Damage characterization and recognition of aluminum alloys based on acoustic emission signal
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摘要: 隨著高速鐵路的不斷提速,高鐵輕量化設計中廣泛采用高強鋁合金材料,但高速列車齒輪箱體服役安全評價亟待完善.本文針對高速列車齒輪箱體使用的鋁合金材料服役特性,搭建了聲發射檢測拉伸試驗系統,運用BP神經網絡算法對聲發射信號進行訓練與識別,實現對箱體材料拉伸損傷表征識別與材料服役狀態的安全預警.本研究為材料損傷狀態的無損實時識別提供了一種識別與預警方法.Abstract: With the rapid development of high-speed rails, high-strength aluminum alloys are widely used in the lightweight design, but the service safety assessment of gear boxes in high-speed trains needs to be improved in China. An acoustic emission tensile test system was built for high-speed train gearbox shells made of aluminum alloys. After training and recognition by a BP neural network, acoustic emission signal was used for characterizing tensile damage in the materials and warning the materials service status. The research provides a method of nondestructive real-time characterization and warning for damage in aluminum alloys.
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Key words:
- aluminum alloys /
- acoustic emissions /
- damage detection /
- neural networks /
- pattern recognition
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