailLinkedIn
H.
H. H.·HR Business Partner
EmailLinkedIn
75 contacts · 29 recruiters
Unlock contacts (free)

AI Cover Letters for PhD Studentship: Smart Manufacturing and Digital Twin Modelling for Remanufacturing Systems (PhD (Funded)]

Generate tailored cover letters, recruiter emails, and LinkedIn messages matched to your resume.

Cover Letter
250-350 words, 4 paragraphs
LinkedIn Message
300 chars, casual tone
Follow-up Email
100-150 words, concise
  • Tailored to your resume & job
  • Cover letters, emails, LinkedIn messages
  • Professional tone, your experience
Try AI Cover Letters (free)

Your toolkit for landing PhD Studentship: Smart Manufacturing and Digital Twin Modelling for Remanufacturing Systems (PhD (Funded)] roles

AI Resume Tailoring
Recruiter Finder
Job Radar Alerts
Application Tracker