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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >An optimum process window to preferable microstructure distribution and improved macroscopic property for friction stir-assisted incremental aluminum alloy sheet forming
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An optimum process window to preferable microstructure distribution and improved macroscopic property for friction stir-assisted incremental aluminum alloy sheet forming

机译:优选微结构分布的最优工艺窗口及改进摩擦搅拌辅助增量铝合金板形成的改进宏观性

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摘要

Friction stir-assisted incremental sheet forming (FS-ISF) of aluminum alloy enables increased formability, solute precipitation strengthening, and stable microstructure with fine grains by dynamic recrystallization. However, higher rotating speed may destroy the surface quality of the forming part since process parameters have contradictory effects on macroscopic and microscopic results. To solve this dilemma, microstructure characteristics and macroscopic differences in FS-ISF experiments combining rotating speed and step-down increment on AA2024 and AA6061 are revealed. And the effects of parameter combinations on key macro- and micro performance indicators including forming depth, surface roughness, mechanical properties, solute precipitation, and grain sizes are comprehensively analyzed to propose an optimum process window for achieving better macro-micro indicators at the same time by both raising rotating speed (S >= 4500RPM) and decreasing step-down increment ( increment d <= 0.4mm). Finally, the applicability of the proposed process window for preferable microstructure distributions and improved macroscopic properties is proved by supplementary FS-ISF experiments.
机译:搅拌摩擦辅助铝合金渐进式板料成形(FS-ISF)通过动态再结晶提高了成形性、溶质沉淀强化和稳定的细晶粒组织。然而,较高的转速可能会破坏成形零件的表面质量,因为工艺参数对宏观和微观结果有矛盾的影响。为了解决这一难题,在结合AA2024和AA6061的转速和降压增量的FS-ISF实验中,揭示了微观结构特征和宏观差异。以及参数组合对关键宏观和微观性能指标的影响,包括成形深度、表面粗糙度、机械性能、溶质沉淀、,通过提高转速(S>=4500RPM)和降低降压增量(增量d<=0.4mm),对晶粒尺寸进行了综合分析,提出了一个最佳工艺窗口,以同时实现更好的宏观和微观指标。最后,通过补充的FS-ISF实验证明了所提出的工艺窗口对于更好的微观结构分布和改善宏观性能的适用性。

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