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Farzin Golzar

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2 weeks ago

PhD Position in Data-driven AI-based Battery Aging Modeling at KTH Royal Institute of Technology KTH Royal Institute of Technology in Sweden

Degree Level

PhD

Field of study

Computer Science

Funding

The position is fully funded with a monthly salary according to KTH's doctoral student salary agreement. The employment is full-time and temporary, with a maximum duration corresponding to four years of full-time doctoral education. The project is funded by the Swedish Energy Agency and includes employee benefits.

Deadline

Mar 12, 2026

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Country

Sweden

University

KTH Royal Institute of Technology

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Where to contact

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Keywords

Computer Science
Environmental Science
Electrical Engineering
Artificial Intelligence
Optimisation
Energy Transition
Photovoltaic
energy storage systems
Machine learning

About this position

KTH Royal Institute of Technology is offering a fully funded PhD position in Data-driven AI-based Battery Aging Modeling within the School of Industrial Engineering and Management. The research is part of the ALTBESS project, funded by the Swedish Energy Agency, and focuses on advancing battery energy storage system (BESS) operation in buildings integrated with photovoltaic (PV) systems. The project aims to develop advanced machine learning models to understand, predict, and optimize battery degradation, contributing to more sustainable and reliable energy infrastructures.

The doctoral student will work on real-world case studies, combining simulation, optimization, and operational data to create battery aging models using transfer learning and data-driven techniques. These models will be integrated into existing optimization and scheduling frameworks to enable aging-aware battery operation, and the results will be consolidated into a user-friendly software package for researchers and practitioners. The position offers a unique opportunity to work at the intersection of AI, energy system optimization, and battery technologies, with both academic and industrial collaboration.

Supervision will be provided by Dr Farzin Golzar, Assistant Professor at KTH. The ideal candidate will have a strong background in energy systems, optimization methods, and a keen interest or experience in machine learning, data analysis, battery modeling, and sector coupling. Proficiency in English (equivalent to English B/6) is required. Applicants must hold a second cycle degree (e.g., master's) or have completed at least 240 higher education credits, with at least 60 at the second-cycle level, or possess equivalent knowledge. Personal skills such as goal orientation, independence, collaboration, and analytical ability are highly valued.

The position is full-time, temporary, and offers a monthly salary according to KTH's doctoral student salary agreement, along with employee benefits. The employment duration is up to four years, corresponding to full-time doctoral education. The application deadline is March 12, 2026. To apply, candidates must submit a complete application through KTH's recruitment system, including a CV, application letter, diplomas, grades, language certificates, and relevant publications. All documents must be certified and translated if necessary. For more information, visit the official job posting or contact Dr Farzin Golzar at [email protected].

Keywords: battery aging modeling, AI, machine learning, energy storage systems, energy technology, optimization, data-driven methods, battery degradation, energy transition, photovoltaic systems.

Funding details

The position is fully funded with a monthly salary according to KTH's doctoral student salary agreement. The employment is full-time and temporary, with a maximum duration corresponding to four years of full-time doctoral education. The project is funded by the Swedish Energy Agency and includes employee benefits.

What's required

Applicants must have a second cycle degree (e.g., master's) or have completed at least 240 higher education credits, with at least 60 at the second-cycle level, or possess equivalent knowledge. Coursework or training in energy systems and optimization methods is required. Interest or experience in machine learning, data analysis, battery modeling, sector coupling, and optimization methods is advantageous. English proficiency equivalent to English B/6 is mandatory. Candidates should be goal-oriented, able to work independently and collaboratively, and possess strong analytical skills. Personal skills are highly valued in the selection process.

How to apply

Apply through KTH's recruitment system by submitting a complete application including CV, application letter, diplomas, grades, language certificates, and relevant publications. Ensure all documents are certified and translated if necessary. Follow the instructions in the official advertisement.

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