Fully Funded PhD in Machine learning for photovoltaics, Australia

About the Project

PhD Program: machine learning for photovoltaics

Institution: Australian National University (QS ranking 2024: No. 30 World-wide)

Research areas: Perovskites, Machine Learning for Science, Photovoltaics (perovskite single-junction, perovskite/silicon tandem, etc)

Program start date: Any time after acceptance

Scholarship deadlines:

  • End of August for International students (university scholarship).
  • End of September for Australian students (university scholarship).
  • Any time for project-funded and externally funded students

Mode of study: Full-time

Supervisors:

  • Prof Kylie Catchpole, FAA, FTSE
  • Prof Klaus Weber
  • Dr Heping Shen
  • Dr Hualin Zhan ( contact for this program)

Eligibility:

Program description:

We are a world-leading group in the field of photovoltaics. Our world-record perovskite solar cells have identified great opportunities and key challenges to revolutionize the next-generation photovoltaics (publications in NatureScienceEnergy Environ. Sci., etc.). This project aims to address these key challenges, in which we will use machine learning to deliver a step-change in the field’s capacity to precisely control the stability of perovskite and to rationally design the perovskite-based solar cells. We have already developed a prototype machine learning platform that is ideal for future PhD studies on this project (recently published in Energy Environ. Sci.).

Successful candidates will work in a friendly environment with access to world-class photovoltaics fabrication, characterization, and computation facilities, such as the Australian Centre for Advanced Photovoltaics, Australian National Fabrication Facility, National Computational Infrastructure, etc. The ACT nodes of these facilities are all hosted by the Australian National University. Candidates will have opportunities to visit our close collaborators in Germany, United States, China, and other states in Australia. Candidates are expected to attend domestic and international conferences.

Candidates with a keen interest in technological revolution of perovskite photovoltaics using machine learning are encouraged to apply. Experience in machine learning, physics, mathematics, and/or perovskite materials engineering is highly preferred. If you are passionate about engineering science and impactful research, we invite you to apply for this exciting opportunity to shape the future of sustainable energy technologies.

SOURCE: FIND A PhD

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