Research on the Fatigue Life Prediction for a New Modified Asphalt Mixture of a Support Vector Machine Based on Particle Swarm Optimization
Abstract
:1. Introduction
2. Objectives
- (1)
- Disperse an SMC modifier into the SBS asphalt to prepare an SMCSBS-modified asphalt with different SMC contents, including 8%, 10%, and 12%, and then prepare the SMCSBS-modified asphalt mixture for a semi-circular bending test and semi-circular bending fatigue test (SCB).
- (2)
- Establish the M5′ model tree (M5), artificial neural network (ANN), support vector machine (SVM), and PSO-SVM models to find the best prediction model for the fatigue life of different SMCSBS asphalt mixtures.
3. Materials
4. Methods
4.1. Specimen Forming and Semi-Circular Bending (SCB) Fatigue Test
4.2. Experimental Scheme Design
4.3. Test Results
4.3.1. Analysis of the Influence of SMC Content on Fatigue Performance
4.3.2. Analysis of the Influence of Loading Frequencies on Fatigue Performance
4.3.3. Fatigue Equation
5. Predictive Simulation and Analysis
5.1. Particle Swarm Optimization (PSO)
5.2. Support Vector Machine (SVM)
5.2.1. SVM Basic Principles
5.2.2. SVM Parameter Optimization and Kernel Function
5.3. Simulation of the PSO-SVM
5.3.1. Main Steps
5.3.2. Model Performance Evaluation
5.3.3. Performance Analysis
6. Conclusions
- (1)
- Under the same load frequency (10 Hz), the fatigue life of different SMC contents is shown as follows: under the same stress ratio/stress amplitude, the fatigue life of a mixture reaches the maximum when the effect of SMC content on fatigue performance is 10%. This also shows that the more SMC content is not better; when the content of SMC is more than 10%, the fatigue life is lower with more SMC content.
- (2)
- Taking the fatigue life of the mixture of 10% SMCSBS as an example, the fatigue performance of different asphalt aggregate ratios and different loading frequencies is shown as follows: whether under the same stress ratio/stress amplitude, the greater the loading frequency, the greater the fatigue life. The fatigue life is the largest when the asphalt aggregate ratio is 4.3 and the loading frequency is 15 Hz.
- (3)
- Four artificial intelligence models M5′, ANN, SVM, and PSO-SVM were used to predict the fatigue life of an SMCSBS asphalt mixture, with input parameters (SMC content/%, asphalt aggregate ratio, stress ratio, and load frequency/Hz) and output parameters (fatigue life). The model was validated using standards, such as RMSE and R2. The results show that M5′ (RMSE = 4035.33 and R2 = 0.779), ANN (RMSE = 3988.36 and R2 = 0.814), and SVM (RMSE = 3563.26 and R2 = 0.861), but the PSO-SVM (RMSE = 2253.71 and R2 = 0.903) with particle swarm optimization showed the most stable algorithm compared with other methods. Particle swarm optimization (PSO) support vector machine (SVM) ha good performance in predicting the fatigue life of an SMCSBS asphalt mixture.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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SMC Content/% | 25 °C Penetration/0.1 mm | Softening Point °C | 5 °C Ductility | |||
---|---|---|---|---|---|---|
Average | Standard Deviation | Average | Standard Deviation | Average | Standard Deviation | |
8 | 191 | 0.211 | 74 | 0.050 | 89.7 | 0.531 |
10 | 228 | 0.325 | 56.5 | 0.400 | >100 | 0 |
12 | 248 | 0.561 | 55 | 0.636 | >100 | 0 |
Sieve Size(mm) | Passing Rate (by Mass) | ||
---|---|---|---|
Up Limits | Bottom Limits | Composite Gradation | |
19 | 100 | 100 | 100.0 |
16.0 | 100 | 90 | 99.6 |
13.2 | 92 | 76 | 84.2 |
9.5 | 80 | 60 | 76.7 |
4.75 | 62 | 34 | 52.0 |
2.36 | 48 | 20 | 34.6 |
1.18 | 36 | 13 | 25.1 |
0.60 | 26 | 9 | 15.3 |
0.30 | 18 | 7 | 10.1 |
0.15 | 14 | 5 | 5.2 |
0.075 | 8 | 4 | 2.4 |
Binder | PG64-34 SMCSBS modified asphalt | ||
Apparent density (g/cm3) | 2.766 |
Parameter | Levels |
---|---|
SMC content | 8%, 10%, 12% |
Asphalt aggregate ratio | 4.3%, 4.8%, 5.3% |
Stress ratio | 0.2, 0.3, 0.4, 0.5 |
Loading frequency | 10 Hz, 15 Hz |
Test temperature | 15 °C |
Method | RMSE (mm/day) | R2 |
---|---|---|
M5′ | 4035.33 | 0.779 |
ANN | 3988.36 | 0.814 |
SVM | 3563.26 | 0.861 |
PSO-SVM | 2253.71 | 0.903 |
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Sun, Y.; He, D.; Li, J. Research on the Fatigue Life Prediction for a New Modified Asphalt Mixture of a Support Vector Machine Based on Particle Swarm Optimization. Appl. Sci. 2021, 11, 11867. https://doi.org/10.3390/app112411867
Sun Y, He D, Li J. Research on the Fatigue Life Prediction for a New Modified Asphalt Mixture of a Support Vector Machine Based on Particle Swarm Optimization. Applied Sciences. 2021; 11(24):11867. https://doi.org/10.3390/app112411867
Chicago/Turabian StyleSun, Yu, Dongpo He, and Jun Li. 2021. "Research on the Fatigue Life Prediction for a New Modified Asphalt Mixture of a Support Vector Machine Based on Particle Swarm Optimization" Applied Sciences 11, no. 24: 11867. https://doi.org/10.3390/app112411867
APA StyleSun, Y., He, D., & Li, J. (2021). Research on the Fatigue Life Prediction for a New Modified Asphalt Mixture of a Support Vector Machine Based on Particle Swarm Optimization. Applied Sciences, 11(24), 11867. https://doi.org/10.3390/app112411867