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Job Record #19309 | |
Title | Machine Learning Framework for Bioreactor Simulation Speed-up |
Category | PhD Studentship |
Employer | University of Zaragoza. |
Location | Spain, Zaragoza |
International | Yes, international applications are welcome |
Closure Date | Sunday, December 15, 2024 |
Description: | |
Opening date: 15/07/2024 Closing date: Until Filled Research Area: Scientific Machine Learning for Fluid Mechanics applied to Bioreactor Modeling Starting date: not later than March 2025 Duration: 3 years PhD position Funding: The PhD is fully funded by a Horizon Europe project to be started on Sept. 2024 Contract: N3 level according to University of Zaragoza internal rules. PhD program: Fluid Mechanics at University of Zaragoza (Spain) Research group: GFN – Numerical Fluid Dynamics Group (UZ) in collaboration with the Sustainable Process Institute (UVa). Eligibility: • MSc in Engineering, Physics, Mathematics, Computational Science (or equivalent MSc degree). • Provide a short CV including a full list of university grades. For further information: salvador.izquierdo@unizar.es Project background: Bioreactor simulations play a crucial role in developing and optimizing bioprocesses. However, conventional simulation methods can become computationally expensive for large-scale bioreactors, hindering the scale-up process. This computational intensity stems from the multiscale and multiphysics characteristics inherent to bioreactors. This PhD thesis proposes the development of a framework based on composable Scientific Machine Learning (SciML) to accelerate bioreactor simulations. The framework leverages the strengths of both physics-based models (based on Computational Fluid Dynamics (CFD) simulations) and data-driven machine learning techniques. A hierarchy of Multifidelity and Multiscale physics-informed deep learning models will be developed to capture the essential dynamics of bioreactors. A flexible, composable architecture will be constructed to enable researchers to integrate various model components effortlessly for design and scaling analyses. The framework will be validated on real-world bioreactor data, demonstrating its accuracy and efficiency in predicting bioreactor behavior. Specifically, several gas-feed bioreactors will be studied: (i) ammonia biofiltration for nitrate production using a nitrifying bacteria biofilm; (ii) biogas fermenter for microbial protein production; and (iii) syngas fermenter for acetic acid production. This research has the potential to significantly reduce the computational cost of bioreactor simulations, facilitating faster scale-up of bioprocesses and accelerating advancements in biotechnology. |
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Contact Information: | |
Please mention the CFD Jobs Database, record #19309 when responding to this ad. | |
Name | Salvador Izquierdo |
salvador.izquierdo@unizar.es | |
Email Application | Yes |
Record Data: | |
Last Modified | 17:04:53, Thursday, August 01, 2024 |
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