An ML-Based Approach for HCF Life Prediction of Additively Manufactured AlSi10Mg Considering the Effects of Powder Size and Fatigue Damage
Abstract
:1. Introduction
2. Theoretical Model
2.1. Damage-Coupled Constitutive Model
2.2. Fatigue Damage Model
3. Numerical Simulation and Validation
3.1. Material Parameters’ Calibration
- Initialize the swarm by generating a population of particles randomly throughout the search space.
- Evaluate the fitness of each particle in the swarm by computing the objective function for each particle.
- Update the velocity and position of each particle based on its own best-known position and the best-known position of its neighboring particles.
- Assess the fitness of each particle again according to the updated position.
- Compare the fitness of each particle with its previous best-known position and update it if the new position is better.
- Determine the best particle in the swarm based on its fitness value.
- Repeat steps 3 to 6 until the stopping criterion is attained and output the best solution found by the algorithm.
3.2. Numerical Implementation of Theoretical Model
- Initialize the material constitutive parameters, the parameters for the damage evolution model, and the damage itself.
- Update the elastic modulus based on the accumulated fatigue damage.
- Calculate the stress–strain distribution at each integration point of the finite element model by employing the damage-coupled elasto-plastic constitutive model.
- Determine the damage evolution rate and increment, and update the damage while utilizing the cycle-jumping method to reduce computational complexity. This method assumes that the damage evolution rate remains constant over a specific number of cycles.
- Check whether the damage is greater than or equal to 1. If so, terminate the computation and consider the failure of the structural fatigue. Otherwise, return to step 2.
3.3. CDM-Based Numerical Results
4. Machine Learning Approach for HCF Life Prediction
4.1. Data Pre-Processing
- Data cleaning: This involves removing or correcting any errors or inconsistencies in the data, such as missing values, outliers, or duplicate records. Missing values can be handled by either removing the affected rows or replacing the missing values with a value, and outliers can be detected.
- Data transformation: Data transformation encompasses the process of converting the data into a format that is well-suited for analysis by a machine learning algorithm, with the aim of reducing the dimensionality of the data.
- Data splitting: The pre-processed data are typically split into two or more sets, with one set used for training the machine learning model and another set used for testing or validating the model. It helps to evaluate the performance of the model on unseen data and avoid overfitting.
- Data normalization: Normalizing the data involves ensuring that the input data have zero mean and unit variance. It helps the machine learning algorithm converge faster and improves the accuracy of the predictions.
4.2. Machine Learning Models
4.2.1. RF (Random Forest)
- Data Preparation. Prepare the dataset by splitting it into input features and the target variable.
- Bootstrap Aggregating. Generate multiple bootstrap samples from the original dataset by randomly sampling the data with replacement.
- Decision Tree Training. Build a decision tree for each bootstrap sample. At each node of the tree, a subset of input features is randomly selected, and the best split is determined based on a criterion to maximize the differences between the splits.
- Ensemble Creation. Combine the individual decision trees to create the Random Forest ensemble. Each tree in the ensemble independently predicts the target variable based on the input features.
- Prediction. For a new input instance, pass it through each decision tree in the Random Forest ensemble. The final prediction is obtained by averaging the predictions from all the trees.
4.2.2. K-Nearest Neighbor (KNN)
- Given a training dataset with features X and target values y, and a new data point x for which we want to predict the target value.
- For each data point in the training set, compute the distance between the feature vectors of that point and the feature vector of the new data point x. The distance metric used can be Euclidean distance, Manhattan distance, or any other distance metric.
- Select the K training data points that are closest to the new data point x based on the computed distances.
- Compute the average or median of the target values of the K nearest neighbors. This value is used as the predicted target value for the new data point x.
- Repeat the above steps for all the new data points for which we want to make predictions.
4.3. Evaluation Metrics of ML Prediction
5. Results and Discussion
5.1. Predicted Fatigue Lives of AM AlSi10Mg by ML Models
5.2. Discussions
5.2.1. Influence of Stress Ratio and Maximum Stress on the Fatigue Life
5.2.2. Influence of Powder Size on the Damage Accumulation and Evolution Rate
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Powder Size | C1 | C2 | C3 | γ1 | γ2 | γ3 |
---|---|---|---|---|---|---|
20 μm | 10,000 | 6569.42 | 10,000 | 983.25 | 29.34 | 983.25 |
50 μm | 10,000 | 6163 | 9673.03 | 4999.76 | 29.06 | 4671.39 |
Powder Size/μm | Fatigue Life Range | α | β | n | m |
---|---|---|---|---|---|
20 | <107 | 2.18 × 10−11 | 2.6 | 0.002284 | 2.20 |
≥107 | 2.83 × 10−14 | 2.6 | 0.000791 | 2.43 | |
50 | <107 | 4.56 × 10−11 | 1.5 | 0.000802 | 1.90 |
≥107 | 1.00 × 10−18 | 1.5 | 0.001996 | 4.72 |
RF Model | KNN Model | Numerical Model | |
---|---|---|---|
MSE | 0.19 | 0.28 | 0.34 |
R2 | 0.71 | 0.63 | 0.58 |
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Bian, Z.; Wang, X.; Zhang, Z.; Song, C.; Gao, T.; Hu, W.; Sun, L.; Chen, X. An ML-Based Approach for HCF Life Prediction of Additively Manufactured AlSi10Mg Considering the Effects of Powder Size and Fatigue Damage. Aerospace 2023, 10, 586. https://doi.org/10.3390/aerospace10070586
Bian Z, Wang X, Zhang Z, Song C, Gao T, Hu W, Sun L, Chen X. An ML-Based Approach for HCF Life Prediction of Additively Manufactured AlSi10Mg Considering the Effects of Powder Size and Fatigue Damage. Aerospace. 2023; 10(7):586. https://doi.org/10.3390/aerospace10070586
Chicago/Turabian StyleBian, Zhi, Xiaojia Wang, Zhe Zhang, Chao Song, Tongzhou Gao, Weiping Hu, Linlin Sun, and Xiao Chen. 2023. "An ML-Based Approach for HCF Life Prediction of Additively Manufactured AlSi10Mg Considering the Effects of Powder Size and Fatigue Damage" Aerospace 10, no. 7: 586. https://doi.org/10.3390/aerospace10070586
APA StyleBian, Z., Wang, X., Zhang, Z., Song, C., Gao, T., Hu, W., Sun, L., & Chen, X. (2023). An ML-Based Approach for HCF Life Prediction of Additively Manufactured AlSi10Mg Considering the Effects of Powder Size and Fatigue Damage. Aerospace, 10(7), 586. https://doi.org/10.3390/aerospace10070586