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This repository demonstrates multiscale modeling of copper heat pipes using machine learning, integrating grain-scale data with FEA via a UMAT. It highlights grain size’s impact on stress, strain, and heat transfer for optimized material design.
The following project presents a control-volume and energy analysis of the International space station and utilizes heat transfer principles to calculate the surface temperature of a typical radiator.