Prediction of the Properties of Vibro-Centrifuged Variatropic Concrete in Aggressive Environments Using Machine Learning Methods
Abstract
:1. Introduction
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- The expansion of theoretical knowledge about the applications of machine learning methods in predicting the strength of vibro-centrifuged variatropic (heterogeneous in cross section) concrete, considering the influence of environmental conditions;
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- A description of the possibility of practical use of the developed methods to optimize the production process of vibro-centrifuged variatropic concrete;
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- Recommendations for participants in the construction industry on the implementation of intelligent models in order to achieve an economic effect by improving the process of monitoring the physical and mechanical properties of the concrete in question under the influence of aggressive environmental factors.
- (1)
- Application of existing experience in theoretical analysis and practical implementation of machine learning methods in the life cycle management of vibro-centrifuged variatropic concrete;
- (2)
- Justification of the need to expand the stack of technologies to determine the physical and mechanical properties of vibro-centrifuged variatropic concrete by creating regression models based on machine learning methods;
- (3)
- Testing of samples made of vibro-centrifuged variatropic concrete under laboratory conditions, with the subsequent formation of a dataset for the training, optimization and testing of regression models;
- (4)
- Analysis of the data obtained, identifying the main statistical characteristics and determining dependencies;
- (5)
- Creating an expanded dataset by adding new features at the feature engineering stage;
- (6)
- Description and implementation of the ridge regression method on original dataset and feature-engineered dataset;
- (7)
- Description and implementation of the decision tree and XGBoost method on original dataset and feature-engineered dataset;
- (8)
- Description and implementation of the XGBoost method on original dataset and feature-engineered dataset;
- (9)
- Comparative analysis of the results of all models based on the values of the main metrics to assess the quality of the forecast when solving a regression problem;
- (10)
- Determination of prospects and features of implementation of developed forecasting methods into practice;
- (11)
- Determining the possibility of “learning transfer” by adapting the results obtained to other types of concrete.
2. Materials and Methods
2.1. Materials
- (1)
- Portland cement CEM I 52.5N, produced at the Serebryakovcement enterprise (Mikhailovka, Russia); a compressive strength at 28 days of age of at least 56.0 MPa and a specific surface area of 3400 cm2/g.
- (2)
- The Kagalnitsky quarry in Kagalnik, Russia provided river sand with a fineness modulus of 1.43 and a bulk density of 1400 kg/m3.
- (3)
- Crushed sandstone, mined in the Sokolovsky quarry (Novoshakhtinsk, Russia); grain dimensions were from 5 to 20 mm.
2.2. Composition, Manufacturing Parameters and Properties of Vibro-Centrifuged Variatropic Concrete
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- cement—375 kg/m3;
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- water—185 L/m3;
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- sand—694 kg/m3;
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- crushed stone—1113 kg/m3.
2.3. Description and Analysis of the Dataset
- X1—number of freezing–thawing cycles;
- X2—chloride content, mg/dm3;
- X3—sulfate content, mg/dm3;
- X4—number of moistening–drying cycles.
3. Results and Discussion
3.1. Creation of Feature-Engineered Dataset and Feature Selection
3.2. Ridge Regression
3.3. Decision Tree
3.4. XGBoost
3.5. Assessing the Quality of the Machine Learning Methods Used
3.6. Results of the Used Machine Learning Methods
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- Transparency and interpretability of results with a clear justification of the limits of acceptable errors. Allowable errors must be within generally accepted building codes and regulations. If the permissible errors are exceeded, the forecast model should be modified.
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- Data security, in cases of supplementing models with information that is not subject to disclosure.
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- Training and regulation. Users of the final product with implemented “smart” algorithms must have clear instructions for their use and intelligently evaluate the decisions made by the system. It is planned to develop a user interface using the Streamlit framework [59].
4. Conclusions
- (1)
- A database has been compiled, containing information on vibro-centrifuged concrete strength and its susceptibility to aggressive environmental factors. The collected dataset has been compiled into a database and is planned to be made publicly available to interested researchers.
- (2)
- A hypothesis was put forward and confirmed about the possibility of dividing data into clusters with the subsequent use of analytical techniques to extract additional knowledge from the dataset, which contributed to improving the final metrics of regression models.
- (3)
- Machine learning methods have been implemented, optimized and tested; namely, ridge regression, decision tree and XGBoost. The hyperparameters of each model were optimized using the Optuna optimization system.
- (4)
- The XGBoost model showed the best quality metrics: MAE = 1.134627, MSE = 4.801390, RMSE = 2.191208, MAPE = 2.72% and R2 = 0.93.
- (5)
- Overall, strength prediction of vibro-centrifuged variatropic concrete using ML methods was found to be effective and accurate. In addition, the use of feature engineering and feature selection techniques made it possible to improve the quality of the models.
- (6)
- The developed models can provide additional information for civil engineers and materials science specialists to make informed decisions regarding the impact of environmental factors on variatropic concrete strength.
- (7)
- The models implemented in this study were saved with the best parameters and can later be used to analyze new numerical datasets; predictions of compressive strength values for new samples are made by running through the final XGBoost model.
- (8)
- It is possible to adapt the algorithms for other types of concrete that face challenging environments. To consider a variety of material properties and transitions, it is recommended to employ data drift, concept drift and domain adaptation technologies. This ensures the inclusion of new relationships without compromising quality. It is planned to develop a user interface using the Streamlit framework.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Number of Freeze–Thaw Cycles | Chloride Content (mg/dm3) | Sulfate Content (mg/dm3) | Number of Wet–Dry Cycles | Compressive Strength (MPa) | |
---|---|---|---|---|---|
Mean | 124.38 | 774.85 | 621.37 | 249.98 | 41.51 |
Std. | 71.92 | 72.15 | 80.03 | 148.64 | 8.59 |
Min | 1.00 | 650.00 | 450.00 | 1.00 | 28.50 |
25% | 61.00 | 715.75 | 562.75 | 120.75 | 33.90 |
50% | 120.00 | 768.50 | 626.00 | 236.50 | 40.35 |
75% | 188.00 | 837.25 | 690.00 | 377.25 | 48.53 |
Max | 250.00 | 900.00 | 750.00 | 500.00 | 63.20 |
No | Parameter | Feature | Characteristics |
---|---|---|---|
1 | X5 | Cluster | Cluster number |
2 | X6 | Cluster_mean (Cluster_q50) | Average target value in the cluster |
3 | X7 | Cluster_std | Standard deviation of target in cluster |
4 | X8 | Cluster_q95 | 95th percentile of target values in the cluster |
5 | X9 | Cluster_q75 | 75th percentile of target values in the cluster |
6 | X10 | Cluster_q25 | 25th percentile of target values in the cluster |
7 | X11 | Cluster_q5 | 5th percentile of target values in the cluster |
8 | X12 | Cluster_median | Median of target values in a cluster |
9 | X13 | Cluster_max | Maximum target value in the cluster |
10 | X14 | Cluster_min | Minimum target value in the cluster |
11 | X15 | Cluster_neighbours | Average of the nearest neighbors to our point in 4th space |
Method | Number of Selected Features | Features |
---|---|---|
Ridge Regression | 8 | Number of freeze–thaw cycles Cluster Cluster_mean Cluster_std Cluster_q75 Cluster_q25 Cluster_max Cluster_neighbours |
No | Parameter | Definition | Original Dataset | Feature-Engineered Dataset |
---|---|---|---|---|
1 | λ | The Power of Regularization | 0.042505 | 0.072677 |
Method | Number of Selected Features | Features |
---|---|---|
Decision tree | 10 | Number of freeze–thaw cycles Cluster_mean Cluster_std Cluster_q75 Cluster_q25 Cluster_q5 Cluster_q95 Cluster_q50 Cluster_max Cluster_min |
No | Parameter | Definition | Original Dataset | Feature-Engineered Dataset |
---|---|---|---|---|
1 | Criterion | Criterion that was used to construct each branch | friedman mse | friedman mse |
2 | Max depth | Max depth of one tree | 684 | 255 |
3 | Min samples split | “Minimum number of objects in a sheet to split it” | 7 | 2 |
4 | Min samples leaf | “Minimum number of objects in a sheet for it to exist” | 2 | 4 |
N | Parameter | Definition | Original Dataset | Feature-Engineered Dataset |
---|---|---|---|---|
1 | lambda | L2 regularization | 0.425207503 | 0.0675070558 |
2 | alpha | L1 regularization | 0.005520339 | 0.0053793840 |
3 | Colsample bytree | the proportion of features that will be used to construct each tree | 1 | 0.6 |
4 | subsample | fraction of the training sample that will be used to build each tree | 0.8 | 0.6 |
5 | learning_rate | learning rate | 0.014 | 0.016 |
6 | n estimators | number of trees | 1993 | 841 |
7 | Max depth | maximum tree depth | 11 | 14 |
N | Model | MAE | MSE | RMSE | MAPE, % | R2 |
---|---|---|---|---|---|---|
1 | RD/Original dataset | 3.035809 | 15.601231 | 3.949839 | 7.23 | 0.71 |
2 | RD/Feature-engineered dataset | 1.364647 | 7.061922 | 2.657428 | 3.23 | 0.89 |
3 | DT/Original dataset | 1.290714 | 6.957745 | 2.637754 | 3.06 | 0.90 |
4 | DT/Feature-engineered dataset | 1.252009 | 6.404198 | 2.530652 | 2.95 | 0.90 |
5 | XGB/Original dataset | 1.181808 | 5.413174 | 2.326623 | 2.82 | 0.92 |
6 | XGB/Feature-engineered dataset | 1.134627 | 4.801390 | 2.191208 | 2.72 | 0.93 |
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Beskopylny, A.N.; Stel’makh, S.A.; Shcherban’, E.M.; Razveeva, I.; Kozhakin, A.; Pembek, A.; Kondratieva, T.N.; Elshaeva, D.; Chernil’nik, A.; Beskopylny, N. Prediction of the Properties of Vibro-Centrifuged Variatropic Concrete in Aggressive Environments Using Machine Learning Methods. Buildings 2024, 14, 1198. https://doi.org/10.3390/buildings14051198
Beskopylny AN, Stel’makh SA, Shcherban’ EM, Razveeva I, Kozhakin A, Pembek A, Kondratieva TN, Elshaeva D, Chernil’nik A, Beskopylny N. Prediction of the Properties of Vibro-Centrifuged Variatropic Concrete in Aggressive Environments Using Machine Learning Methods. Buildings. 2024; 14(5):1198. https://doi.org/10.3390/buildings14051198
Chicago/Turabian StyleBeskopylny, Alexey N., Sergey A. Stel’makh, Evgenii M. Shcherban’, Irina Razveeva, Alexey Kozhakin, Anton Pembek, Tatiana N. Kondratieva, Diana Elshaeva, Andrei Chernil’nik, and Nikita Beskopylny. 2024. "Prediction of the Properties of Vibro-Centrifuged Variatropic Concrete in Aggressive Environments Using Machine Learning Methods" Buildings 14, no. 5: 1198. https://doi.org/10.3390/buildings14051198
APA StyleBeskopylny, A. N., Stel’makh, S. A., Shcherban’, E. M., Razveeva, I., Kozhakin, A., Pembek, A., Kondratieva, T. N., Elshaeva, D., Chernil’nik, A., & Beskopylny, N. (2024). Prediction of the Properties of Vibro-Centrifuged Variatropic Concrete in Aggressive Environments Using Machine Learning Methods. Buildings, 14(5), 1198. https://doi.org/10.3390/buildings14051198