A New Combined Hardware and Software Tools for X-ray In-Depth and Non-Destructive Analysis of Metal Deformation Processing
2024 IEEE Nuclear Science Symposium (NSS), Medical Imaging Conference (MIC) and Room Temperature Semiconductor Detector Conference (RTSD)(2024)
CNR
Abstract
The aim of COHeSIA project is to project and build an X-ray-based tool, composed of a hardware instrument with double silicon and CdZnTe detector and a dedicated software, capable measure and analyze angle-energy map with diffraction and fluorescence signals on a wide energy range. This tool will be capable to provide an in-depth characterization, from atomic to the macro scale, of the deformation process typical of metal processing (like rolling, deep drawing or even machining) under investigation. This kind of instrument can be fundamental for monitoring the manufacturing process at industry level and can be implemented into feedback-based control systems
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