Skip to main content
Top
Published in: Neural Computing and Applications 5/2015

01-07-2015 | Original Article

Prediction model for compressive strength of basic concrete mixture using artificial neural networks

Authors: Srđan Kostić, Dejan Vasović

Published in: Neural Computing and Applications | Issue 5/2015

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

In the present paper, we propose a prediction model for concrete compressive strength using artificial neural networks. In experimental part of the research, 75 concrete samples with various w/c ratios were exposed to freezing and thawing, after which their compressive strength was determined at different age, viz. 7, 20 and 32 days. In computational phase of the research, different prediction models for concrete compressive strength were developed using artificial neural networks with w/c ratio, age and number of freeze/thaw cycles as three input nodes. We examined three-layer feed-forward back-propagation neural networks with 2, 6 and 9 hidden nodes using four different learning algorithms. The most accurate prediction models, with the highest coefficient of determination (R 2 > 0.87), and with all of the predicted data falling within the 95 % prediction interval, were obtained with six hidden nodes using Levenberg–Marquardt, scaled conjugate gradient and one-step secant algorithms, and with nine hidden nodes using Broyden–Fletcher–Goldfarb–Shannon algorithm. Further analysis showed that relative error between the predicted and experimental data increases up to acceptable ≈15 %, which confirms that proposed ANN models are robust to the consistency of training and validation output data. Accuracy of the proposed models was further verified by low values of standard statistical errors. In the final phase of the research, individual effect of each input parameter was examined using the global sensitivity analysis, whose results indicated that w/c ratio has the strongest impact on concrete compressive strength.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Literature
1.
go back to reference Saul AGA (1951) Principles underlying the steam curing of concrete at atmospheric pressure. Mag Concr Res 2:127–140CrossRef Saul AGA (1951) Principles underlying the steam curing of concrete at atmospheric pressure. Mag Concr Res 2:127–140CrossRef
2.
go back to reference Plowman JM (1956) Maturity and the strength of concrete. Mag Concr Res 22:13–22CrossRef Plowman JM (1956) Maturity and the strength of concrete. Mag Concr Res 22:13–22CrossRef
3.
go back to reference Bernhardt CJ (1956) Hardening of concrete at different temperatures. In: RILEM symposium on winter concreting, Copenhagen, Danish Institute for Building Research, Session B-II Bernhardt CJ (1956) Hardening of concrete at different temperatures. In: RILEM symposium on winter concreting, Copenhagen, Danish Institute for Building Research, Session B-II
4.
go back to reference Yi S-T, Moon Y-H, Kim J-K (2005) Long-term strength prediction of concrete with curing temperature. Cem Concr Res 35:1961–1969CrossRef Yi S-T, Moon Y-H, Kim J-K (2005) Long-term strength prediction of concrete with curing temperature. Cem Concr Res 35:1961–1969CrossRef
5.
go back to reference Popovics S, Ujhelyi J (2008) Contribution to the concrete strength versus water-cement ratio relationship. J Mater Civ Eng 20:459–463CrossRef Popovics S, Ujhelyi J (2008) Contribution to the concrete strength versus water-cement ratio relationship. J Mater Civ Eng 20:459–463CrossRef
6.
go back to reference Sobhani J, Najimi M, Pourkhorshidi AR, Parhizkar T (2010) Prediction of the compressive strength of no-slump concrete: a comparative study of regression, neural network and ANFIS models. Constr Build Mater 24:709–718CrossRef Sobhani J, Najimi M, Pourkhorshidi AR, Parhizkar T (2010) Prediction of the compressive strength of no-slump concrete: a comparative study of regression, neural network and ANFIS models. Constr Build Mater 24:709–718CrossRef
7.
go back to reference Ramezanianpour AA, Sobhani M, Sobhani J (2004) Application of network based neuro-fuzzy system for prediction of the strength of high strength concrete. AMIRKABIR 15:78–93 Ramezanianpour AA, Sobhani M, Sobhani J (2004) Application of network based neuro-fuzzy system for prediction of the strength of high strength concrete. AMIRKABIR 15:78–93
8.
go back to reference Saridemir M (2009) Predicting the compressive strength of mortars containing metakaolin by artificial neural networks and fuzzy logic. Adv Eng Softw 40:920–927MATHCrossRef Saridemir M (2009) Predicting the compressive strength of mortars containing metakaolin by artificial neural networks and fuzzy logic. Adv Eng Softw 40:920–927MATHCrossRef
9.
go back to reference Topcu IB, Saridemir M (2008) Prediction of compressive strength of concrete containing fly ash using artificial neural networks and fuzzy logic. Comput Mater Sci 41:305–311CrossRef Topcu IB, Saridemir M (2008) Prediction of compressive strength of concrete containing fly ash using artificial neural networks and fuzzy logic. Comput Mater Sci 41:305–311CrossRef
10.
go back to reference Singh R, Vishal V, Singh TN, Ranjith PG (2012) A comparative study of generalized regression neural network approach and adaptive neuro-fuzzy inference systems for prediction of unconfined compressive strength of rocks. Neural Comp Appl 23:499–506CrossRef Singh R, Vishal V, Singh TN, Ranjith PG (2012) A comparative study of generalized regression neural network approach and adaptive neuro-fuzzy inference systems for prediction of unconfined compressive strength of rocks. Neural Comp Appl 23:499–506CrossRef
11.
go back to reference Singh R, Vishal V, Singh TN (2012) Soft computing method for assessment of compressional wave velocity. Sci Iran 19:1018–1024CrossRef Singh R, Vishal V, Singh TN (2012) Soft computing method for assessment of compressional wave velocity. Sci Iran 19:1018–1024CrossRef
12.
go back to reference Basyigit C, Akkurt I, Kilincarslan S, Beycioglu A (2010) Prediction of compressive strength of heavyweight concrete by ANN and FL models. Neural Comp Appl 19:507–513CrossRef Basyigit C, Akkurt I, Kilincarslan S, Beycioglu A (2010) Prediction of compressive strength of heavyweight concrete by ANN and FL models. Neural Comp Appl 19:507–513CrossRef
13.
go back to reference Basma AA, Barakat S, Oraimi SA (1999) Prediction of cement degree of hydration using artificial neural networks. Mater J 96:166–172 Basma AA, Barakat S, Oraimi SA (1999) Prediction of cement degree of hydration using artificial neural networks. Mater J 96:166–172
14.
go back to reference Jepsen MT (2002) Predicting concrete durability by using artificial neural network. Special NCR-publication; ID 5268 Jepsen MT (2002) Predicting concrete durability by using artificial neural network. Special NCR-publication; ID 5268
15.
go back to reference Graham LD, Forbes DR, Smith SD (2006) Modeling the ready mixed concrete delivery system with neural network. Autom Constr 15:656–663CrossRef Graham LD, Forbes DR, Smith SD (2006) Modeling the ready mixed concrete delivery system with neural network. Autom Constr 15:656–663CrossRef
16.
go back to reference Lai S, Serra M (1997) Concrete strength prediction by means of neural network. Constr Build Mater 11:93–98CrossRef Lai S, Serra M (1997) Concrete strength prediction by means of neural network. Constr Build Mater 11:93–98CrossRef
17.
go back to reference Yeh I (1998) Modeling of strength of high-performance concrete using artificial neural networks. Cem Concr Res 28:1797–1808CrossRef Yeh I (1998) Modeling of strength of high-performance concrete using artificial neural networks. Cem Concr Res 28:1797–1808CrossRef
18.
go back to reference Oh J-W, Lee I-W, Kim J-T, Lee G-W (1999) Application of neural networks for proportioning of concrete. Mater J 96:352–356 Oh J-W, Lee I-W, Kim J-T, Lee G-W (1999) Application of neural networks for proportioning of concrete. Mater J 96:352–356
19.
go back to reference Dias W, Pooliyadda S (2001) Neural network for predicting properties of concretes with admixtures. Constr Build Mater 15:371–379CrossRef Dias W, Pooliyadda S (2001) Neural network for predicting properties of concretes with admixtures. Constr Build Mater 15:371–379CrossRef
20.
go back to reference Lee S-C (2003) Prediction of concrete strength using artificial neural networks. Eng Struct 25:849–857CrossRef Lee S-C (2003) Prediction of concrete strength using artificial neural networks. Eng Struct 25:849–857CrossRef
21.
go back to reference Kim JI, Kim DK, Feng MQ, Yazdani F (2004) Application of neural networks for estimation of concrete strength. J Mater Civ Eng 16:257–264CrossRef Kim JI, Kim DK, Feng MQ, Yazdani F (2004) Application of neural networks for estimation of concrete strength. J Mater Civ Eng 16:257–264CrossRef
22.
go back to reference Gupta R, Kewalramani MA, Goel A (2006) Prediction of concrete strength using neural-expert system. ASCE J Mater Civ Eng 18:462–466CrossRef Gupta R, Kewalramani MA, Goel A (2006) Prediction of concrete strength using neural-expert system. ASCE J Mater Civ Eng 18:462–466CrossRef
23.
go back to reference Oztas A, Pala M, Ozbay E, Kanca E, Caglar N, Bhatti MA (2006) Predicting the compressive strength and slump of high strength concrete using neural network. Constr Build Mater 20:769–775CrossRef Oztas A, Pala M, Ozbay E, Kanca E, Caglar N, Bhatti MA (2006) Predicting the compressive strength and slump of high strength concrete using neural network. Constr Build Mater 20:769–775CrossRef
24.
go back to reference Bai J, Wild S, Ware JA, Sabir BB (2003) Using neural networks to predict workability of concrete. Adv Eng Softw 34:663–669CrossRef Bai J, Wild S, Ware JA, Sabir BB (2003) Using neural networks to predict workability of concrete. Adv Eng Softw 34:663–669CrossRef
25.
go back to reference Mukherjee A, Biswas SN (1997) Artificial neural networks in prediction of mechanical behavior of concrete at high temperature. Nucl Eng Des 178:1–11CrossRef Mukherjee A, Biswas SN (1997) Artificial neural networks in prediction of mechanical behavior of concrete at high temperature. Nucl Eng Des 178:1–11CrossRef
26.
go back to reference Pala M, Ozbay E, Oztas A, Yuce MI (2007) Appraisal of long-term effects of fly ash and silica fume on compressive strength of concrete by neural networks. Constr Build Mater 21:384–394CrossRef Pala M, Ozbay E, Oztas A, Yuce MI (2007) Appraisal of long-term effects of fly ash and silica fume on compressive strength of concrete by neural networks. Constr Build Mater 21:384–394CrossRef
27.
go back to reference SRPS ISO 2736-1:1997. Concrete tests—test specimens—part 1: sampling of fresh concrete SRPS ISO 2736-1:1997. Concrete tests—test specimens—part 1: sampling of fresh concrete
28.
go back to reference SRPS ISO 2736-2:1997. Concrete tests—test specimens—part 2: making and curing of test specimens for strength tests SRPS ISO 2736-2:1997. Concrete tests—test specimens—part 2: making and curing of test specimens for strength tests
29.
go back to reference SRPS ISO 4109:1997. Fresh concrete—determination of the consistency—slump test SRPS ISO 4109:1997. Fresh concrete—determination of the consistency—slump test
30.
go back to reference SRPS ISO 4110:1997. Fresh concrete—determination of the consistency—Vebe test SRPS ISO 4110:1997. Fresh concrete—determination of the consistency—Vebe test
31.
go back to reference SRPS U.M8.052:1996. Fresh concrete—determination of the consistency—flow test SRPS U.M8.052:1996. Fresh concrete—determination of the consistency—flow test
32.
go back to reference SRPS CEN/TR 15177:2009. Testing the freeze–thaw resistance of concrete—internal structural damage SRPS CEN/TR 15177:2009. Testing the freeze–thaw resistance of concrete—internal structural damage
33.
go back to reference Neville A (2002) Properties of concrete, 4th edn. Wiley, New York Neville A (2002) Properties of concrete, 4th edn. Wiley, New York
34.
go back to reference SRPS EN 12390-3:2010. Testing hardened concrete—part 3: compressive strength of test specimens SRPS EN 12390-3:2010. Testing hardened concrete—part 3: compressive strength of test specimens
35.
go back to reference Yaprak H, Karaci A, Demir I (2013) Prediction of the effect of varying cure conditions and w/c ratio on the compressive strength of concrete using artificial neural networks. Neural Comp Appl 22:133–141CrossRef Yaprak H, Karaci A, Demir I (2013) Prediction of the effect of varying cure conditions and w/c ratio on the compressive strength of concrete using artificial neural networks. Neural Comp Appl 22:133–141CrossRef
36.
go back to reference Sarkar K, Tiwary A, Singh TN (2010) Estimation of strength parameters of rock using artificial neural networks. Bull Eng Geol Environ 69:599–606CrossRef Sarkar K, Tiwary A, Singh TN (2010) Estimation of strength parameters of rock using artificial neural networks. Bull Eng Geol Environ 69:599–606CrossRef
37.
go back to reference Monjezi M, Singh TN, Khandelwal M, Sinha S, Singh V, Hosseini I (2006) Prediction and analysis of blast parameters using artificial neural network. Noise Vib Control Worldw 37:8–16CrossRef Monjezi M, Singh TN, Khandelwal M, Sinha S, Singh V, Hosseini I (2006) Prediction and analysis of blast parameters using artificial neural network. Noise Vib Control Worldw 37:8–16CrossRef
38.
go back to reference Rumelhart DE, Hinton GE, Williams RJ (1986) Learning internal representation by error propagation. In: Rumelhart DE, McCleland JL (eds) Parallel distribution processing: explorations in the microstructure of cognition, vol 1. MIT Press, Cambridge, pp 318–362 Rumelhart DE, Hinton GE, Williams RJ (1986) Learning internal representation by error propagation. In: Rumelhart DE, McCleland JL (eds) Parallel distribution processing: explorations in the microstructure of cognition, vol 1. MIT Press, Cambridge, pp 318–362
39.
go back to reference Lippmann RP (1987) An introduction to computing with neural nets. IEEE ASSP Mag 4:4–22CrossRef Lippmann RP (1987) An introduction to computing with neural nets. IEEE ASSP Mag 4:4–22CrossRef
40.
go back to reference Sonmez H, Gokceoglu C, Nefeslioglu HA, Kayabasi A (2006) Estimation of rock modulus: for intact rocks with an artificial neural network and for rock masses with a new empirical equation. Int J Rock Mech Min 43:224–235CrossRef Sonmez H, Gokceoglu C, Nefeslioglu HA, Kayabasi A (2006) Estimation of rock modulus: for intact rocks with an artificial neural network and for rock masses with a new empirical equation. Int J Rock Mech Min 43:224–235CrossRef
41.
go back to reference Looney CG (1996) Advances in feed-forward neural networks: demystifying knowledge acquiring black boxes. IEEE Trans Knowl Data Eng 8:211–226CrossRef Looney CG (1996) Advances in feed-forward neural networks: demystifying knowledge acquiring black boxes. IEEE Trans Knowl Data Eng 8:211–226CrossRef
42.
go back to reference Nelson M, Illingworth WT (1990) A practical guide to neural nets. Addison-Wesley, Reading Nelson M, Illingworth WT (1990) A practical guide to neural nets. Addison-Wesley, Reading
44.
go back to reference Khandelwal M, Singh TN (2010) Prediction of macerals contents of Indian coals from proximate and ultimate analyses using artificial neural networks. Fuel 89:1101–1109CrossRef Khandelwal M, Singh TN (2010) Prediction of macerals contents of Indian coals from proximate and ultimate analyses using artificial neural networks. Fuel 89:1101–1109CrossRef
45.
go back to reference Singh TN, Kanchan R, Verma AK, Saigal K (2005) A comparative study of ANN and Neuro-fuzzy for the prediction of dynamic constant of rockmass. J Earth Syst Sci 114:75–86CrossRef Singh TN, Kanchan R, Verma AK, Saigal K (2005) A comparative study of ANN and Neuro-fuzzy for the prediction of dynamic constant of rockmass. J Earth Syst Sci 114:75–86CrossRef
46.
47.
go back to reference Moller MF (1993) A scaled conjugate gradient algorithm for fast supervised learning. Neural Netw 6:525–533CrossRef Moller MF (1993) A scaled conjugate gradient algorithm for fast supervised learning. Neural Netw 6:525–533CrossRef
48.
go back to reference Dennis JE, Schnabel RB (1987) Numerical methods for unconstrained optimization and nonlinear equations. Society for industrial and applied mathematics Dennis JE, Schnabel RB (1987) Numerical methods for unconstrained optimization and nonlinear equations. Society for industrial and applied mathematics
49.
go back to reference Battiti R (1992) First- and second-order methods for learning: between steepest descent and Newton’s method. Neural Comput 4:141–166CrossRef Battiti R (1992) First- and second-order methods for learning: between steepest descent and Newton’s method. Neural Comput 4:141–166CrossRef
50.
go back to reference Monjezi M, Hasanipanah M, Khandelwal M (2013) Evaluation and prediction of blast-induced ground vibration at Shur River Dam, Iran, by artificial neural network. Neural Comput Appl 22:1637–1643CrossRef Monjezi M, Hasanipanah M, Khandelwal M (2013) Evaluation and prediction of blast-induced ground vibration at Shur River Dam, Iran, by artificial neural network. Neural Comput Appl 22:1637–1643CrossRef
51.
go back to reference Khandelwal M, Singh TN (2009) Prediction of blast-induced ground vibration using artificial neural network. Int J Rock Mech Min 46:1214–1222CrossRef Khandelwal M, Singh TN (2009) Prediction of blast-induced ground vibration using artificial neural network. Int J Rock Mech Min 46:1214–1222CrossRef
52.
go back to reference Yang Y, Zang O (1997) A hierarchical analysis for rock engineering using artificial neural networks. Rock Mech Rock Eng 30:207–222CrossRef Yang Y, Zang O (1997) A hierarchical analysis for rock engineering using artificial neural networks. Rock Mech Rock Eng 30:207–222CrossRef
Metadata
Title
Prediction model for compressive strength of basic concrete mixture using artificial neural networks
Authors
Srđan Kostić
Dejan Vasović
Publication date
01-07-2015
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 5/2015
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-014-1763-1

Other articles of this Issue 5/2015

Neural Computing and Applications 5/2015 Go to the issue

Premium Partner