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Metaheuristic optimization of Levenberg–Marquardt-based artificial neural network using particle swarm optimization for prediction of foamed concrete compressive strength

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Abstract

Foamed concrete (FC) shows advantageous applications in civil engineering, such as reduction in dead loads, contribution to energy conservation, or decrease the construction phase labor cost. Compressive Strength is considered the most important factor in terms of FC mechanical properties. In recent years, Artificial Neural Network (ANN) is one of popular and effective machine learning models, which can be used to accurately predict the FCCS. However, ANN’s structure and parameters are normally chosen by experience. In this study, therefore, the objective is to use particle swarm optimization (PSO) metaheuristic optimization (one of the effective soft computing techniques) to optimize the parameters and structure of a Levenberg–Marquardt-based Artificial Neural Network (LMA-ANN) for accurate and quick prediction of the FCCS. A total of 375 data of experiments on FC gathered from the available literature were used to generate the training and testing datasets. Various validation criteria such as mean absolute error, root mean square error, and correlation coefficient (R) were used for the validation of the models. The results showed that the PSO-LMA-ANN algorithm is a highly efficient predictor of the FCCS, achieving the highest value of R up to 0.959 with the optimized [5-7-6-1] structure. An interpretation of the mixture components and the FCCS using Partial Dependence Plots was also performed to understand the effect of each input on the FCCS. The dry density was the most important parameter for the prediction of FCCS, followed by the water/cement ratio, foam volume, sand/cement ratio, and the testing age. The results of the present work might help in accurate and quick prediction of the FCCS and the design optimization process of the FC.

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References

  1. Amran YM, Farzadnia N, Ali AA (2015) Properties and applications of foamed concrete; a review. Constr Build Mater 101:990–1005

    Article  Google Scholar 

  2. Nambiar EKK, Ramamurthy K (2007) Air-void characterisation of foam concrete. Cem Concr Res 37:221–230. https://doi.org/10.1016/j.cemconres.2006.10.009

    Article  Google Scholar 

  3. Ramamurthy K, Kunhanandan Nambiar EK, Indu Siva Ranjani G (2009) A classification of studies on properties of foam concrete. Cement Concr Compos 31:388–396. https://doi.org/10.1016/j.cemconcomp.2009.04.006

    Article  Google Scholar 

  4. Namsone E, Šahmenko G, Korjakins A (2017) Durability Properties of High Performance Foamed Concrete. Proc Eng 172:760–767. https://doi.org/10.1016/j.proeng.2017.02.120

    Article  Google Scholar 

  5. Tikalsky PJ, Pospisil J, MacDonald W (2004) A method for assessment of the freeze–thaw resistance of preformed foam cellular concrete. Cem Concr Res 34:889–893. https://doi.org/10.1016/j.cemconres.2003.11.005

    Article  Google Scholar 

  6. Valore RC Jr (1954) Cellular concretes part 1 composition and methods of preparation. JP 50:773–796. https://doi.org/10.14359/11794

    Article  Google Scholar 

  7. Valore RC Jr (1954) Cellular concretes part 2 physical properties. JP 50:817–836. https://doi.org/10.14359/11795

    Article  Google Scholar 

  8. Kunhanandan NEK, Ramamurthy K (2009) Shrinkage behavior of foam concrete. J Mater Civ Eng 21:631–636. https://doi.org/10.1061/(ASCE)0899-1561(2009)21:11(631)

    Article  Google Scholar 

  9. Jones RM, McCarthy A (2005) Preliminary views on the potential of foamed concrete as a structural material. Mag Concr Res 57:21–31

    Article  Google Scholar 

  10. Nambiar EKK, Ramamurthy K (2006) Models relating mixture composition to the density and strength of foam concrete using response surface methodology. Cement Concr Compos 28:752–760. https://doi.org/10.1016/j.cemconcomp.2006.06.001

    Article  Google Scholar 

  11. Nambiar EKK, Ramamurthy K (2006) Influence of filler type on the properties of foam concrete. Cement Concr Compos 28:475–480. https://doi.org/10.1016/j.cemconcomp.2005.12.001

    Article  Google Scholar 

  12. Tam CT, Lim TY, Sri Ravindrarajah R, Lee SL (1987) Relationship between strength and volumetric composition of moist-cured cellular concrete. Mag Concr Res 39:12–18

    Article  Google Scholar 

  13. McCormick FC (1967) Ratioanl proportioning of preformed foam cellular concrete. JP 64:104–110. https://doi.org/10.14359/7547

    Article  Google Scholar 

  14. Asadzadeh S, Khoshbayan S (2018) Multi-objective optimization of influential factors on production process of foamed concrete using Box-Behnken approach. Constr Build Mater 170:101–110. https://doi.org/10.1016/j.conbuildmat.2018.02.189

    Article  Google Scholar 

  15. Hoff GC (1972) Porosity-strength considerations for cellular concrete. Cem Concr Res 2:91–100. https://doi.org/10.1016/0008-8846(72)90026-9

    Article  Google Scholar 

  16. Kearsley EP, Wainwright PJ (2002) The effect of porosity on the strength of foamed concrete. Cem Concr Res 32:233–239

    Article  Google Scholar 

  17. Nambiar EKK, Ramamurthy K (2007) Models for strength prediction of foam concrete. Mater Struct 41:247. https://doi.org/10.1617/s11527-007-9234-0

    Article  Google Scholar 

  18. Ly H-B, Monteiro E, Le T-T et al (2019) Prediction and sensitivity analysis of bubble dissolution time in 3D selective laser sintering using ensemble decision trees. Materials 12:1544

    Article  Google Scholar 

  19. Ly H-B, Le LM, Phi LV et al (2019) Development of an AI model to measure traffic air pollution from multisensor and weather data. Sensors 19:4941. https://doi.org/10.3390/s19224941

    Article  Google Scholar 

  20. Nguyen H-L, Pham BT, Son LH et al (2019) Adaptive network based fuzzy inference system with meta-heuristic optimizations for international roughness index prediction. Appl Sci 9:4715. https://doi.org/10.3390/app9214715

    Article  Google Scholar 

  21. Nguyen H-L, Le T-H, Pham C-T et al (2019) Development of hybrid artificial intelligence approaches and a support vector machine algorithm for predicting the marshall parameters of stone matrix asphalt. Appl Sci 9:3172. https://doi.org/10.3390/app9153172

    Article  Google Scholar 

  22. Pham BT, Tien Bui D, Prakash I, Dholakia MB (2017) Hybrid integration of multilayer perceptron neural networks and machine learning ensembles for landslide susceptibility assessment at Himalayan area (India) using GIS. CATENA 149:52–63. https://doi.org/10.1016/j.catena.2016.09.007

    Article  Google Scholar 

  23. Pham BT, Son LH, Hoang T-A et al (2018) Prediction of shear strength of soft soil using machine learning methods. CATENA 166:181–191. https://doi.org/10.1016/j.catena.2018.04.004

    Article  Google Scholar 

  24. Jaafari A, Panahi M, Pham BT et al (2019) Meta optimization of an adaptive neuro-fuzzy inference system with grey wolf optimizer and biogeography-based optimization algorithms for spatial prediction of landslide susceptibility. CATENA 175:430–445. https://doi.org/10.1016/j.catena.2018.12.033

    Article  Google Scholar 

  25. Pham BT, Nguyen MD, Dao DV et al (2019) Development of artificial intelligence models for the prediction of compression coefficient of soil: an application of Monte Carlo sensitivity analysis. Sci Total Environ 679:172–184. https://doi.org/10.1016/j.scitotenv.2019.05.061

    Article  Google Scholar 

  26. Ly H-B, Le LM, Duong HT et al (2019) Hybrid artificial intelligence approaches for predicting critical buckling load of structural members under compression considering the influence of initial geometric imperfections. Appl Sci 9:2258. https://doi.org/10.3390/app9112258

    Article  Google Scholar 

  27. Ly H-B, Le T-T, Le LM et al (2019) Development of hybrid machine learning models for predicting the critical buckling load of i-shaped cellular beams. Appl Sci 9:5458. https://doi.org/10.3390/app9245458

    Article  Google Scholar 

  28. Ly H-B, Pham BT, Le LM et al (2020) Estimation of axial load-carrying capacity of concrete-filled steel tubes using surrogate models. Neural Comput Appl 33:1–22

    Google Scholar 

  29. Dao DV, Ly H-B, Trinh SH et al (2019) Artificial intelligence approaches for prediction of compressive strength of geopolymer concrete. Materials (Basel). https://doi.org/10.3390/ma12060983

    Article  Google Scholar 

  30. Ly H-B, Pham BT, Dao DV et al (2019) Improvement of ANFIS model for prediction of compressive strength of manufactured sand concrete. Appl Sci 9:3841. https://doi.org/10.3390/app9183841

    Article  Google Scholar 

  31. Getahun MA, Shitote SM, Abiero Gariy ZC (2018) Artificial neural network based modelling approach for strength prediction of concrete incorporating agricultural and construction wastes. Constr Build Mater 190:517–525. https://doi.org/10.1016/j.conbuildmat.2018.09.097

    Article  Google Scholar 

  32. Sonebi M, Cevik A, Grünewald S, Walraven J (2016) Modelling the fresh properties of self-compacting concrete using support vector machine approach. Constr Build Mater 106:55–64. https://doi.org/10.1016/j.conbuildmat.2015.12.035

    Article  Google Scholar 

  33. Khotbehsara MM, Miyandehi BM, Naseri F et al (2018) Effect of SnO2, ZrO2, and CaCO3 nanoparticles on water transport and durability properties of self-compacting mortar containing fly ash: experimental observations and ANFIS predictions. Constr Build Mater 158:823–834. https://doi.org/10.1016/j.conbuildmat.2017.10.067

    Article  Google Scholar 

  34. Behnood A, Behnood V, Modiri Gharehveran M, Alyamac KE (2017) Prediction of the compressive strength of normal and high-performance concretes using M5P model tree algorithm. Constr Build Mater 142:199–207. https://doi.org/10.1016/j.conbuildmat.2017.03.061

    Article  Google Scholar 

  35. Gholampour A, Gandomi AH, Ozbakkaloglu T (2017) New formulations for mechanical properties of recycled aggregate concrete using gene expression programming. Constr Build Mater 130:122–145. https://doi.org/10.1016/j.conbuildmat.2016.10.114

    Article  Google Scholar 

  36. Ashrafian A, Taheri Amiri MJ, Rezaie-Balf M et al (2018) Prediction of compressive strength and ultrasonic pulse velocity of fiber reinforced concrete incorporating nano silica using heuristic regression methods. Constr Build Mater 190:479–494. https://doi.org/10.1016/j.conbuildmat.2018.09.047

    Article  Google Scholar 

  37. Abd AM, Abd SM (2017) Modelling the strength of lightweight foamed concrete using support vector machine (SVM). Case Stud Constr Mater 6:8–15. https://doi.org/10.1016/j.cscm.2016.11.002

    Article  Google Scholar 

  38. Ashrafian A, Shokri F, Taheri Amiri MJ et al (2020) Compressive strength of foamed cellular lightweight concrete simulation: new development of hybrid artificial intelligence model. Constr Build Mater 230:117048. https://doi.org/10.1016/j.conbuildmat.2019.117048

    Article  Google Scholar 

  39. Nehdi M, Djebbar Y, Khan A (2001) Neural network model for preformed-foam cellular concrete. Mater J 98:402–409

    Google Scholar 

  40. Yaseen ZM, Deo RC, Hilal A et al (2018) Predicting compressive strength of lightweight foamed concrete using extreme learning machine model. Adv Eng Softw 115:112–125. https://doi.org/10.1016/j.advengsoft.2017.09.004

    Article  Google Scholar 

  41. Asteris PG, Roussis PC, Douvika MG (2017) Feed-forward neural network prediction of the mechanical properties of sandcrete materials. Sensors 17:1344. https://doi.org/10.3390/s17061344

    Article  Google Scholar 

  42. Asteris PG, Kolovos KG, Douvika MG, Roinos K (2016) Prediction of self-compacting concrete strength using artificial neural networks. Eur J Environ Civ Eng 20:s102–s122. https://doi.org/10.1080/19648189.2016.1246693

    Article  Google Scholar 

  43. Kearsley EP, Wainwright PJ (2001) The effect of high fly ash content on the compressive strength of foamed concrete. Cem Concr Res 31:105–112

    Article  Google Scholar 

  44. Hilal AA, Thom N, Dawson A (2015) The use of additives to enhance properties of pre-formed foamed concrete. Int J Eng Technol 7:286–293

    Article  Google Scholar 

  45. Kozlowski M, Kadela M, Kukielka A (2015) Fracture energy of foamed concrete based on three-point bending test on notched beams. Proc Eng 108:349–354

    Article  Google Scholar 

  46. Mounanga P, Gbongbon W, Poullain P, Turcry P (2008) Proportioning and characterization of lightweight concrete mixtures made with rigid polyurethane foam wastes. Cement Concr Compos 30:806–814

    Article  Google Scholar 

  47. Richard AO, Ramli M (2013) Experimental production of sustainable lightweight foamed concrete. Curr J Appl Sci Technol 3:994–1005

    Google Scholar 

  48. Yeh I-C (1998) Modeling of strength of high-performance concrete using artificial neural networks. Cem Concr Res 28:1797–1808. https://doi.org/10.1016/S0008-8846(98)00165-3

    Article  Google Scholar 

  49. Topçu İB, Sarıdemir M (2008) Prediction of rubberized concrete properties using artificial neural network and fuzzy logic. Constr Build Mater 22:532–540. https://doi.org/10.1016/j.conbuildmat.2006.11.007

    Article  Google Scholar 

  50. Trtnik G, Kavčič F, Turk G (2009) Prediction of concrete strength using ultrasonic pulse velocity and artificial neural networks. Ultrasonics 49:53–60. https://doi.org/10.1016/j.ultras.2008.05.001

    Article  Google Scholar 

  51. Dias WPS, Pooliyadda SP (2001) Neural networks for predicting properties of concretes with admixtures. Constr Build Mater 15:371–379. https://doi.org/10.1016/S0950-0618(01)00006-X

    Article  Google Scholar 

  52. Pradhan B, Lee S (2010) Landslide susceptibility assessment and factor effect analysis: backpropagation artificial neural networks and their comparison with frequency ratio and bivariate logistic regression modelling. Environ Model Softw 25:747–759. https://doi.org/10.1016/j.envsoft.2009.10.016

    Article  Google Scholar 

  53. Delnavaz M, Ayati B, Ganjidoust H (2010) Prediction of moving bed biofilm reactor (MBBR) performance for the treatment of aniline using artificial neural networks (ANN). J Hazard Mater 179:769–775. https://doi.org/10.1016/j.jhazmat.2010.03.069

    Article  Google Scholar 

  54. Khan MI (2012) Predicting properties of High Performance Concrete containing composite cementitious materials using Artificial Neural Networks. Autom Constr 22:516–524. https://doi.org/10.1016/j.autcon.2011.11.011

    Article  Google Scholar 

  55. Altun F, Kişi Ö, Aydin K (2008) Predicting the compressive strength of steel fiber added lightweight concrete using neural network. Comput Mater Sci 42:259–265. https://doi.org/10.1016/j.commatsci.2007.07.011

    Article  Google Scholar 

  56. Casasent D, Chen X (2003) Radial basis function neural networks for nonlinear Fisher discrimination and Neyman-Pearson classification. Neural Netw 16:529–535. https://doi.org/10.1016/S0893-6080(03)00086-8

    Article  Google Scholar 

  57. Eberhart R, Kennedy J (1995) A new optimizer using particle swarm theory. In: MHS’95. Proceedings of the sixth international symposium on micro machine and human science. IEEE, pp 39–43

  58. Pathak NN, Mahanti GK, Singh SK et al (2009) Synthesis of thinned planar circular array antennas using modified particle swarm optimization. Prog Electromagn Res 12:87–97

    Article  Google Scholar 

  59. He Q, Wang L (2007) An effective co-evolutionary particle swarm optimization for constrained engineering design problems. Eng Appl Artif Intell 20:89–99

    Article  Google Scholar 

  60. Yildiz AR (2012) A new hybrid particle swarm optimization approach for structural design optimization in the automotive industry. Proc Inst Mech EngPart D J Automob Eng 226:1340–1351

    Article  Google Scholar 

  61. Alam MN (2016) Particle swarm optimization: algorithm and its codes in matlab. ResearchGate, pp 1–10

  62. Qi C, Ly H-B, Chen Q et al (2020) Flocculation-dewatering prediction of fine mineral tailings using a hybrid machine learning approach. Chemosphere 244:125450. https://doi.org/10.1016/j.chemosphere.2019.125450

    Article  Google Scholar 

  63. Yong W, Zhou J, Jahed Armaghani D et al (2020) A new hybrid simulated annealing-based genetic programming technique to predict the ultimate bearing capacity of piles. Eng Comput. https://doi.org/10.1007/s00366-019-00932-9

    Article  Google Scholar 

  64. Pham BT, Le LM, Le T-T et al (2020) Development of advanced artificial intelligence models for daily rainfall prediction. Atmos Res 237:104845. https://doi.org/10.1016/j.atmosres.2020.104845

    Article  Google Scholar 

  65. Ly H-B, Le T-T, Vu H-LT et al (2020) Computational hybrid machine learning based prediction of shear capacity for steel fiber reinforced concrete beams. Sustainability 12:2709. https://doi.org/10.3390/su12072709

    Article  Google Scholar 

  66. Pham BT, Nguyen-Thoi T, Ly H-B et al (2020) Extreme learning machine based prediction of soil shear strength: a sensitivity analysis using monte carlo simulations and feature backward elimination. Sustainability 12:2339. https://doi.org/10.3390/su12062339

    Article  Google Scholar 

  67. Nguyen MD, Pham BT, Ho LS et al (2020) Soft-computing techniques for prediction of soils consolidation coefficient. CATENA 195:104802. https://doi.org/10.1016/j.catena.2020.104802

    Article  Google Scholar 

  68. Dao DV, Adeli H, Ly H-B et al (2020) A sensitivity and robustness analysis of GPR and ANN for high-performance concrete compressive strength prediction using a monte carlo simulation. Sustainability 12:830. https://doi.org/10.3390/su12030830

    Article  Google Scholar 

  69. Ly H-B, Nguyen T-A, Pham BT (2021) Estimation of Soil Cohesion Using Machine Learning Method: A Random Forest Approach. In: Advances in civil engineering

  70. Ly H-B, Thai Pham B (2020) Soil unconfined compressive strength prediction using random forest (RF) machine learning model. Open Constr Build Technol J 14(Suppl-2):278–285. https://doi.org/10.2174/1874836802014010278

    Article  Google Scholar 

  71. Le T-T (2020) Practical hybrid machine learning approach for estimation of ultimate load of elliptical concrete-filled steel tubular columns under axial loading. In: Advances in civil engineering 2020

  72. Van den Bergh F, Engelbrecht AP (2004) A cooperative approach to particle swarm optimization. IEEE Trans Evol Comput 8:225–239

    Article  Google Scholar 

  73. Zhang J-R, Zhang J, Lok T-M, Lyu MR (2007) A hybrid particle swarm optimization–back-propagation algorithm for feedforward neural network training. Appl Math Comput 185:1026–1037

    MATH  Google Scholar 

  74. Goldstein A, Kapelner A, Bleich J, Pitkin E (2015) Peeking inside the black box: visualizing statistical learning with plots of individual conditional expectation. J Comput Graph Stat 24:44–65

    Article  MathSciNet  Google Scholar 

  75. Bing C, Zhen W, Ning L (2011) Experimental research on properties of high-strength foamed concrete. J Mater Civ Eng 24:113–118

    Article  Google Scholar 

  76. De Rose L, Morris J (1999) The influence of mix design on the properties of microcellular concrete. Thomas Telford, London

    Google Scholar 

  77. Pan Z, Hiromi F, Wee T (2007) Preparation of high performance foamed concrete from cement, sand and mineral admixtures. J Wuhan Univ Technol-Mater Sci Ed 22:295–298

    Article  Google Scholar 

  78. Hilal AA, Thom NH, Dawson AR (2015) On void structure and strength of foamed concrete made without/with additives. Constr Build Mater 85:157–164

    Article  Google Scholar 

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Appendix 

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See Figs. 17 , 18 and 19.

Fig. 17
figure 17

Results of parametric studies in terms of indicator Slope: a average Slope of training part, b standard deviation slope of training part; c average Slope of testing part, d standard deviation slope of testing part

Fig. 18
figure 18

PDP curves of input variables using the LMA-ANN model

Fig. 19
figure 19

Ratio of reduction in fluctuation using LMA-ANN-PSO compared to ANN. (for instance, for density variable, LMA-ANN-PSO has reduced two times the fluctuation in PDP curve compared to single ANN)

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Ly, HB., Nguyen, M.H. & Pham, B.T. Metaheuristic optimization of Levenberg–Marquardt-based artificial neural network using particle swarm optimization for prediction of foamed concrete compressive strength. Neural Comput & Applic 33, 17331–17351 (2021). https://doi.org/10.1007/s00521-021-06321-y

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