Investigation of the Shear Behavior of Concrete Beams Reinforced with FRP Rebars and Stirrups Using ANN Hybridized with Genetic Algorithm
Abstract
:1. Introduction
2. Overview of Current Shear Design Provisions
3. Methodology
3.1. Experimental Database
3.2. Neural Networks and Genetic Algorithm–Optimized Neural Network
3.3. Parameter Selection and Determination
3.4. ANN and GA-ANN Models
4. Results and Discussion
4.1. Prediction of Shear Capacity
4.2. Coupling Effect of Parameters on Shear Capacity
4.3. Data-Driven Regression Analysis
5. Conclusions
- (1)
- Existing design codes for the shear capacity of FRP-RC beams exhibit limited accuracy resulting from inconsistent expressions of different design parameters and overlooking the coupling effects between the geometrical configuration and mechanical properties of the reinforcements.
- (2)
- Based on neural interpretation diagrams, the most critical design parameters that affect the shear strength of the FRP-RC beams are determined as beam width and depth, shear span-to-depth ratio, concrete compressive strength, longitudinal and shear reinforcement ratio, and elastic modulus of FRP reinforcements, which are in accordance with most of the existing design codes.
- (3)
- The prediction accuracy of ANN and GA-ANN models in relation to the shear capacity of FRP-RC beams has been demonstrated through the comparison with the experimental results in the literature. The results of statistical measurements show that the proposed GA-ANN model outperforms the other equations in existing design codes and studies. The proposed GA-ANN model yields a Mean = 0.99, R2 = 0.91, and RMSE = 22.60 kN, which represents a 52.5% improvement in RMSE and 18.2% improvement in terms of R2 in respect to the CSA S806-12 equation as the best equation among the other design equations.
- (4)
- According to the analysis of test and predictive results, the coupling effects between the geomatical configuration and mechanical properties of constitutive materials in FRP-RC have been observed. The shear strength of FRP-RC is increased linearly with the increase in the FRP stirrup reinforcement ratio when the compressive strength is lower than 45 MPa. With the higher concrete strength, the contribution of FRP stirrups to the shear resistance of FRP-RC beams becomes limited, leading to the overestimation of shear capacity of FRP-RC beams in existing design codes.
- (5)
- Based on the GA-ANN model, a simplified design formula has been proposed, incorporating the coupling effects between the design parameters. The proposed model provides more reasonable predictive accuracy in terms of shear capacity of FRP-RC than that of existing design codes, according to the comparison with the experimental results.
- (6)
- The proposed ANN and GA-ANN models are trained to predict the shear behavior of FRP-RC beams within the range of input variables considered. However, they may not demonstrate accuracy when extrapolating beyond this range. In this respect, more experiments need to be conducted to investigate the influences of design factors that affect shear behavior. Only when a sufficient number of data is considered will the proposed models be able to predict the shear capacity of FRP-RC beams in practical applications.
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Reference | ||
---|---|---|
ACI 440.1R-15 [18] | ||
CSA S806-12 [19] | 1 | |
BISE-99 [20] | ||
JSCE-97 [21] | ||
Ashour and Kara [38] | ||
Tottori and Wakui [39] | ||
Wegian and Abdalla [40] | ||
Nehdi and Chabib [41] | ||
Deitz et al. [42] |
Source | No. | Geometrical Characteristics | Concrete | Longitudinal Reinforcement | Shear Reinforcement | Vexp (kN) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
L (mm) | b (mm) | d (mm) | a/d | fc′ (MPa) | Typel | ρfl (%) | Efl (GPa) | fful (MPa) | Typev | ρfv (%) | Efv (GPa) | ffuv (MPa) | |||
Nagasaka et al. [14] | 22 | 600–1200 | 250 | 253 | 1.19–2.37 | 22.6–39.2 | A | 1.9 | 56 | 1295 | A, C | 0.5–1.48 | 44–112 | 481–903 | 158.9–359 |
Shehata et al. [15] | 2 | 7000 | 135 | 470 | 3.19 | 50 | C | 1.25 | 137 | 2200 | C, G | 0.36, 1.07 | 41–137 | 640–1730 | 304.5–305 |
Tomlinson and Fam [16] | 3 | 2900 | 150 | 245–270 | 4.07–4.5 | 51 | B | 0.39–0.51 | 70 | 1100 | B | 0.17 | 70 | 1100 | 36.4–53.5 |
Jumaa and Yousif [43] | 1 | 1800 | 200 | 234 | 2.60 | 73.4 | B | 2.97 | 58 | 1200 | B | 0.63 | 56 | 1100 | 190.1 |
Razaqpur and Spadea [22] | 6 | 2000 | 150 | 170 | 4.12 | 20–25.4 | G | 0.62–1.54 | 46–115 | 970–2000 | G | 0.29 | 46–115 | 970–2000 | 20.5–39.8 |
Tottori and Wakui [39] | 3 | 1800 | 150–300 | 250–325 | 2.50–3.20 | 31.9–44.9 | A, C | 0.55–3.08 | 58–140 | 900–2100 | A, C | 0.04–0.13 | 53–144 | 500–1000 | 58–160 |
Maruyama and Zhao [44] | 9 | 3000 | 150 | 250 | 3.00 | 30.5–38.3 | C | 0.5–2.11 | 94 | 1308 | C | 0.12–0.24 | 94 | 1308 | 59–119.5 |
Maruyama and Zhao [45] | 4 | 1800–3750 | 150–450 | 250–750 | 2.50 | 29.5–34 | C | 1.04 | 100 | 1100 | G | 0.43–0.86 | 30 | 600 | 109.2–599.3 |
Zhao et al. [46] | 5 | 1800–2000 | 150 | 250 | 2.00–4.00 | 34.3 | C | 1.51–3.03 | 105 | 1124 | C, G | 0.42 | 39 | 1100 | 73.8–126.6 |
Nakamura and Higai [47] | 3 | 1500 | 200 | 250 | 3.00 | 34 | G | 1.61 | 29 | 751 | G | 0.18–0.35 | 31 | 828 | 61.9–100.8 |
Vijay et al. [48] | 3 | 2500 | 150 | 265 | 1.89 | 31–44.8 | G | 0.67–1.43 | 54 | 655 | G | 0.56–0.83 | 142 | 655 | 116–127.8 |
Niewels [49] | 7 | 2660–4500 | 300 | 404–441 | 3.02–3.71 | 29.1–48.3 | G | 3.25–3.98 | 44–63 | 480–1000 | G | 0.11–0.54 | 31–52 | 322–524 | 220–362 |
Ascione et al. [50] | 6 | 2000 | 150 | 170 | 4.12 | 20–25.4 | C, G | 0.62–1.54 | 46–115 | 970–2000 | C, G | 0.28 | 46–115 | 970–2000 | 20.5–39.8 |
Chen et al. [51] | 3 | 2100 | 200 | 310 | 1–1.94 | 30 | C | 0.97 | 175 | 2102.4 | C | 0.17–0.22 | 175 | 2102.4 | 197.7–215.4 |
Alsayed et al. [52] | 5 | 1800 | 200 | 310 | 2.40–3.20 | 35 | G | 1.28–1.37 | 36–43 | 565 | G | 0.21–0.4 | 42 | 565 | 57.8–109 |
Said et al. [53] | 9 | 1800 | 120 | 260 | 2.00 | 19.6–59.2 | G | 1.09–2.2 | 32 | 580 | G | 0.43–0.92 | 32 | 640 | 77–175.5 |
Li [54] | 5 | 1000 | 150 | 215 | 1.16 | 28.3–49.3 | B | 0.96 | 55 | 1100 | B | 0.45–1.34 | 55 | 1100 | 135–184.4 |
Imjai et al. [55] | 5 | 2300 | 150 | 220 | 3.50 | 50 | G | 1.22–1.3 | 45–60 | 700–1000 | G | 0.18–0.48 | 27 | 720 | 36.9–66.9 |
Hou [56] | 1 | 2100 | 200 | 302 | 1.94 | 29.61 | C | 1 | 179 | 2196 | C | 0.17 | 159 | 914.5 | 150 |
Okamoto et al. [57] | 11 | 600–1200 | 250 | 253 | 1.19–2.37 | 28.9–37.7 | A | 1.71 | 61 | 1167 | A, C | 0.51–1.5 | 61–113 | 822–903 | 158.9–359 |
Bentz et al. [58] | 3 | 3050–7100 | 450 | 405–937 | 3.26 | 37.7 | G | 0.51–2.36 | 37 | 397 | G | 0.09 | 41 | 760 | 154–500 |
Duranovic et al. [59] | 2 | 2300 | 150 | 210 | 2.44–3.65 | 40 | G | 1.36 | 45 | 1000 | G | 0.17 | 45 | 1000 | 49.8–67.4 |
Issa et al. [60] | 2 | 3050 | 200 | 265 | 1.50–2.50 | 35.9 | B | 1.17–1.92 | 50 | 1060 | B | 0.65 | 53 | 1070 | 134.7–192.1 |
Mean | / | 2056 | 202 | 279 | 2.59 | 35.26 | / | 1.59 | 66 | 1112.51 | / | 0.57 | 69 | 923 | 158.9 |
Standard deviation | / | 1270.29 | 70.45 | 112.67 | 0.91 | 9.90 | / | 0.72 | 31.62 | 411.04 | / | 0.42 | 38.41 | 374.02 | 102.28 |
Minimum | / | 600 | 120 | 170 | 1 | 19.6 | / | 0.39 | 29 | 397 | / | 0.04 | 27 | 322 | 20.5 |
Maximum | / | 7100 | 450 | 937 | 4.5 | 73.4 | / | 3.98 | 179 | 2200 | / | 1.5 | 175 | 2102 | 599.3 |
Total | 120 | 600–7100 | 120–450 | 170–937 | 1–4.5 | 19.6–73.4 | / | 0.39–3.98 | 29–179 | 397–2200 | / | 0.04–1.5 | 27–175 | 322–2102 | 20.5–599.3 |
Model | Min | Max | Mean | SD (kN) | COV (%) | RMSE (kN) | MAE (kN) | R2 |
---|---|---|---|---|---|---|---|---|
ACI 440.1R-15 [18] | 0.47 | 4.05 | 1.77 | 0.910 | 51.48 | 90.46 | 73.95 | 0.71 |
CSA S806-12 [19] | 0.83 | 2.11 | 1.31 | 0.299 | 22.88 | 47.61 | 31.04 | 0.77 |
BISE-99 [20] | 0.69 | 2.83 | 1.69 | 0.573 | 34.41 | 66.37 | 56.37 | 0.75 |
JSCE-97 [21] | 0.79 | 2.50 | 1.38 | 0.438 | 31.71 | 76.05 | 56.00 | 0.40 |
Ashour and Kara [38] | 0.46 | 3.15 | 1.51 | 0.718 | 47.62 | 88.53 | 68.69 | 0.75 |
Tottori and Wakui [39] | 0.44 | 2.32 | 1.28 | 0.523 | 40.84 | 91.89 | 65.85 | 0.69 |
Wegian and Abdalla [40] | 0.45 | 2.64 | 1.40 | 0.619 | 44.27 | 89.64 | 67.27 | 0.73 |
Nehdi and Chabib [41] | 0.94 | 2.58 | 1.51 | 0.378 | 25.06 | 56.61 | 47.16 | 0.55 |
Deitz et al. [42] | 0.45 | 2.63 | 1.28 | 0.572 | 44.64 | 89.36 | 67.15 | 0.73 |
Single-hidden layer NN | 0.67 | 1.47 | 1.02 | 0.179 | 17.57 | 29.26 | 21.14 | 0.85 |
Double-hidden layer NN | 0.74 | 1.26 | 1.00 | 0.155 | 15.49 | 26.22 | 19.58 | 0.88 |
Genetic algorithm-optimized NN | 0.66 | 1.26 | 0.99 | 0.145 | 14.81 | 22.60 | 16.14 | 0.91 |
Group | (mm) | (mm) | ||||||
---|---|---|---|---|---|---|---|---|
1 | 250 | 250–550 | 1–4 | 30 | 2 | 56 | 0.5 | 112 |
2 | 250 | 250 | 2 | 30–60 | 2 | 56 | 0.4–1 | 46 |
3 | 250 | 250 | 2 | 40 | 0.5–1.5 | 50–120 | 0.5 | 46 |
200–400 | 250–1050 | 1–4 | 30–60 | 0.14–0.98 | 0.2–1 | 40–120 |
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Di, B.; Qin, R.; Zheng, Y.; Lv, J. Investigation of the Shear Behavior of Concrete Beams Reinforced with FRP Rebars and Stirrups Using ANN Hybridized with Genetic Algorithm. Polymers 2023, 15, 2857. https://doi.org/10.3390/polym15132857
Di B, Qin R, Zheng Y, Lv J. Investigation of the Shear Behavior of Concrete Beams Reinforced with FRP Rebars and Stirrups Using ANN Hybridized with Genetic Algorithm. Polymers. 2023; 15(13):2857. https://doi.org/10.3390/polym15132857
Chicago/Turabian StyleDi, Bo, Renyuan Qin, Yu Zheng, and Jiamei Lv. 2023. "Investigation of the Shear Behavior of Concrete Beams Reinforced with FRP Rebars and Stirrups Using ANN Hybridized with Genetic Algorithm" Polymers 15, no. 13: 2857. https://doi.org/10.3390/polym15132857
APA StyleDi, B., Qin, R., Zheng, Y., & Lv, J. (2023). Investigation of the Shear Behavior of Concrete Beams Reinforced with FRP Rebars and Stirrups Using ANN Hybridized with Genetic Algorithm. Polymers, 15(13), 2857. https://doi.org/10.3390/polym15132857