The researcher's work focuses on additive manufacturing materials, particularly those formed using SLM (Singly-Lamellar StringBuilder) technology. Their studies extensively examine properties such as porosity, hardness, and friction and wear performance in SLM-affected samples. They also employ Taguchi’s statistical design of experiments for process optimization. Functionally graded materials via interfacial bonding are investigated, focusing on residual stresses and corrosion performance. The researcher uses neural networks to predict tensile strength influenced by heat treatments and process parameters. Additionally, they examine post-process-free fatigue performance in in-situ-heated IN718 samples, highlighting the impact of heat treatment strategies on material durability.
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