Applications of Decision Tree and Random Forest as Tree-Based Machine Learning Techniques for Analyzing the Ultimate Strain of Spliced and Non-Spliced Reinforcement Bars
Abstract
:1. Introduction
2. Methodology and Data Collection
3. Prediction Models
3.1. Decision Tree (DT)
3.2. Random Forest (RF)
4. Results
5. Accuracy Evaluation
6. Summary and Conclusions
- The results proved the high ability of both DT and RF models for learning the relationship between input variables and the output. The quick and simple ML-based models proposed in this study, therefore, could be considered as a reliable alternative approach for time-consuming and costly experimental tests.
- Both the DT and RF model exhibited highly reliable results, with R2 scores higher than 85%. The DT model, however, illustrated higher accuracy (R2 = 89%) compared to the RF model (R2 = 85%). It should be explained that although RF generally leads to more reliable results, in this study, the predicted values obtained by the DT model were more accurate, because the training and testing datasets for each model were selected randomly in order to avoid any human effect on the prediction process. In other words, the training and testing databases were not the same, which caused the slight difference between the models’ accuracy. In order to compare RF and DT more precisely, the same training and testing datasets should be chosen. This study, however, focused on the reliability assessment of Decision Tree and Random Forest models for estimating the ultimate strain of spliced and non-spliced steel bars, and the results proved their acceptable accuracy.
- It is also noteworthy that comparing the accuracy of the models, which estimates the ultimate strain of bars, for each splice method could be conducted in further studies. To this end, (a) an extensive database including the results of tests on each splice type should be collected; (b) input variables for each method should be specified—as an example, the strength of grout could be considered as one of the inputs for models estimating the mechanical properties of grouted spliced bars; and (c) the databases should be large enough for training the relationships between inputs (which may be different for each splice technique) and output appropriately.
- The proposed models in this research could be used in a more generalized model for predicting the stress-strain behavior of spliced and non-spliced bars. More clearly, by combining models which predict other parameters (e.g., yield strength and strain) with the models proposed in this study, the stress-strain curve could be estimated without doing experimental tests.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
ANN | Artificial Neural Network |
DT | Decision Tree |
MAE | Mean of Absolute Error |
MAPE | Mean of Percentage Error |
ML | Machine Learning |
MSE | Mean of Square Error |
n | Number of datasets |
RC | Reinforced Concrete |
RF | Random Forest |
RMSE | Root of Mean Square Error |
Actual value | |
Predicted value |
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Splice Type | Steel Grade | Bar Diameter (mm) | Length of Coupler (mm) | Outer Diameter of Coupler (mm) | Temperature | Ultimate Strain (%) | |
---|---|---|---|---|---|---|---|
Splice type | 1 | ||||||
Steel grade | −0.2903 | 1 | |||||
Bar diameter (mm) | 0.1202 | −0.6783 | 1 | ||||
Length of Coupler (mm) | 0.5919 | −0.5424 | 0.3494 | 1 | |||
Outer diameter of Coupler (mm) | 0.7556 | −0.6306 | 0.3811 | 0.818 | 1 | ||
Temperature | 0.2882 | 0.2681 | −0.2307 | −0.0025 | 0.0257 | 1 | |
Ultimate strain (%) | −0.541 | 0.2281 | −0.2471 | −0.4698 | −0.4781 | −0.5092 | 1 |
Minimum | Maximum | Mean | Median | Variance | Standard Deviation | |
---|---|---|---|---|---|---|
Steel grade | 60.00 | 500.00 | 310.73 | 500.00 | 46,272.79 | 215.11 |
Bar diameter (mm) | 12.00 | 32.26 | 24.16 | 25.00 | 55.25 | 7.43 |
Coupler length (mm) | 45.00 | 490.54 | 88.80 | 0.00 | 20,316.91 | 142.54 |
Coupler outer diameter (mm) | 7.29 | 64.00 | 17.23 | 0.00 | 519.34 | 22.79 |
Temperature (°C) | 20.00 | 600.00 | 61.82 | 25.00 | 15,448.67 | 124.29 |
Ultimate strain (%) | 1.08 | 17.90 | 9.93 | 11.00 | 15.33 | 3.92 |
R2 | R | RMSE | MSE | MAE | MAPE | |
---|---|---|---|---|---|---|
DT | 0.89 | 0.94 | 1.38 | 1.90 | 1.04 | 23.25 |
RF | 0.85 | 0.92 | 1.68 | 2.82 | 1.29 | 19.72 |
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Dabiri, H.; Farhangi, V.; Moradi, M.J.; Zadehmohamad, M.; Karakouzian, M. Applications of Decision Tree and Random Forest as Tree-Based Machine Learning Techniques for Analyzing the Ultimate Strain of Spliced and Non-Spliced Reinforcement Bars. Appl. Sci. 2022, 12, 4851. https://doi.org/10.3390/app12104851
Dabiri H, Farhangi V, Moradi MJ, Zadehmohamad M, Karakouzian M. Applications of Decision Tree and Random Forest as Tree-Based Machine Learning Techniques for Analyzing the Ultimate Strain of Spliced and Non-Spliced Reinforcement Bars. Applied Sciences. 2022; 12(10):4851. https://doi.org/10.3390/app12104851
Chicago/Turabian StyleDabiri, Hamed, Visar Farhangi, Mohammad Javad Moradi, Mehdi Zadehmohamad, and Moses Karakouzian. 2022. "Applications of Decision Tree and Random Forest as Tree-Based Machine Learning Techniques for Analyzing the Ultimate Strain of Spliced and Non-Spliced Reinforcement Bars" Applied Sciences 12, no. 10: 4851. https://doi.org/10.3390/app12104851
APA StyleDabiri, H., Farhangi, V., Moradi, M. J., Zadehmohamad, M., & Karakouzian, M. (2022). Applications of Decision Tree and Random Forest as Tree-Based Machine Learning Techniques for Analyzing the Ultimate Strain of Spliced and Non-Spliced Reinforcement Bars. Applied Sciences, 12(10), 4851. https://doi.org/10.3390/app12104851