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structure and phase purity using X-ray diffraction. Prepare samples for TEM using plasma FIB. Analyze the microstructure, interface sharpness and defect distributions using TEM. Correlate MBE growth
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optimization of laser deposition coating processes using combined wire and powder feed, including numerical simulation of interface bonding mechanisms, microstructure evolution, and process parameter
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microstructure, residual stress, and distortion of the deposited parts, all of which significantly impact their mechanical properties and overall performance. Consequently, accurately determining and effectively
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Term: Initially 1 year, renewable. Appointment Start Date: As early as February 2026, but flexible Group or Departmental Website: https://med.stanford.edu/bridge-lab.html (link is external) How to Submit
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Aluminium Alloys We are seeking a highly motivated PhD candidate to join a project focused on understanding how the microstructural heterogeneity of recycled aluminium alloys affects their ductility and
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the presence of a fatigue limit and its influence on component longevity. After analyzing the results of these tests, and if improvements are deemed necessary, new specimens with optimized microstructures will
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for space and satellite applications. The project investigates how microstructural design in polycrystalline functional oxides, such as grain size, crystallographic orientation, and strain, can be used
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on physics-based computational modelling. Key activities include crystal-plasticity-based finite-element (CPFE) simulations, unit-cell and microstructure-resolved models, and the development of modelling
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. Successful applicants will investigate the relationships between processing, microstructure, and properties of metals through combined macro- and micro-mechanical experimentation and finite-element modelling
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electrification strategy, the research aims to develop a multidisciplinary framework that combines microstructure modeling, machine learning, and probabilistic simulation to link manufacturing parameters, foam