Abstract
Dual-phase (DP) steels are an important family of steel grades widely used in the automotive industry, aerospace, ultra-supercritical generating units, etc. Reducing costs throughout the process from raw material preparation to experimental design is a critical challenge that needs to be addressed urgently. This paper develops an effective active machine learning (AL) method to explore and exploit new DP steels with excellent mechanical properties. A simple case of hardness optimization is first reported to validate the reliabilityand efficiency of the AL method. Simultaneous enhancement of strength and plasticityis then realized by fast learning in a vast design space free of Co, finding several desired low-cost DP steels. More importantly, convenient application software has beensuccessfully developed, which has practical significance for the engineering application of the AL method.
Original language | English |
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Pages | 557-558 |
Number of pages | 2 |
State | Published - 2024 |
Event | 75th World Foundry Congress, WFC 2024 - Deyang, China Duration: 25 Oct 2024 → 30 Oct 2024 |
Conference
Conference | 75th World Foundry Congress, WFC 2024 |
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Country/Territory | China |
City | Deyang |
Period | 25/10/24 → 30/10/24 |
Keywords
- Dual-phase steels
- active learning
- mechanical properties