PhD Student in Physics - Informed Deep Learning for System Condition Monitoring and Prediction

Updated: about 2 years ago
Job Type: Permanent
Deadline: The position may have been removed or expired!

In der aktuellen Covid-19 Situation laufen die Rekrutierungen weiter. Es kann dabei allerdings zu Verzögerungen kommen. Vielen Dank für Ihr Verständnis.


100%, Zurich, fixed-term

The Chair of Intelligent Maintenance Systems focuses on developing intelligent algorithms to improve performance, reliability and availability of complex industrial assets and making the maintenance more cost efficient. Our research focuses on deep learning, domain adaptation, hybrid approaches (combing physical performance models and deep learning algorithms), and deep reinforcement learning. We develop algorithms for system health monitoring and prediction of complex infrastructure and industrial assets. 


Project background

The PhD thesis will be embedded in the project funded by the Swiss National Science Foundation "Operational digital twins of complex industrial systems based on physics-informed deep learning with integrated structural inductive bias, physics and domain expertise". 


Job description

The main objective of the PhD project is to develop physics-informed deep learning algorithms for system condition monitoring and prediction for complex infrastructure and industrial assets. 

Two PhD positions are available. One PhD position will be focusing on developing physics-informed graph neural networks for efficient real-time modelling of complex physical processes monitored by spatially distributed sensor networks. The second PhD position will be focusing on developing methodology for disentangled, physics-informed feature representation learning and integrating prior physical knowledge and domain expertise as regularizers in the learning process of physics-informed neural networks.

This position will be available as soon as possible or upon agreement; the planned project duration is three years.


Your profile

We are looking for a PhD with a strong analytical background, and an outstanding MSc degree in Engineering, Control, Computer Science, Physics, Applied Mathematics, or a related field. You should be proficient in machine learning, deep learning, signal processing, statistics and learning theory. Experience in graph neural networks for the first PhD position is required. Professional command of English (both written and spoken) is mandatory.


ETH Zurich

ETH Zurich is one of the world’s leading universities specialising in science and technology. We are renowned for our excellent education, cutting-edge fundamental research and direct transfer of new knowledge into society. Over 30,000 people from more than 120 countries find our university to be a place that promotes independent thinking and an environment that inspires excellence. Located in the heart of Europe, yet forging connections all over the world, we work together to develop solutions for the global challenges of today and tomorrow.

Working, teaching and research at ETH Zurich

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