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Erschienen in: Innovative Infrastructure Solutions 3/2024

01.03.2024 | Technical Paper

Advanced modeling for predicting compressive strength in fly ash-modified recycled aggregate concrete: XGboost, MEP, MARS, and ANN approaches

verfasst von: Brwa Omer, Dilshad Kakasor Ismael Jaf, Aso Abdalla, Ahmed Salih Mohammed, Payam Ismael Abdulrahman, Rawaz Kurda

Erschienen in: Innovative Infrastructure Solutions | Ausgabe 3/2024

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Abstract

In recent years, there has been a global trend toward producing environmentally friendly construction materials. concrete, one of the most widely used construction materials worldwide, has received substantial attention from researchers in the pursuit of eco-friendliness. This is because approximately three-quarters of concrete is composed of natural aggregates, which harm the local environment during their extraction. This study employed soft computing models to predict the compressive strength of fly ash-modified concrete produced with recycled aggregate concrete (RCA) to replace natural fine and/or coarse aggregate. For that purpose, a database containing 295 data points was assembled from the literature and utilized to develop models for predicting CS of various RCA mixture mix proportions. The database included diverse concrete mixtures with varying input parameters: cement content (225–560 kg/m3), water-to-binder ratio (0.29–0.66), natural coarse aggregate (0–1237 kg/m3), natural fine aggregate (0–1050 kg/m3), recycled coarse aggregate (0–1215 kg/m3), recycled fine aggregate (0–1050 kg/m3), fly ash (0–225.5 kg/m3), superplasticizer (0–7.3 kg/m3), and curing times (1–90 days). In the modeling process, machine learning approaches were used, specifically the Multi Expression Programming, Artificial Neural Network, Multi Adaptive Regression Spline , and Extreme Gradient Boosting models. Cross-validation was used to determine tuning the required training parameters. The generated models were assessed using statistical evaluation tools, including the correlation coefficient (R), Root Mean Squared Error (RMSE), Mean Absolute Error, and Scatter Index (SI). Based on the evaluation of the developed models, the XGboost model outperformed other models using fivefold cross-validation, demonstrating high R and low RMSE and SI. SHAP values were then utilized to identify the most influential parameters in predicting the compressive strength of RA concrete, with curing time ranking as the most important, followed by water-to-binder ratio and cement content.

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Literatur
1.
Zurück zum Zitat Buck AD (1976) Recycled concrete as a source of aggregate Buck AD (1976) Recycled concrete as a source of aggregate
2.
Zurück zum Zitat Hansen TC, Narud H (1983) Strength of recycled concrete made from crushed concrete coarse aggregate. Concr Int 5(1):79–83 Hansen TC, Narud H (1983) Strength of recycled concrete made from crushed concrete coarse aggregate. Concr Int 5(1):79–83
3.
Zurück zum Zitat He H, Guo Z, Stroeven P, Stroeven M, Sluys LJ (2009) Characterization of the packing of aggregate in concrete by a discrete element approach. Mater Charact 60(10):1082–1087 He H, Guo Z, Stroeven P, Stroeven M, Sluys LJ (2009) Characterization of the packing of aggregate in concrete by a discrete element approach. Mater Charact 60(10):1082–1087
4.
Zurück zum Zitat Drew LJ, Langer WH, Sachs JS (2002) Environmentalism and natural aggregate mining. Nat Resour Res 11:19–28 Drew LJ, Langer WH, Sachs JS (2002) Environmentalism and natural aggregate mining. Nat Resour Res 11:19–28
5.
Zurück zum Zitat Garg C, Jain A (2014) Green concrete: efficient and eco-friendly construction materials. Int J Res Eng Technol 2(2):259–264 Garg C, Jain A (2014) Green concrete: efficient and eco-friendly construction materials. Int J Res Eng Technol 2(2):259–264
6.
Zurück zum Zitat Thiruvenkitam M, Pandian S, Santra M, Subramanian D (2020) Use of waste foundry sand as a partial replacement to produce green concrete: Mechanical properties, durability attributes and its economical assessment. Environ Technol Innov 19:101022 Thiruvenkitam M, Pandian S, Santra M, Subramanian D (2020) Use of waste foundry sand as a partial replacement to produce green concrete: Mechanical properties, durability attributes and its economical assessment. Environ Technol Innov 19:101022
7.
Zurück zum Zitat Tam VWY, Gao XF, Tam CM (2005) Microstructural analysis of recycled aggregate concrete produced from two-stage mixing approach. Cem Concr Res 35(6):1195–1203 Tam VWY, Gao XF, Tam CM (2005) Microstructural analysis of recycled aggregate concrete produced from two-stage mixing approach. Cem Concr Res 35(6):1195–1203
8.
Zurück zum Zitat Ismail S, Ramli M (2013) Engineering properties of treated recycled concrete aggregate (RCA) for structural applications. Constr Build Mater 44:464–476 Ismail S, Ramli M (2013) Engineering properties of treated recycled concrete aggregate (RCA) for structural applications. Constr Build Mater 44:464–476
9.
Zurück zum Zitat Xu J, Chang F, Bai J, Liu C (2023) Statistical analysis on the fracture behavior of rubberized steel fiber reinforced recycled aggregate concrete based on acoustic emission. J Market Res 24:8997–9014 Xu J, Chang F, Bai J, Liu C (2023) Statistical analysis on the fracture behavior of rubberized steel fiber reinforced recycled aggregate concrete based on acoustic emission. J Market Res 24:8997–9014
10.
Zurück zum Zitat Florea MVA, Brouwers HJH (2013) Properties of various size fractions of crushed concrete related to process conditions and re-use. Cem Concr Res 52:11–21 Florea MVA, Brouwers HJH (2013) Properties of various size fractions of crushed concrete related to process conditions and re-use. Cem Concr Res 52:11–21
11.
Zurück zum Zitat Leite MB, Figueire do Filho JGL, Lima PRL (2013). Workability study of concretes made with recycled mortar aggregate. Mater Struct 46:1765–1778 Leite MB, Figueire do Filho JGL, Lima PRL (2013). Workability study of concretes made with recycled mortar aggregate. Mater Struct 46:1765–1778
12.
Zurück zum Zitat Rahal K (2007) Mechanical properties of concrete with recycled coarse aggregate. Build Environ 42(1):407–415 Rahal K (2007) Mechanical properties of concrete with recycled coarse aggregate. Build Environ 42(1):407–415
13.
Zurück zum Zitat Yaprak H, AruntaŞ H, Demir I, Demir O, ŞİMŞEk S (2011) Effects of the fine recycled concrete aggregates on the concrete properties. Int J Phys Sci 6(10):121 Yaprak H, AruntaŞ H, Demir I, Demir O, ŞİMŞEk S (2011) Effects of the fine recycled concrete aggregates on the concrete properties. Int J Phys Sci 6(10):121
14.
Zurück zum Zitat Huda SB, Shahria Alam M (2015) Mechanical and freeze-thaw durability properties of recycled aggregate concrete made with recycled coarse aggregate. J Mater Civ Eng 27(10):04015003 Huda SB, Shahria Alam M (2015) Mechanical and freeze-thaw durability properties of recycled aggregate concrete made with recycled coarse aggregate. J Mater Civ Eng 27(10):04015003
15.
Zurück zum Zitat Akhtar, M. N., Jameel, M., Ibrahim, Z., & Bunnori, N. M. (2022). Incorporation of recycled aggregates and silica fume in concrete: an environmental savior-a systematic review. J Mater Res Technol Akhtar, M. N., Jameel, M., Ibrahim, Z., & Bunnori, N. M. (2022). Incorporation of recycled aggregates and silica fume in concrete: an environmental savior-a systematic review. J Mater Res Technol
16.
Zurück zum Zitat Fan C-C, Huang R, Hwang H, Chao S-J (2016) Properties of concrete incorporating fine recycled aggregates from crushed concrete wastes. Constr Build Mater 112:708–715 Fan C-C, Huang R, Hwang H, Chao S-J (2016) Properties of concrete incorporating fine recycled aggregates from crushed concrete wastes. Constr Build Mater 112:708–715
17.
Zurück zum Zitat Liu Y, Ren P, Garcia-Troncoso N, Mo KH, Ling TC (2022) Roles of enhanced ITZ in improving the mechanical properties of concrete prepared with different types of recycled aggregates. J Build Eng 60:105197 Liu Y, Ren P, Garcia-Troncoso N, Mo KH, Ling TC (2022) Roles of enhanced ITZ in improving the mechanical properties of concrete prepared with different types of recycled aggregates. J Build Eng 60:105197
18.
Zurück zum Zitat Abdalla AA, Mohammed AS, Rafiq S, Noaman R, Qadir WS, Ghafor K, Hind ALD, Fairs R (2022) Microstructure, chemical compositions, and soft computing models to evaluate the influence of silicon dioxide and calcium oxide on the compressive strength of cement mortar modified with cement kiln dust. Constr Build Mater 341:127668 Abdalla AA, Mohammed AS, Rafiq S, Noaman R, Qadir WS, Ghafor K, Hind ALD, Fairs R (2022) Microstructure, chemical compositions, and soft computing models to evaluate the influence of silicon dioxide and calcium oxide on the compressive strength of cement mortar modified with cement kiln dust. Constr Build Mater 341:127668
19.
Zurück zum Zitat Armaghani DJ, Asteris PG (2021) A comparative study of ANN and ANFIS models for the prediction of cement-based mortar materials compressive strength. Neural Comput Appl 33(9):4501–4532 Armaghani DJ, Asteris PG (2021) A comparative study of ANN and ANFIS models for the prediction of cement-based mortar materials compressive strength. Neural Comput Appl 33(9):4501–4532
20.
Zurück zum Zitat Naser AH, Badr AH, Henedy SN, Ostrowski KA, Imran H (2022) Application of multivariate adaptive regression splines (MARS) approach in prediction of compressive strength of eco-friendly concrete. Case Stud Construct Mater 17:e01262 Naser AH, Badr AH, Henedy SN, Ostrowski KA, Imran H (2022) Application of multivariate adaptive regression splines (MARS) approach in prediction of compressive strength of eco-friendly concrete. Case Stud Construct Mater 17:e01262
21.
Zurück zum Zitat Jaf DKI, Abdulrahman PI, Mohammed AS, Kurda R, Qaidi SM, Asteris PG (2023) Machine learning techniques and multi-scale models to evaluate the impact of silicon dioxide (SiO2) and calcium oxide (CaO) in fly ash on the compressive strength of green concrete. Constr Build Mater 400:132604 Jaf DKI, Abdulrahman PI, Mohammed AS, Kurda R, Qaidi SM, Asteris PG (2023) Machine learning techniques and multi-scale models to evaluate the impact of silicon dioxide (SiO2) and calcium oxide (CaO) in fly ash on the compressive strength of green concrete. Constr Build Mater 400:132604
22.
Zurück zum Zitat Gholampour A, Mansouri I, Kisi O, Ozbakkaloglu T (2020) Evaluation of mechanical properties of concretes containing coarse recycled concrete aggregates using multivariate adaptive regression splines (MARS), M5 model tree (M5Tree), and least squares support vector regression (LSSVR) models. Neural Comput Appl 32:295–308 Gholampour A, Mansouri I, Kisi O, Ozbakkaloglu T (2020) Evaluation of mechanical properties of concretes containing coarse recycled concrete aggregates using multivariate adaptive regression splines (MARS), M5 model tree (M5Tree), and least squares support vector regression (LSSVR) models. Neural Comput Appl 32:295–308
23.
Zurück zum Zitat Khan MI, Abbas YM (2023) Robust extreme gradient boosting regression model for compressive strength prediction of blast furnace slag and fly ash concrete. Mater Today Commun 35:105793 Khan MI, Abbas YM (2023) Robust extreme gradient boosting regression model for compressive strength prediction of blast furnace slag and fly ash concrete. Mater Today Commun 35:105793
24.
Zurück zum Zitat Alaskar A, Alfalah G, Althoey F, Abuhussain MA, Javed MF, Deifalla AF, Ghamry NA (2023) Comparative study of genetic programming-based algorithms for predicting the compressive strength of concrete at elevated temperature. Case Stud Construct Mater 8 Alaskar A, Alfalah G, Althoey F, Abuhussain MA, Javed MF, Deifalla AF, Ghamry NA (2023) Comparative study of genetic programming-based algorithms for predicting the compressive strength of concrete at elevated temperature. Case Stud Construct Mater 8
25.
Zurück zum Zitat Jaf DKI, Abdulrahman AS, Abdulrahman PI, Mohammed AS, Kurda R, Ahmed HU, Faraj RH (2023) Effitioned soft computing models to evaluate the impact of silicon dioxide (SiO2) to calcium oxide (CaO) ratio in fly ash on the compressive strength of concrete. J Build Eng 74:106820 Jaf DKI, Abdulrahman AS, Abdulrahman PI, Mohammed AS, Kurda R, Ahmed HU, Faraj RH (2023) Effitioned soft computing models to evaluate the impact of silicon dioxide (SiO2) to calcium oxide (CaO) ratio in fly ash on the compressive strength of concrete. J Build Eng 74:106820
26.
Zurück zum Zitat Nossent J, Elsen P, Bauwens W (2011) Sobol’sensitivity analysis of a complex environmental model. Environ Model Softw 26(12):1515–1525 Nossent J, Elsen P, Bauwens W (2011) Sobol’sensitivity analysis of a complex environmental model. Environ Model Softw 26(12):1515–1525
27.
Zurück zum Zitat Iooss B, Prieur C (2019) Shapley effects for sensitivity analysis with correlated inputs: comparisons with Sobol'indices, numerical estimation and applications. Int J Uncertainty Quantification 9(5). Iooss B, Prieur C (2019) Shapley effects for sensitivity analysis with correlated inputs: comparisons with Sobol'indices, numerical estimation and applications. Int J Uncertainty Quantification 9(5).
28.
Zurück zum Zitat Gamboa F, Janon A, Klein T, Lagnoux A, (2014) Sensitivity analysis for multidimensional and functional outputs. Gamboa F, Janon A, Klein T, Lagnoux A, (2014) Sensitivity analysis for multidimensional and functional outputs.
29.
Zurück zum Zitat Piro NS, Salih A, Hamad SM, Kurda R (2021) Comprehensive multiscale techniques to estimate the compressive strength of concrete incorporated with carbon nanotubes at various curing times and mix proportions. J Market Res 15:6506–6527 Piro NS, Salih A, Hamad SM, Kurda R (2021) Comprehensive multiscale techniques to estimate the compressive strength of concrete incorporated with carbon nanotubes at various curing times and mix proportions. J Market Res 15:6506–6527
30.
Zurück zum Zitat Oksuz MK, Buyukozkan K, Bal A, Satoglu SI (2023) A genetic algorithm integrated with the initial solution procedure and parameter tuning for capacitated P-median problem. Neural Comput Appl 35(8):6313–6330 Oksuz MK, Buyukozkan K, Bal A, Satoglu SI (2023) A genetic algorithm integrated with the initial solution procedure and parameter tuning for capacitated P-median problem. Neural Comput Appl 35(8):6313–6330
31.
Zurück zum Zitat Cramer NL, A representation for the adaptive generation of simple sequential programs. Psychology Press. Cramer NL, A representation for the adaptive generation of simple sequential programs. Psychology Press.
32.
Zurück zum Zitat Oltean M, Dumitrescu D (2002) Multi expression programming. J Genetic Program Evol Mach Oltean M, Dumitrescu D (2002) Multi expression programming. J Genetic Program Evol Mach
33.
Zurück zum Zitat Shah MI, Amin MN, Khan K, Niazi MSK, Aslam F, Alyousef R, Javed MF, Mosavi A (2021) Performance evaluation of soft computing for modeling the strength properties of waste substitute green concrete. Sustainability 13(5):2867 Shah MI, Amin MN, Khan K, Niazi MSK, Aslam F, Alyousef R, Javed MF, Mosavi A (2021) Performance evaluation of soft computing for modeling the strength properties of waste substitute green concrete. Sustainability 13(5):2867
36.
Zurück zum Zitat Agatonovic-Kustrin S, Beresford R (2000) Basic concepts of artificial neural network (ANN) modeling and its application in pharmaceutical research. J Pharm Biomed Anal 22(5):717–727PubMed Agatonovic-Kustrin S, Beresford R (2000) Basic concepts of artificial neural network (ANN) modeling and its application in pharmaceutical research. J Pharm Biomed Anal 22(5):717–727PubMed
37.
Zurück zum Zitat Singh P, Bhardwaj S, Dixit S, Shaw RN, Ghosh A, Development of prediction models to determine compressive strength and workability of sustainable concrete with ANN. Springer. Singh P, Bhardwaj S, Dixit S, Shaw RN, Ghosh A, Development of prediction models to determine compressive strength and workability of sustainable concrete with ANN. Springer.
38.
Zurück zum Zitat Abdalla A, Salih Mohammed A (2022) Surrogate models to predict the long-term compressive strength of cement-based mortar modified with fly ash. Arch Comput Methods Eng 29(6):4187–4212 Abdalla A, Salih Mohammed A (2022) Surrogate models to predict the long-term compressive strength of cement-based mortar modified with fly ash. Arch Comput Methods Eng 29(6):4187–4212
39.
Zurück zum Zitat Başyigit C, Akkurt I, Kilincarslan S, Beycioglu A (2010) Prediction of compressive strength of heavyweight concrete by ANN and FL models. Neural Comput Appl 19:507–513 Başyigit C, Akkurt I, Kilincarslan S, Beycioglu A (2010) Prediction of compressive strength of heavyweight concrete by ANN and FL models. Neural Comput Appl 19:507–513
40.
Zurück zum Zitat Kabiru, O.A., Owolabi, T.O., Ssennoga, T., and Olatunji, S.O., (2014). Performance comparison of SVM and ANN in predicting compressive strength of concrete. Kabiru, O.A., Owolabi, T.O., Ssennoga, T., and Olatunji, S.O., (2014). Performance comparison of SVM and ANN in predicting compressive strength of concrete.
41.
Zurück zum Zitat Abdalla A, Mohammed AS (2022) Hybrid MARS-, MEP-, and ANN-based prediction for modeling the compressive strength of cement mortar with various sand size and clay mineral metakaolin content. Arch Civil Mech Eng 22(4):194 Abdalla A, Mohammed AS (2022) Hybrid MARS-, MEP-, and ANN-based prediction for modeling the compressive strength of cement mortar with various sand size and clay mineral metakaolin content. Arch Civil Mech Eng 22(4):194
42.
Zurück zum Zitat Latif SD, Birima AH, Ahmed AN, Hatem DM, Al-Ansari N, Fai CM, El-Shafie A (2022) Development of prediction model for phosphate in reservoir water system based machine learning algorithms. Ain Shams Eng J 13(1):101523 Latif SD, Birima AH, Ahmed AN, Hatem DM, Al-Ansari N, Fai CM, El-Shafie A (2022) Development of prediction model for phosphate in reservoir water system based machine learning algorithms. Ain Shams Eng J 13(1):101523
43.
Zurück zum Zitat Friedman JH (1991) Multivariate adaptive regression splines. Ann Stat 19(1):1–67MathSciNet Friedman JH (1991) Multivariate adaptive regression splines. Ann Stat 19(1):1–67MathSciNet
44.
Zurück zum Zitat Safari MJS (2019) Decision tree (DT), generalized regression neural network (GR) and multivariate adaptive regression splines (MARS) models for sediment transport in sewer pipes. Water Sci Technol 79(6):1113–1122PubMed Safari MJS (2019) Decision tree (DT), generalized regression neural network (GR) and multivariate adaptive regression splines (MARS) models for sediment transport in sewer pipes. Water Sci Technol 79(6):1113–1122PubMed
45.
Zurück zum Zitat Friedman J, Hastie T, Tibshirani R (2000) Additive logistic regression: a statistical view of boosting (with discussion and a rejoinder by the authors). Ann Stat 28(2):337–407 Friedman J, Hastie T, Tibshirani R (2000) Additive logistic regression: a statistical view of boosting (with discussion and a rejoinder by the authors). Ann Stat 28(2):337–407
46.
Zurück zum Zitat Friedman JH (2001) Greedy function approximation: a gradient boosting machine. Ann Stat, pp 1189–1232. Friedman JH (2001) Greedy function approximation: a gradient boosting machine. Ann Stat, pp 1189–1232.
47.
Zurück zum Zitat Cao J, Gao J, Nikafshan Rad H, Mohammed AS, Hasanipanah M, Zhou J (2021) A novel systematic and evolved approach based on XGBoost-firefly algorithm to predict Young’s modulus and unconfined compressive strength of rock. Eng Comput, pp 1–17 Cao J, Gao J, Nikafshan Rad H, Mohammed AS, Hasanipanah M, Zhou J (2021) A novel systematic and evolved approach based on XGBoost-firefly algorithm to predict Young’s modulus and unconfined compressive strength of rock. Eng Comput, pp 1–17
48.
Zurück zum Zitat Duan J, Asteris PG, Nguyen H, Bui X-N, Moayedi H (2021) A novel artificial intelligence technique to predict compressive strength of recycled aggregate concrete using ICA-XGBoost model. Eng Comput 37:3329–3346 Duan J, Asteris PG, Nguyen H, Bui X-N, Moayedi H (2021) A novel artificial intelligence technique to predict compressive strength of recycled aggregate concrete using ICA-XGBoost model. Eng Comput 37:3329–3346
49.
Zurück zum Zitat Piro NS, Mohammed AS, Hamad SM, Kurda R, Qader BS (2023) Multifunctional computational models to predict the long-term compressive strength of concrete incorporated with waste steel slag. Struct Concr 24(2):2093–2112 Piro NS, Mohammed AS, Hamad SM, Kurda R, Qader BS (2023) Multifunctional computational models to predict the long-term compressive strength of concrete incorporated with waste steel slag. Struct Concr 24(2):2093–2112
50.
Zurück zum Zitat Ghafor K (2022) multifunctional models, including an artificial neural network, to predict the compressive strength of self-compacting concrete. Appl Sci 12(16):8161 Ghafor K (2022) multifunctional models, including an artificial neural network, to predict the compressive strength of self-compacting concrete. Appl Sci 12(16):8161
51.
Zurück zum Zitat Mahmood W, Mohammed AS, Sihag P, Asteris PG, Ahmed H (2021) Interpreting the experimental results of compressive strength of hand-mixed cement-grouted sands using various mathematical approaches. Arch Civil Mech Eng 22(1):19 Mahmood W, Mohammed AS, Sihag P, Asteris PG, Ahmed H (2021) Interpreting the experimental results of compressive strength of hand-mixed cement-grouted sands using various mathematical approaches. Arch Civil Mech Eng 22(1):19
52.
Zurück zum Zitat Ali R, Muayad M, Mohammed AS, Asteris PG (2023) Analysis and prediction of the effect of Nanosilica on the compressive strength of concrete with different mix proportions and specimen sizes using various numerical approaches. Struct Concr 24(3):4161–4184 Ali R, Muayad M, Mohammed AS, Asteris PG (2023) Analysis and prediction of the effect of Nanosilica on the compressive strength of concrete with different mix proportions and specimen sizes using various numerical approaches. Struct Concr 24(3):4161–4184
53.
Zurück zum Zitat Sadowski T, Golewski GL (2018) A failure analysis of concrete composites incorporating fly ash during torsional loading. Compos Struct 183:527–535 Sadowski T, Golewski GL (2018) A failure analysis of concrete composites incorporating fly ash during torsional loading. Compos Struct 183:527–535
54.
Zurück zum Zitat Golewski GL (2019) The influence of microcrack width on the mechanical parameters in concrete with the addition of fly ash: Consideration of technological and ecological benefits. Constr Build Mater 197:849–861 Golewski GL (2019) The influence of microcrack width on the mechanical parameters in concrete with the addition of fly ash: Consideration of technological and ecological benefits. Constr Build Mater 197:849–861
55.
Zurück zum Zitat Oner A, Akyuz S, Yildiz R (2005) An experimental study on strength development of concrete containing fly ash and optimum usage of fly ash in concrete. Cem Concr Res 35(6):1165–1171 Oner A, Akyuz S, Yildiz R (2005) An experimental study on strength development of concrete containing fly ash and optimum usage of fly ash in concrete. Cem Concr Res 35(6):1165–1171
56.
Zurück zum Zitat Golewski GL (2019) Estimation of the optimum content of fly ash in concrete composite based on the analysis of fracture toughness tests using various measuring systems. Constr Build Mater 213:142–155 Golewski GL (2019) Estimation of the optimum content of fly ash in concrete composite based on the analysis of fracture toughness tests using various measuring systems. Constr Build Mater 213:142–155
57.
Zurück zum Zitat Chen H, Li X, Wu Y, Zuo L, Lu M, Zhou Y (2022) Compressive strength prediction of high-strength concrete using long short-term memory and machine learning algorithms. Buildings 12(3):302 Chen H, Li X, Wu Y, Zuo L, Lu M, Zhou Y (2022) Compressive strength prediction of high-strength concrete using long short-term memory and machine learning algorithms. Buildings 12(3):302
58.
Zurück zum Zitat Kou SC, Poon CS, Chan D (2007) Influence of fly ash as cement replacement on the properties of recycled aggregate concrete. J Mater Civ Eng 19(9):709–717 Kou SC, Poon CS, Chan D (2007) Influence of fly ash as cement replacement on the properties of recycled aggregate concrete. J Mater Civ Eng 19(9):709–717
59.
Zurück zum Zitat Corinaldesi V (2010) Mechanical and elastic behaviour of concretes made of recycled-concrete coarse aggregates. Constr Build Mater 24(9):1616–1620 Corinaldesi V (2010) Mechanical and elastic behaviour of concretes made of recycled-concrete coarse aggregates. Constr Build Mater 24(9):1616–1620
60.
Zurück zum Zitat Limbachiya MC, Leelawat T, Dhir RK (2000) Use of recycled concrete aggregate in high-strength concrete. Mater Struct 33:574–580 Limbachiya MC, Leelawat T, Dhir RK (2000) Use of recycled concrete aggregate in high-strength concrete. Mater Struct 33:574–580
61.
Zurück zum Zitat Kapoor K, Singh SP, Singh B (2018) Water permeation properties of self compacting concrete made with coarse and fine recycled concrete aggregates. Int J Civil Eng 16:47–56 Kapoor K, Singh SP, Singh B (2018) Water permeation properties of self compacting concrete made with coarse and fine recycled concrete aggregates. Int J Civil Eng 16:47–56
62.
Zurück zum Zitat Etxeberria Larrañaga, M., Experimental study on microstructure and structural behaviour of recycled aggregate concrete. 2004: Universitat Politècnica de Catalunya. Etxeberria Larrañaga, M., Experimental study on microstructure and structural behaviour of recycled aggregate concrete. 2004: Universitat Politècnica de Catalunya.
63.
Zurück zum Zitat Kou S-C, Poon C-S (2013) Long-term mechanical and durability properties of recycled aggregate concrete prepared with the incorporation of fly ash. Cement Concr Compos 37:12–19 Kou S-C, Poon C-S (2013) Long-term mechanical and durability properties of recycled aggregate concrete prepared with the incorporation of fly ash. Cement Concr Compos 37:12–19
64.
Zurück zum Zitat Poon CS, Shui ZH, Lam L (2004) Effect of microstructure of ITZ on compressive strength of concrete prepared with recycled aggregates. Constr Build Mater 18(6):461–468 Poon CS, Shui ZH, Lam L (2004) Effect of microstructure of ITZ on compressive strength of concrete prepared with recycled aggregates. Constr Build Mater 18(6):461–468
65.
Zurück zum Zitat Buyle-Bodin F, Hadjieva-Zaharieva R (2002) Influence of industrially produced recycled aggregates on flow properties of concrete. Mater Struct 35:504–509 Buyle-Bodin F, Hadjieva-Zaharieva R (2002) Influence of industrially produced recycled aggregates on flow properties of concrete. Mater Struct 35:504–509
Metadaten
Titel
Advanced modeling for predicting compressive strength in fly ash-modified recycled aggregate concrete: XGboost, MEP, MARS, and ANN approaches
verfasst von
Brwa Omer
Dilshad Kakasor Ismael Jaf
Aso Abdalla
Ahmed Salih Mohammed
Payam Ismael Abdulrahman
Rawaz Kurda
Publikationsdatum
01.03.2024
Verlag
Springer International Publishing
Erschienen in
Innovative Infrastructure Solutions / Ausgabe 3/2024
Print ISSN: 2364-4176
Elektronische ISSN: 2364-4184
DOI
https://doi.org/10.1007/s41062-024-01365-0

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