Acta Metallurgica Sinica (English Letters) ›› 2024, Vol. 37 ›› Issue (11): 1858-1874.DOI: 10.1007/s40195-024-01774-1
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Xin Li1, Chenglei Wang1(
), Laichang Zhang2(
), Shengfeng Zhou3(
), Jian Huang4(
), Mengyao Gao1, Chong Liu1, Mei Huang1, Yatao Zhu1, Hu Chen1, Jingya Zhang1, Zhujiang Tan1
Received:2024-04-28
Revised:2024-06-15
Accepted:2024-06-28
Online:2024-11-10
Published:2024-09-15
Contact:
Chenglei Wang, clw0919@163.com;
Laichang Zhang, l.zhang@ecu.edu.au;
Shengfeng Zhou, zhousf1228@163.com;
Jian Huang, 1353865317@qq.comXin Li, Chenglei Wang, Laichang Zhang, Shengfeng Zhou, Jian Huang, Mengyao Gao, Chong Liu, Mei Huang, Yatao Zhu, Hu Chen, Jingya Zhang, Zhujiang Tan. Machine Learning-Based Comprehensive Prediction Model for L12 Phase-Strengthened Fe-Co-Ni-Based High-Entropy Alloys[J]. Acta Metallurgica Sinica (English Letters), 2024, 37(11): 1858-1874.
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| Number | Feature | Number | Feature |
|---|---|---|---|
| 1 | Fe content (at.%) | 10 | Homogenization temperature (k) |
| 2 | Co content (at.%) | 11 | Homogenization time (h) |
| 3 | Ni content (at.%) | 12 | Cold rolling (%) |
| 4 | Al content (at.%) | 13 | First aging temperature (k) |
| 5 | Ti content (at.%) | 14 | First aging time (h) |
| 6 | Cr content (at.%) | 15 | Second aging temperature (k) |
| 7 | Cu content (at.%) | 16 | Second aging time (h) |
| 8 | Mn content (at.%) | 17 | Water cooling |
| 9 | Nb content (at.%) | 18 | Air cooling |
| 19 | Furnace cooling |
Table 1 Features and their numbers of data
| Number | Feature | Number | Feature |
|---|---|---|---|
| 1 | Fe content (at.%) | 10 | Homogenization temperature (k) |
| 2 | Co content (at.%) | 11 | Homogenization time (h) |
| 3 | Ni content (at.%) | 12 | Cold rolling (%) |
| 4 | Al content (at.%) | 13 | First aging temperature (k) |
| 5 | Ti content (at.%) | 14 | First aging time (h) |
| 6 | Cr content (at.%) | 15 | Second aging temperature (k) |
| 7 | Cu content (at.%) | 16 | Second aging time (h) |
| 8 | Mn content (at.%) | 17 | Water cooling |
| 9 | Nb content (at.%) | 18 | Air cooling |
| 19 | Furnace cooling |
Fig. 2 Performance and SHAP significance plots of L12 phase existence prediction models: a, c, e ROC curves of different predictive models, b, d, f ROC curves of different prediction models after screening out some useless features, g importance of features of predictive models
Fig. 3 Heat map of Pearson's correlation coefficient set between different features of EWM-based database for comprehensive prediction of L12 phase volume fraction and hardness of HEAs
Fig. 4 Predictive effectiveness of an combined prediction model for L12 phase volume fraction and hardness on test and training datasets: a-d test dataset, e-h training dataset, i distribution of SHAP values for different input features of the combined L12 phase volume fraction and hardness prediction model
Fig. 5 R2 and RMSE values of EWM-based integrated prediction model for L12 phase volume fraction and hardness of HEAs on training and test datasets: a comparison of R2 values, b comparison of RMSE values
Fig. 7 Heat map of Pearson’s correlation coefficient set between different features of the EWM-based database for comprehensive strength and plasticity prediction of HEAs
Fig. 8 Performance of the combined strength and plasticity prediction model for HEAs on test and training datasets: a-d test dataset, e-h: training data set, i distribution of SHAP values for different input features of the combined strength and plasticity prediction model
Fig. 9 R2 and RMSE values of the combined strength and plasticity prediction model for HEAs on the training and test datasets: a comparison of R2 values, b comparison of RMSE values
| Alloy | Fe (at.%) | Co (at.%) | Ni (at.%) | Cr (at.%) | Al (at.%) | Ti (at.%) | F-A-Tem (℃) | F-A-Time (h) |
|---|---|---|---|---|---|---|---|---|
| A1 | 25 | 31 | 37 | - | 2 | 5 | 800 | 8 |
| A2 | 25 | 25 | 41 | - | 3 | 6 | 800 | 8 |
| A3 | 23 | 28 | 37 | 4 | 4 | 4 | 800 | 8 |
| A4 | 24 | 27 | 32 | 8 | 6 | 3 | 800 | 8 |
Table 2 Composition and process set of candidate HEAs to be verified after screening
| Alloy | Fe (at.%) | Co (at.%) | Ni (at.%) | Cr (at.%) | Al (at.%) | Ti (at.%) | F-A-Tem (℃) | F-A-Time (h) |
|---|---|---|---|---|---|---|---|---|
| A1 | 25 | 31 | 37 | - | 2 | 5 | 800 | 8 |
| A2 | 25 | 25 | 41 | - | 3 | 6 | 800 | 8 |
| A3 | 23 | 28 | 37 | 4 | 4 | 4 | 800 | 8 |
| A4 | 24 | 27 | 32 | 8 | 6 | 3 | 800 | 8 |
| Alloy | L12 phase volume fraction (Experiment value) | Hardness (Experiment value) | EW1 (Experiment value) | EW1 (Predicted value) |
|---|---|---|---|---|
| A1 | 45% | 385.5 HV | 1.8273 | 1.9754 |
| A2 | 43% | 381.6 HV | 1.8115 | 1.9865 |
| A3 | 48% | 393.9 HV | 1.8687 | 1.9851 |
| A4 | 47% | 388.9 HV | 1.8454 | 1.9625 |
Table 3 Experimental and predicted EW1 values for candidate HEAs
| Alloy | L12 phase volume fraction (Experiment value) | Hardness (Experiment value) | EW1 (Experiment value) | EW1 (Predicted value) |
|---|---|---|---|---|
| A1 | 45% | 385.5 HV | 1.8273 | 1.9754 |
| A2 | 43% | 381.6 HV | 1.8115 | 1.9865 |
| A3 | 48% | 393.9 HV | 1.8687 | 1.9851 |
| A4 | 47% | 388.9 HV | 1.8454 | 1.9625 |
Fig. 13 Tensile properties of candidate HEAs at room temperature: a tensile curves, b comparison of alloy properties, c tensile and yield strengths, d elongation
| Alloy | Tensile strength (Experiment value) | Yield strength (Experiment value) | Total elongation (Experiment value) | EW2 (Experiment value) | EW2 (Predicted value) |
|---|---|---|---|---|---|
| A1 | ~ 1436 MPa | ~ 1014 MPa | ~ 32.7% | 2.9695 | 3.1978 |
| A2 | ~ 1421 MPa | ~ 1021 MPa | ~ 24% | 2.9417 | 3.1965 |
| A3 | ~ 1526MPa | ~ 1138 MPa | ~ 24.3% | 2.9789 | 3.2368 |
| A4 | ~ 1490 MPa | ~ 1097 MPa | ~ 32% | 3.0143 | 3.2332 |
Table 4 Experimental and predicted EW2 values for candidate HEAs
| Alloy | Tensile strength (Experiment value) | Yield strength (Experiment value) | Total elongation (Experiment value) | EW2 (Experiment value) | EW2 (Predicted value) |
|---|---|---|---|---|---|
| A1 | ~ 1436 MPa | ~ 1014 MPa | ~ 32.7% | 2.9695 | 3.1978 |
| A2 | ~ 1421 MPa | ~ 1021 MPa | ~ 24% | 2.9417 | 3.1965 |
| A3 | ~ 1526MPa | ~ 1138 MPa | ~ 24.3% | 2.9789 | 3.2368 |
| A4 | ~ 1490 MPa | ~ 1097 MPa | ~ 32% | 3.0143 | 3.2332 |
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