Prediction of strain values in reinforcements and concrete of a RC frame using neural networks
Abstract
The level of strain in structural elements is an important indicator for the presence of damage and its intensity. Considering this fact, often structural health monitoring systems employ strain gauges to measure strains in critical elements. However, because of their sensitivity to the magnetic fields, inadequate long-term durability especially in harsh environments, difficulties in installation on existing structures, and maintenance cost, installation of strain gauges is not always possible for all structural components. Therefore, a reliable method that can accurately estimate strain values in critical structural elements is necessary for damage identification. In this study, a full-scale test was conducted on a planar RC frame to investigate the capability of neural networks for predicting the strain values. Two neural networks each of which having a single hidden layer was trained to relate the measured rotations and vertical displacements of the frame to the strain values measured at different locations of the frame. Results of trained neural networks indicated that they accurately estimated the strain values both in reinforcements and concrete. In addition, the trained neural networks were capable of predicting strains for the unseen input data set.
Keywords
Damage detection Neural networks Strain measurement RC frame Concrete structureIntroduction
Sudden collapses of bridges worldwide have increased the attention of researchers to the integrity assessment of in-service structures. While visual inspections and non-destructive tests have been widely employed for the safety assessment of structures, because of their shortcomings, many advanced damage identification methods have been developed in the recent decades (Shahsavari et al. 2017; Janeliukstis et al. 2017). In general, these damage identification methods can be categorized into the time and frequency domain approaches. While time domain approaches make use of structural responses (e.g., displacements and accelerations), frequency domain methods take advantage of the change in modal parameters (e.g., natural frequencies and mode shapes). Because of their proven capabilities in pattern recognition and feature extraction, artificial neural networks (ANNs) have been extensively employed by researchers both in the time domain (Vafaei et al. 2011, 2013) and the frequency domain (Vafaei et al. 2015; Vafaei and Alih 2017) damage identification methods. When ANNs are trained, they are able to produce reasonable outputs for the unseen inputs during their training. So far, different types of input and output parameters have been used for the training of ANNs (de Lautour and Omenzetter 2009; Vafaei et al. 2014). In this study, ANNs have been utilized to estimate the strain values in reinforcements and concrete of a full-scale RC frame. When strain values are measured at critical locations of structures, they can be directly related to the intensity of imposed damages. Therefore, strain value can be considered as an important parameter for structural health monitoring. The conducted research in this study is an effort for reducing the number of installed strain gauges on structures by estimating the value of strains at required locations through ANNs. In addition, this study is a solution for estimating the strain values in locations where installation of strain gauges is not possible or is very difficult and costly.
Experimental test
Test structure
Details of RC frame tested in this study
Test set-up and instrumentation
Experimental test results
Force–displacement and force–rotation relationships. a 1/3-span, b mid-span, c rotation at the left end corner of the beam, d rotation at the right end corner of the beam
Measured strain values on the surface of concrete. a Top left, SC1. b Bottom 1/3-span, SC2. c Bottom, mid-span, SC3
Measured strain values for the longitudinal reinforcements of the beam. a Top left end corner, SR1. b Top right end corner, SR2. c Bottom mid-span, SR3
Estimation of strain values
Neural network design
Architecture of the employed neural network
Performance of trained neural networks considering different neurons for the hidden layer
No. of neurons | 10 | 15 | 20 | 25 | 30 |
---|---|---|---|---|---|
MSE of learning | 0.012 | 0.008 | 0.004 | 0.007 | 0.009 |
MSE of testing | 0.010 | 0.012 | 0.007 | 0.009 | 0.007 |
MSE of validation | 0.023 | 0.019 | 0.009 | 0.012 | 0.0011 |
The Levenberg–Marquardt (LM) backpropagation algorithm was employed for training the neural networks. Moreover, the Gradient descent weight/bias learning function was used. The hyperbolic tangent function was also used as the activation function of both neural networks. To avoid the saturation of neural networks, the input and output data were scaled to [− 1, 1]. Moreover, 70% of data were allocated to the training and 30% were equally assigned to testing and validation. The performance of the neural networks was monitored by validation samples to avoid over-fitting. Testing samples were used to check on the generalization ability of the trained neural networks.
Results of the trained neural networks
Comparison between predictions of the neural network and the targets for strain values obtained for concrete surface. a SC1, b SC2, c SC3
Comparison between predictions of the neural network and the targets for strain values obtained for reinforcements. a SR1, b SR2, c SR3
Comparison between predictions of the neural networks and the targets for unseen data set. a Measured strains on the surface of concrete, b measured strains in reinforcements
Conclusions
In this study, artificial neural networks were used to estimate the value of strains on the surface of concrete and in reinforcements. A full-scale RC frame was constructed and loaded gradually until reaching to its ultimate capacity. The vertical displacements were measured at 1/3-span and mid-span of the beam of the frame. Moreover, the rotations of the end corners of the beam were measured at each loading step. The values of strains were also measured at three different locations for concrete and reinforcements. From experimental tests, totally 110 data sets were obtained. Two supervised feed-forward multi-layer neural networks were designed. The neural networks had one hidden layer with 20 neurons. The input layer of the neural networks had four nodes, while the output layer had three nodes. Vertical displacements and end corner rotations were considered as the input parameters to the neural networks, while the strain values in the selected locations were considered as the output parameters. The neural networks were trained using 100 data set obtained from the experimental tests. Results indicated that the values of strains at all selected locations were accurately estimated by the trained neural networks both for concrete and reinforcements. In addition, the trained neural networks predicted the value of strains accurately for 10 unseen data sets which were not included in their training procedure.
Notes
Acknowledgements
The authors are thankful to the comments from anonymous reviewers. In addition, the financial support from Malaysian Ministry of Higher Education under the Grant No. R.J130000.7822.4F760 is greatly acknowledged.
References
- de Lautour OR, Omenzetter P (2009) Prediction of seismic-induced structural damage using artificial neural networks. Eng Struct 31(2):600–606CrossRefGoogle Scholar
- Janeliukstis R, Rucevskis S, Wesolowski M, Chate A (2017) Experimental structural damage localization in beam structure using spatial continuous wavelet transform and mode shape curvature methods. Measurement 102:253–270CrossRefGoogle Scholar
- Kermanshahi B (1999) Design and application of neural networks (chapter 3). Shokodo, TokyoGoogle Scholar
- Pandey PC, Barai SV (1995) Multilayer perceptron in damage detection of bridge structures. Comput Struct 54(4):597–608CrossRefMATHGoogle Scholar
- Parhi DR, Dash AK (2011) Application of neural network and finite element for condition monitoring of structures. Proc Inst Mech Eng Part C J Mech Eng Sci 225(6):1329–1339CrossRefGoogle Scholar
- Reitermanova Z (2010) Data splitting. In: 19th annual conference of doctoral students WDS’10. Part I—mathematics and computer sciences, vol 10, pp 31–36. Prague, Czech RepublicGoogle Scholar
- Shahsavari V, Chouinard L, Bastien J (2017) Wavelet-based analysis of mode shapes for statistical detection and localization of damage in beams using likelihood ratio test. Eng Struct 132:494–507CrossRefGoogle Scholar
- Vafaei M, Alih SC (2017) Adequacy of first mode shape differences for damage identification of cantilever structures using neural networks. Neural Comput Appl. https://doi.org/10.1007/s00521-017-2846-6 Google Scholar
- Vafaei M, bin Adnan A, Yadollahi M. (2011) Seismic damage detection using pushover analysis. In: Advanced materials research, vol 255, pp 2496–2499. Trans Tech Publications. doi: https://doi.org/10.4028/www.scientific.net/AMR.255-260.2496
- Vafaei M, Adnan AB, Abd. Rahman AB (2013) Real-time seismic damage detection of concrete shear walls using artificial neural networks. J Earthq Eng 17(1):137–154CrossRefGoogle Scholar
- Vafaei M, Adnan AB, Abd. Rahman AB (2014) A neuro-wavelet technique for seismic damage identification of cantilever structures. Struct Infrastruct Eng 10(12):1666–1684CrossRefGoogle Scholar
- Vafaei M, Alih SC, Rahman ABA, Adnan AB (2015) A wavelet-based technique for damage quantification via mode shape decomposition. Struct Infrastruct Eng 11(7):869–883CrossRefGoogle Scholar
- Xu B, Wu Z, Chen G, Yokoyama K (2004) Direct identification of structural parameters from dynamic responses with neural networks. Eng Appl Artif Intell 17(8):931–943CrossRefGoogle Scholar
- Yam LH, Yan YJ, Jiang JS (2003) Vibration-based damage detection for composite structures using wavelet transform and neural network identification. Compos Struct 60(4):403–412CrossRefGoogle Scholar
- Zang C, Imregun M (2001) Structural damage detection using artificial neural networks and measured FRF data reduced via principal component projection. J Sound Vib 242(5):813–827CrossRefMATHGoogle Scholar
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