iBet uBet web content aggregator. Adding the entire web to your favor.
iBet uBet web content aggregator. Adding the entire web to your favor.



Link to original content: https://doi.org/10.3390/s18093033
Damage Identification for Underground Structure Based on Frequency Response Function
Next Article in Journal
Fringing Electric Field Sensors for Anti-Attack at System-Level Protection
Previous Article in Journal
Quadrant-Based Minimum Bounding Rectangle-Tree Indexing Method for Similarity Queries over Big Spatial Data in HBase
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Damage Identification for Underground Structure Based on Frequency Response Function

School of Civil Engineering & Mechanics, Huazhong University of Science and Technology, Wuhan 430074, China
*
Authors to whom correspondence should be addressed.
Sensors 2018, 18(9), 3033; https://doi.org/10.3390/s18093033
Submission received: 19 August 2018 / Revised: 6 September 2018 / Accepted: 7 September 2018 / Published: 10 September 2018
(This article belongs to the Section Physical Sensors)

Abstract

:
Damage identification that is based on modal analysis is widely used in traditional structural damage identification. However, modal analysis is difficult in high damping structures and modal concentrated structures. Unlike approaches based on modal analysis, damage identification based on the frequency response function allows for the avoidance of error and easy verification through other test points. An updating algorithm is devised is this study by utilizing the frequency response function together with the dynamic reduction with respect to the selected design parameters. Numerical results indicate that the method can be used to define multiple parameters with large variation and incomplete measurement data and is robust against measurement noise. With the purpose of avoiding the occurrence of resonance and gaining additional information, the trial and error method has been used to choose a proper frequency. Furthermore, an experimental scale model in a soil box is subjected to the excitation of moving load to validate the effectiveness of the damage identification approach. The improved damage identification method for underground structures, which is based on the analysis of the frequency response function, can be adopted as an efficient and functional damage identification tool.

1. Introduction

Structural damage is caused by changes in the material or geometric properties of systems and it is a general problem in the structural design phase and during the operation of structures, especially large and complex civil urban underground infrastructures. Traditionally, the complexity of the underground environment and the degradation failure of materials are the main causes of damage, which affects the service performance of underground structures [1,2,3,4,5].
In previous research, numerous approaches have been developed for identifying damages in structures [6,7,8]. These approaches can be broadly classified into global and local techniques [9,10,11,12]. Dynamic and static measures can be used for damage identification [13,14,15], and damage identification based on modal analysis is the most widely adopted method [16,17,18]. Palaez and Krawczuk [19] proposed a promising damage identification approach that is based on structural vibration. Juan and Hojjat [20] proposed an approach that is based on vibration and enables real-time monitoring. Qu and Chen [21] derived a seismic damage diagnosis method for frame structures while using an artificial neural network (ANN). Yang and Liu [22] proposed a structural damage identification approach with flexibility. Several methods have been proposed due to differences in parameters. The equilateral triangle resonator (ETR) index, which was proposed by Zong and Huang [23], is the most commonly adopted method. Meanwhile, Cha [24] and Moradipour et al. [25] utilized modal strain energy sensitivity for damage identification in civil structures. TaeKim et al. [26] and Feng et al. [27,28] proposed damage detection applications utilizing mode shapes, and some progress has been made. Sensitivity approaches generate the objective function for the first-order Taylor expansion. This approach was used by Yi [29] to analyze the relationship between vibration characteristics and stiffness reduction. Damage identification that is based on statistical information has been proposed [30,31,32,33]. Compared with modal parameters based method, the FRF (Frequency Response Function) based method [34] proposed by some researchers [35,36] has received more attention and applications [37,38,39,40] in recent years due to its advantage, as follows: At first, the measured FRF data can be utilized directly without transformation. In some software, the calculation of modal parameters is based on the measured FRF data. What is more, the modal analysis is more complex, and the error might arise from the modal identification. The identification error might greater than the modelling error. Secondly, the FRF can be measured in more locations of the structure and taken as an objective so it can provide more data. Tranxuan [41] detected the structural damage using measured frequency response function data. Crema and Mastroddi [42] proposed a general procedure based directly on the measured frequency response function data, which can update numerical spatial model or directly to identify and quantify possible damage and failure of the structure. Zou [43] presented an approach for structural damage identification that is based on frequency response function and genetic algorithm (GA). Khoshnoudian and Esfandiari [44] developed a global algorithm for damage assessment of structures based on a parameter estimation method whole using the finite element and measured the modal response of the structure. Yang and Song [45] verified a method of truss damage identification is proposed based on the principal component analysis and frequency response functions. What is more, damage identification based on the frequency response function allows the avoidance of error and easy verification through other test points [46,47]. This technique is commonly used in light structures, mini-type structures, and bridges and is rarely adopted for long-lining underground structures.
This study devised an algorithm that utilizes the frequency response function together with the dynamic reduction with respect to the selected design parameters (Section 2). Section 3 presents an experiment on a scaled aluminum tube model that was conducted to validate the effectiveness of the damage identification approach; the model was used to simulate a long-lining underground structure subjected to the excitation of moving load. Meanwhile, the results of the experiment and simulation were compared theoretically and experimentally. The comparison indicated that the improved damage identification, which was based on the analysis of the frequency response function, for long-lining underground structures could be applied as an efficient and functional damage identification tool.

2. Damage Identification Theory based on Acceleration Frequency Response Function

First, parameter estimation expressions are established by the acceleration frequency response function, which is calculated by experimental measurement and model calculation.
The dynamic behavior of a multi-degree-of-freedom structure that is excited by a set of multiforces is described by the following matrix equation:
M x + C x + K x = F ,
where M , C , and K are the mass, damping, and stiffness matrices of the structure, respectively; and x , x , and x are the displacement, velocity, and acceleration of the structure, respectively.
By substituting x = x e i ω t into Equation (1), the function in the frequency domain can be obtained, as follows:
M ω 2 x e i ω t + C ω i x e i ω t + K x e i ω t = F 0 sin ω t .
Frequency response function is the ratio of the input and output of the viscous damping system, which has 3n degrees-of-freedom, with harmonic excitation. The input is the harmonic excitation, and the output is the acceleration response. The frequency response function of structure can be expressed in Equation (2).
H ( ω ) = F ( ω ) X ( ω ) ,
where X ( ω ) is the steady acceleration response, H ( ω ) is the acceleration frequency response function, and F ( ω ) is the harmonic excitation.
With substitution of x = x e i ω t and Equations (1) into (3), the finite element analysis (FEA) model and the acceleration frequency response function matrix are expressed as Equations (4) and (5), respectively.
H s ( ω ) = [ M s i C s ω K s ω 2 ] 1 ,
H e ( ω ) = [ M e i C e ω K e ω 2 ] 1 ,
where M s , C s , and K s are the mass, damping, and stiffness matrices of the structure by simulation, respectively; M e , C e , and K e are the mass, damping, and stiffness matrices of the structure by experiment, respectively; and, ω is the excitation frequency.
The damping matrix has only a small effect on the damage and this part can be thus commonly ignored. Equations (4) and (5) can be simplified as Equations (6) and (7), respectively.
H s ( ω ) = [ M s K s ω 2 ] 1 ,
H e ( ω ) = [ M e K e ω 2 ] 1 .
In the case of a damaged structure, the stiffness matrices after damage according to Equations (6) and (7), is commonly expressed, as follows:
Δ K = K s K e = ω 2 M ω 2 M + K s K e ) = ( ω 2 M + K s ) ( ω 2 M + K e ) = ω 2 ( H s ( ω ) 1 + H e ( ω ) 1 ) ,
where K s is the stiffness matrices before damage, K e is the stiffness matrices after damage, and Δ K is the variation in the stiffness matrices after damage. Furthermore, the damping matrices are commonly considered constant with the damage that occurs, and the degradation of mass ( Δ M ) is regarded as zero [48,49,50].
However, in this calculation of H 1 , a difficult problem is that all of the frequency response function values cannot be measured. Therefore, Equations (6) and (7) can be transformed, as follows:
H s ( ω ) K s = ω 2 H s ( ω ) M s ω 2 I ,
H e ( ω ) K e = ω 2 H e ( ω ) M e ω 2 I ,
where I is identity matrix with 1’s on diagonal line and zeros elsewhere.
Take row x for example, the equation above can be considered, as follows:
[ H x 1 , H x 2 , H x 3 H x n ] e ( K e ) n × n = ω 2 [ H x 1 , H x 2 , H x 3 H x n ] e ( M ) n × n ω 2 [ 0 , 0 , , 0 , 1 , 0 , , 0 , 0 ] ,
where [ 0 , 0 , , 0 , 1 , 0 , , 0 , 0 ] in Equation (11) is a row matrix with 1’s on the x -th element and zeros elsewhere.
H i ( ω ) changes with parameter ω . Therefore, a new matrix can be created only by the first line of every H e ( ω ) . Equation (11) can be written, as follows:
[ H 11 ( ω 1 ) H 12 ( ω 1 ) H 11 ( ω 2 ) H 12 ( ω 2 ) H 1 n ( ω 1 ) H 1 n ( ω 2 ) H 11 ( ω n ) H 12 ( ω n ) H 1 n ( ω n ) ] e [ K 11 K 12 K 21 K 22 K 1 n K 2 n K n 1 K n 2 K n n ] = [ ω 1 2 0 0 ω 2 2 0 0 0 0 ω n 2 ] { [ H 11 ( ω 1 ) H 12 ( ω 1 ) H 11 ( ω 2 ) H 12 ( ω 2 ) H 1 n ( ω 1 ) H 1 n ( ω 2 ) H 11 ( ω n ) H 12 ( ω n ) H 1 n ( ω n ) ] e [ M 11 M 12 M 21 M 22 M 1 n M 2 n M n 1 M n 2 M n n ] [ 1 0 1 0 0 0 1 0 0 ] } .
Due to the requirement of calculation in this paper, the first two rows and two columns [ K 11 K 12 K 21 K 22 ] of stiffness matrix [ K 11 K 12 K 21 K 22 K 1 n K 2 n K n 1 K n 2 K n n ] are extracted in Equation (12). Moreover, because the symmetry of the simplified stiffness matrix, the number of unknown parameters can be reduced, [ K 11 K 21 ] was adopted. Therefore, Equation (12) can be simplified into Equation (13).
[ H 12 ( ω 1 ) H 12 ( ω 1 ) H 11 ( ω 2 ) H 12 ( ω 2 ) H 11 ( ω 3 ) H 12 ( ω 3 ) H 11 ( ω n ) H 12 ( ω n ) ] [ K 11 K 21 ] = [ ω 1 2 H 11 ( ω 1 ) M 11 ω 1 2 ω 2 2 H 11 ( ω 2 ) M 21 ω 2 2 ω 3 2 H 11 ( ω 3 ) M 31 ω 3 2 ω n 2 H 11 ( ω n ) M n 1 ω n 2 ] .
However, several of the values of H i ( ω ) are nearly the same due to the same size and material of the element in practice, thereby possibly affecting damage identification. To avoid this phenomenon, Equation (8) can be expressed, as follows:
H e ( ω ) Δ K = ω 2 ( H e ( ω ) H s ( ω ) 1 + I ) .
H s ( ω ) 1 can be calculated using Equation (6). Similarly, a new matrix can be created from the first row of every H e ( ω ) . Equation (14) can be written, as follows:
[ H 11 ( ω 1 )   H 12 ( ω 1 )     H 1 n ( ω 1 ) ] e [ Δ K 11 Δ K 12 Δ K 21 Δ K 22 Δ K 1 n Δ K 2 n Δ K n 1 Δ K n 2 Δ K n n ] = ω 2 { [ 1   0     0 ] [ H 11 ( ω 1 )   H 12 ( ω 1 )     H 1 n ( ω 1 ) ] e [ H 11 H 12 H 21 H 22 H 1 n H 2 n H n 1 H n 2 H n n ] s } .
The degradation of stiffness ( Δ K ) that is caused by damage is commonly simulated by Δ E I in actual projects [51].
Therefore, Equation (11) can be written, as follows:
[ H x 1 , H x 2 , H x 3 H x n ] e ( K s ) × Δ ( E I ) = ω 2 [ H x 1 , H x 2 , H x 3 H x n ] e ( [ H ] s ) 1 ω 2 [ 0 , 0 1 , 0 0 , 0 ] ,
where ( [ H ] s ) 1 = M s K s ω 2 . where [ K s ] is the stiffness matrix calculated by the finite element model and is a known quantity.
Δ K can be calculated after the appearance of Δ ( E I ) . Therefore, the location of the damage can be easily evaluated. In this paper, the Monkey algorithm was utilized as a optimization algorithm to fit H e ( ω ) and H t ( ω ) . Monkey Algorithm (MA) is an intelligent optimization algorithm, which is put forward by Zhao and Tang [52], is used to solve multivariable optimization and multimodal function optimization problem. In recent years, many scientists put into the related study of Monkey Algorithm. The establishment of a gas filling station model is shown in the work by Zhao [53], and an intrusion detection technology is worked by Zhang and Sun [54]. Yi has studied on sensor placement on Canton Tower for health monitoring using asynchronous-climb monkey algorithm [55]. What is more, to overcome the limitations overcome the limitations of the monkey algorithm, a reprogram monkey algorithm program is improved by Wang [56]. The algorithm is been inspired by the monkey climbing process in a given field that has many mountains, which simulated by the climbing, watching, and jumping of the monkey in order to find the highest mountaintop. The corresponding search process is as followed: climbing is used to search the local optimal solution of the current location; watching is used to search a better solution of the adjacent of the current location; and, jumping is used to reach a new location which can avoid the local optimum. This algorithm is a process of constantly looking for the optimal solution. Monkey Algorithm was used to identify the change in stiffness, which the error requirements is 0.1% in this paper. Meanwhile, assume that the group number of monkey is 5, and the number of each group is 4. Analysis at the situation when the step size defaults to 1. The process of damage identification that is based on the acceleration frequency response function is shown in Figure 1.

3. Experimental Study

3.1. Similarity Analysis

Knowledge of similitude rules is essential for satisfying the fundamental conditions in planning the scaled shield tunnel model testing, because the scaled model must behave in a manner similar to the prototype.
Models in previous studies fall into two categories of vibration research. The first category considers the entire vibrating structure a rigid body. In the second group, the model in which vibrations occur in the structure is with respect to its stiffness. The vibration of a scaled shield tunnel model in a soil box with damage belongs to the second research category.
The scaled shield tunnel model in this study is a nonlinear elastic model because it involves the shield tunnel and soil structures. Three requirements must be satisfied simultaneously in designing the scaled shield tunnel model.
(1)
Geometry
(2)
Mass and mass distribution
(3)
Gravity and inertial forces
With the scaled shield tunnel model structure considered to be an infinite Timoshenko beam, the deformation equation is expressed, as follows:
1 r = M E I ,
where r is the radius of curvature, E is Young’s modulus, and I is the moment of inertia.
r p r m = M m M p E p E m I p I m ,
where subscripts m and p indicate the model and the prototype, respectively. According to Froude’s scaling law [57], Equation (18) can be simplified to the following:
I m I p = ( L m L p ) 5 E p E m ,
with I L 4 , where L m and L p are the characteristic length of the model and the prototype, respectively. Equation (19) can be written, as follows:
L p L m = E p E m .
The ratio of the similarity of the shield tunnel structural and soil inertia forces, which are indicated by F s s and F s , must be the same in the model and the prototype. The ratio of the structural inertia force F s s can be expressed, as follows:
F s s = m a ,
where m is the mass and a is the acceleration. Thus,
F s s ρ s s L 4 t 2 ,
where ρ s s is the shield tunnel structure density and t is the characteristic time. t is directly proportional to L t and thus can be written as follows:
F s s ρ s s L 2 v 2 ,
where v is the velocity of moving load.
The requirement for similarity is thus as follows:
F s s F s ρ s s L 2 v 2 ρ s L 2 v 2 = constant ,
where ρ s is the soil density.
Meanwhile, moving load scaling should also be considered in this study because it is the source of the main excitation that acts on the shield tunnel model. The scaling law for the situation in this work is also considered the Froude scaling law, which dictates that the scales for the time and velocity were equal to the square root of the length scale. All of the parameters for the shield tunnel model are shown in Table 1. However, using the same scale for the entire model will result in an excessively small model and hence a conflict with the scale of the density. Similarly, the scale of density may be remarkably small, thereby potentially causing the instability between the shield model and the soil. To avoid these problems, aluminum model pipes are used in this experiment, and their properties are listed in Table 1. The stiffness of the shield tunnel model and the soil box parameters are also shown in Table 1. The sand was considered a part of the shield tunnel system in the soil box. Fine yellow sand is used in the tests for this study.

3.2. Description of Tested Structures

The proposed damage identification procedure was verified with real measurement data from moving load vibration tests. Shield tunnel structures are affected by components in the complex environment, such as the surrounding soil and groundwater. Thus, the experimental tests were conducted with a simply scaled aluminum pipe model. The model, which was subjected to the excitation of moving load with all of the designed sensor arrangement scenarios, was placed in the soil box for the segment of shield tunnel for structural damage identification analysis.
Although the tests were not performed in a soil environment, the testing data provided information that demonstrated the reliability of the proposed damage index in detecting damage. In this experiment, aluminum and yellow sand were selected to represent concrete and soil, respectively. The experimental setup for the dynamic tests of the aluminum pipe model is shown in Figure 2. Eighteen cases for the scaled shield tunnel model with different damage types were tested and monitored by using acceleration sensors, as shown in Figure 3. During testing, the entire structure in the model vibrated as a rigid body. Each segment with a flange structure that formed the entire tunnel structure measured approximately 140 mm in length, 180 mm in outer diameter, and 160 mm in inner diameter. The segments installed were tightened by bolts to seal the gasket and washer against the flange, as depicted in Figure 3. Detailed size information about the experimental model is shown in Figure 4. In the model design, each segment is equivalent to a circle, which has a stiffness reduction according to the area and the moment of inertia.
Two damage types were involved in the study, namely, bar and block damages. Varying damage severities were applied to Groups A and B, which were used to simulate crack and peeling-off damages, respectively. Each damage was located at the top of the aluminum pipe. In Group A, the bending rigidity of the bar damage components was reduced by 5% and 10% (The size of the four damages are 120   mm × 20   mm , 240   mm × 20   mm ), as shown in Figure 5. The same was performed on Group B (The size of the four damages are 50   mm × 50   mm , 70   mm × 70   mm ), as shown in Figure 6. Nine cases were considered for each group. An undamaged case, four single-damage cases, three double-damage cases, and one triple-damage case were set. The details of the two groups are tabulated in Table 2 and Table 3.
In the experiment, 30 aluminum segments were used to assemble the long-lining shield tunnel structure whose total length was 4200 mm, as shown in Figure 7. Meanwhile, the wireless test system STS LIVE (Bridge Diagnostics, Inc, Louisville, CO, USA) was used to measure and collect the real-time accelerator signals of each sensor. The specifications of the wireless accelerometer are shown in Table 3. Fifteen wireless sensors were evenly distributed on the pipe model.
A moving load was used to simulate the train load in the tunnel. The simulated moving load consisted of six carriages, and each carriage had two axes with a spacing of 100 mm. The traction device, which could provide stable power, was used to pull the train load travelling in the tunnel. The power of the traction device was 25 watts, which was rotated at 125 revolutions per minute. The moving load and traction device are shown in Figure 8. The sampling frequency was 1000 Hz. “Same measurements” were taken 10 times in order to avoid mistakes and accidental errors. The number of aluminum pipes is shown in Figure 7.
According to the testing condition, the structure was simplified to a beam, which meant that the response of all the nodes at the same cross section were the same. The finite element model of the test was simplified as a beam structure with 30 elements, as shown in Figure 9. In addition, the experiment was conducted within a short time to ensure accuracy. Temperature and humidity were relatively stable, and no interference was caused by external excitation sources.

3.3. Experimental Results and Analysis

Real-time acceleration data were obtained by the wireless node and a wireless test system. To limit the length of this paper, only parts of the results collected by the typical acceleration sensor are shown here.
First, the frequency response function of the undamaged structure was tested. In the experimental tests, the speed of the moving load is 2   m / s . The scaling law for the situation in this work is also considered the Froude scaling law, which dictates that the scales for the time and velocity should be equal to the square root of the length scale. According to the reference [39], equivalent node load can be expressed, as follows:
P ( x , ω ) = F Δ T e s v + v 2 + 2 a x a ,
where P ( x , ω ) is the moving load in frequency domain; s is the Laplace parameter; F is the moving load. The frequency response can be obtained with P ( x , ω ) . The frequency response of the simulated moving load, which consisted of six carriages, is shown in Figure 10.
The acceleration frequency responses of the two damages are shown in the Figure 11 and Figure 12, and the frequency response function of the two groups are shown in Figure 13 and Figure 14. Due to limitation of pages, only some representative cases are presented in Figure 11, Figure 12, Figure 13 and Figure 14.
The results of the frequency response function are shown in Figure 13 and Figure 14. Undamaged cases a and b had the same situation. Model updating was used as described in Section 2. To limit the length of the paper, only parts of the results are shown here. The data of the undamaged case (which can be considered the simulation model) and damage case 1a are depicted here to illustrate the effect of damage identification. The modified E I values of the undamaged case and damaged degree of case 1a are presented in Table 4 and Table 5, respectively. Under the undamaged circumstances, the model had been modified, which is shown as Table 4. By using the modified E I as a benchmark of undamaged structure, the experimental data which can obtain damaged E I d was adopted to identify damage which shown as Table 5. In particular, Δ E I E I u is the percentage of damage degree.
The variation ratios of E I obtained for each damage case of Groups A and B are shown in Figure 15 and Figure 16, respectively. Application of the proposed method revealed that the variation ratio of E I ( Δ E I ) of the damaged element showed a noticeably increasing trend. The degradation of stiffness that is caused by damage is commonly simulated by Δ E I in actual projects. The testing result indicated that the numerical model was correct. The variation ratios of E I were observed exactly at the damage element locations in single- and multi-damage situations. Furthermore, the bending rigidity of element 10 in case 1a was reduced by 5%. For example, in Group A, the bending rigidity of element 10 was reduced by 10% in case 2a. Meanwhile, the bending rigidity values of elements 15 and 20 were reduced by 5% in cases 3a and 4a, respectively, and a 5% measurement noise was considered in all of the cases. Figure 15 and Figure 16 indicate that the variation ratios of E I at the damaged element were amplified obviously. For example, in case 1a, the variation ratio of E I of the damaged element was 0.21, which largely outweighed those of the other elements. This finding demonstrated the feasibility and accuracy of using the proposed approach in identifying the damage locations in a single-damage situation. Moreover, the variation ratio may also be used for quantifying the damage. In multi-damage situations, the variation ratio tended to increase in comparison with that in the single-damage case. This result may be attributed to the interaction between damages. A comparison of cases 5a and 7a showed that the shorter the distance between the two damage locations, the greater the influence.
The damage detection results for elements 10, 15, and 20 under different damage cases are shown in Figure 17. As Figure 17a shows, the variation ratios of E I of the damaged elements were significantly larger than those in the undamaged case. This finding indicated the effective detection of the introduced damage. In case 6a, elements 10 and 20 had damage severities of 5% and 10%, respectively, and element 15 had no damage, as shown in Figure 17a. The damage index of element 15 showed no noticeable change in comparison with that in the undamaged case. However, the damage index values of damaged elements 10 and 20 showed significant increases when compared with those in the undamaged state. A comparison of cases 5a and 6a showed that the damage magnitude has only a small influence on the effect of damage identification. Meanwhile, a comparison of cases 5a and 7a indicated that the shorter the distance between two damage locations, the greater the influence. Figure 17b shows the situation of Group B. The proposed approach was appropriate for detecting the damage severity in the single- and multi-damage situations. This method is thus attractive for detecting scouring damage in shield tunnels because various uncertainties and noises are involved in the modeling of shield tunnel structures and measuring their dynamic responses. However, the quantitative relation between the simulated damage and the actual damage is unclear and it should be discussed further.

4. Discussion and Conclusions

This work investigated the feasibility and effectiveness of using the acceleration frequency function to identify the structural damage in underground tunnel structures. Numerical and experimental studies were conducted. An aluminum pipe model with a simulated underground boundary condition was designed and tested in a large soil box. Different damage scenarios were simulated by cutting the pipe models into various damage sizes. The experimental studies performed covered the accelerated frequency response function used for damage identification in underground structures. The stiffness loss Δ K could be calculated after the appearance of Δ ( E I ) . Therefore, the location of the damage could be easily judged. Meanwhile, the damage magnitude had less influence on the effect of damage identification. Moreover, the shorter the distance between two damage locations, the greater the influence. Damage identification for underground structures based on the analysis of the frequency response function can be adopted as an efficient and functional damage identification tool in practical applications. However, the quantitative relation between the simulated damage and the actual damage should be discussed further.

Author Contributions

Conceptualization, H.L. Methodology, H.L. and S.W.; Software, S.W.; Validation, S.W.; Formal Analysis, S.W.; Investigation, S.W.; Resources, H.L. and X.L.; Data Curation, X.L.; Writing-Original Draft Preparation, S.W.; Writing-Review & Editing, H.L. and X.L.; Visualization, H.Z.; Supervision, H.Z.; Project Administration, H.L. and H.Z.; Funding Acquisition, H.L. and H.Z.

Funding

This research was funded by [the Natural Science Fund of China] grant number [51578260]; [the Natural Science Fund of China] grant number [51578261]; [Major technical innovation projects in Hubei] grant number [2017ACA183]; [Outstanding youth project of Hubei Natural Science Foundation] grant number [2017CFA074].

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Feng, L.; Yi, X.H.; Zhu, D.P.; Xie, X.Y.; Wang, Y. Damage detection of metro tunnel structure through transmissibility function and cross correlation analysis using local excitation and measurement. Mech. Syst. Signal Process. 2015, 60–61, 59–74. [Google Scholar] [CrossRef]
  2. Li, H.N.; Li, D.S.; Ren, L.; Yi, T.H.; Jia, Z.G.; Li, K.P. Structural health monitoring of innovative civil engineering structures in Mainland China. Struct. Monit. Maint. 2016, 3, 1–32. [Google Scholar] [CrossRef]
  3. Li, H.N.; Ren, L.; Jia, Z.G.; Yi, T.H.; Li, D.S. State-of-the-art in structural health monitoring of large and complex civil infrastructures. J. Civ. Struct. Health Monit. 2016, 6, 3–16. [Google Scholar] [CrossRef]
  4. Sadhu, A.; Narasimhan, S.; Antoni, J. A review of output-only structural mode identification literature employing blind source separation methods. Mech. Syst. Signal Process. 2017, 94, 415–431. [Google Scholar] [CrossRef]
  5. Dora, F.; Vincenzo, G.; Francesco, P. Output-Only Identification and Model Updating by Dynamic Testing in Unfavorable Conditions of a Seismically Damaged Building. Comput. Aided Civ. Infrastruct. Eng. 2014, 29, 659–675. [Google Scholar]
  6. Martin, S.; Marcus, G.; Steffen, M. OA precisenon-destructivedamageidentification technique of long and slender structures based on modal data. J. Sound Vib. 2016, 365, 89–101. [Google Scholar]
  7. Jiaze, H.; Fuh-Gwo, Y. Damage identification for composite structures using a cross-correlation reverse-time migration technique. Struct. Health Monit. 2015, 14, 558–570. [Google Scholar]
  8. Yang, Q.W.; Sun, B.X. Structural damage identification based on best achievable flexibility change. Appl. Math. Model. 2011, 35, 5217–5224. [Google Scholar] [CrossRef]
  9. Zou, Y.; Tong, L.; Steven, G.P. Vibration-based model-dependent damage (delamination) identification and health monitoring for composite strucures. J. Sound Vib. 2000, 230, 357–378. [Google Scholar] [CrossRef]
  10. Daniele, D.; Gabriele, C. Damage identification techniques via modal curvature analysis: Overview and comparison. Mech. Syst. Signal Process. 2015, 52–53, 181–205. [Google Scholar]
  11. Chang, P.C.; Flatau, A.; Liu, S.C. Review Paper: Health Monitoring of Civil Infrastructure. Struct. Health Monit. 2003, 2, 257–267. [Google Scholar] [CrossRef] [Green Version]
  12. Park, J.H.; Kim, J.T.; Hong, D.S.; Mascarenas, D.; Lynch, J.P. Autonomous smart sensor nodes for global and local damage detection of prestressed concrete bridges based on accelerations and impedance measurements. Smart Struct. Syst. 2010, 6, 711–730. [Google Scholar] [CrossRef]
  13. Seyedpoor, S.M.; Yazdanpanah, O. An efficient indicator for structural damage localization using the change of strain energy based on static noisy data. Appl. Math. Model. 2014, 38, 2661–2672. [Google Scholar] [CrossRef]
  14. Cao, M.; Xu, W.; Ostachowicz, W.; Su, Z.Q. Damage identification for beams in noisy conditions based on Teager energy operator-wavelet transform modal curvature. J. Sound Vib. 2014, 233, 1543–1553. [Google Scholar] [CrossRef]
  15. Yoon, M.K.; Heider, D.; Gillespie, J.W., Jr.; Ratcliffe, C.P.; Crane, R.M. Local damage detection using the two-dimensional gapped smoothing method. J. Sound Vib. 2005, 279, 119–139. [Google Scholar] [CrossRef]
  16. Katunin, A. Stone impact damage identification in composite plates using modal data and quincunx wavelet analysis. Arch. Civ. Mech. 2015, 15, 251–261. [Google Scholar] [CrossRef]
  17. Ulriksen, M.D.; Tcherniak, D.; Kirkegaard, P.H.; Damkilde, L. Operational modal analysis and wavelet transformation for damage identification in wind turbine blades. Struct. Health Monit. 2016, 15, 381–388. [Google Scholar] [CrossRef] [Green Version]
  18. Katunin, A.; Dragan, K.; Dziendzikowski, M. Damage identification in aircraft composite structures: A case study using various non-destructive testing techniques. Compos. Struct. 2015, 127, 1–9. [Google Scholar] [CrossRef]
  19. Palaez, M.; Krawczuk, M. Vibration parameters for damage detection in structures. J. Sound Vib. 2002, 249, 999–1010. [Google Scholar]
  20. Amezquita-Sanchez, J.P.; Adeli, H. Signal Processing Techniques for Vibration-Based Health Monitoring of Smart Structures. Arch. Comput. Methods Eng. 2016, 23, 1–15. [Google Scholar] [CrossRef]
  21. Qu, W.L.; Chen, W. Seismic damage diagnosis of frame structure using artificial neural network. Earthq. Eng. Eng. Vib. 2002, 22, 43–48. [Google Scholar]
  22. Yang, Q.W.; Liu, J.K. Structural damage identification with flexibility changed: A review. J. Vib. Shock. 2011, 30, 147–153. [Google Scholar]
  23. Zong, Z.H.; Huang, D.Z. Damage diagnosis of a steel-concrete composite bridge by ETR index. China Civ. Eng. J. 2011, 37, 59–69. [Google Scholar]
  24. Cha, Y.J. Structural damage detection using modal strain energy and hybrid multiobjective optimization. Comput. Aided Civ. Infrastruct. Eng. 2015, 30, 347–358. [Google Scholar] [CrossRef]
  25. Moradipour, P.; Tommy, H.T.; Chaminda, G. An improved modal strain energy method for structural damage detection, 2D simulation. Struct. Eng. Mech. 2015, 54, 105–119. [Google Scholar] [CrossRef]
  26. TaeKim, J.; Ryu, Y.S.; Cho, H.M.; Stubbs, N. Damage identification in beam-type structures: Frequency-based method vs mode-shape-based method. Eng. Struct. 2003, 25, 57–67. [Google Scholar]
  27. Feng, D.M.; Feng, M.Q. Output-only damage detection using vehicle-induced displacement response and mode shape curvature index. Struct. Control Health Monit. 2016, 23, 1088–1107. [Google Scholar] [CrossRef]
  28. Feng, D.M.; Feng, M.Q. Experimental validation of cost-effective vision-based structural health monitoring. Mech. Syst. Signal Process. 2017, 88, 199–211. [Google Scholar] [CrossRef]
  29. Yi, W.J. Damage diagnosis of structures by genetic algorithms. Eng. Mech. 2001, 18, 64–71. [Google Scholar]
  30. Wang, D.S.; Zhou, P.; Jin, T.; Zhu, H.P. Damage Identification for beam atructures using the Laplace Transform-based spectral element method and strain statistical moment. J. Aerosp. Eng. 2018, 31. [Google Scholar] [CrossRef]
  31. Sun, H.; Feng, D.M.; Liu, Y.; Feng, M.Q. Statistical regularization for identification of structural parameters and external loadings using state space models. Comput. Aided Civ. Infrastruct. Eng. 2015, 30, 843–858. [Google Scholar] [CrossRef]
  32. Gabriele, C.; Filipe, M.; Filippo, U.; Alvaro, C. On vibration-based damage detection by multivariate statistical techniques: Application to a long-span arch bridge. Struct. Health Monit. 2016, 15, 505–524. [Google Scholar]
  33. Wang, D.S.; Xiang, W.; Zhu, H.P. Damage identification in beam type structures based on statistical moment using a two step method. J. Sound Vib. 2014, 333, 745–760. [Google Scholar] [CrossRef]
  34. Imregun, M.; Visser, W.J.; Ewins, D.J. Finite element model updating using frequency response function data: I. Theory and initial investigation. Mech. Syst. Signal Process. 1995, 9, 187–202. [Google Scholar] [CrossRef]
  35. Lin, R.M.; Zhu, J. Model updating of damped structures using FRF data. Mech. Syst. Signal Process. 2006, 20, 2200–2218. [Google Scholar] [CrossRef]
  36. Li, M.W.; Hong, J.Z. Research on model updating method based on frequency response functions. Shanghai Jiaotong Univ. 2011, 45, 1455–1459. [Google Scholar] [CrossRef]
  37. García-Palencia, A.J.; Santini-Bel, E. Structural model updating using dynamic data. J. Civ. Struct. Health Monit. 2014, 5, 115–127. [Google Scholar] [CrossRef]
  38. Arora, V.; Singh, S.P.; Kundra, T.K. On the use of damped updated FE model for dynamic design. Mech. Syst. Signal Process. 2009, 23, 580–587. [Google Scholar] [CrossRef]
  39. Lin, R.M. Identification of modal parameters of unmeasured modes using multiple FRF modal analysis method. Mech. Syst. Signal Process. 2011, 25, 151–162. [Google Scholar] [CrossRef]
  40. Shadan, F.; Khoshnoudian, F.; Esfandiari, A. A frequency response-based structural damage identification using model updating method. Struct. Control Health Monit. 2015. [Google Scholar] [CrossRef]
  41. TranXuan, D.; He, J.; Choudhury, R. Damage detection of truss structures using measured frequency response function data. In Proceedings of the 15th International Modal Analysis Conference, Orlando, FL, USA, 3–6 February 1997; pp. 961–967. [Google Scholar]
  42. Balls Crema, L.; Mastroddi, F. A direct approach for updating and damage detection by using FRF data. In Proceedings of the 16th International Seminar on Modal Analysis, Leuven, Belgium, 16–18 September 1998; pp. 159–166. [Google Scholar]
  43. Zou, W.; Qu, W. Structural damage identification based on frequency response function and genetic algorithm. J. Vib. Shock 2008, 27, 28–30. [Google Scholar]
  44. Khoshnoudian, F.; Esfandiari, A. Structural damage diagnosis using modal data. Sci. Iranica 2011, 18, 853–860. [Google Scholar] [CrossRef]
  45. Yang, Y.; Song, Y. A method of truss structural damage identification based on principal component analysis and frequency response function. Eng. Mech. 2007, 24, 105–110. [Google Scholar] [CrossRef]
  46. Staszewski, W.J.; Wallace, D.M. Wavelet-based Frequency Response Function for time-variant systems—An exploratorystudy. Mech. Syst. Signal Process. 2014, 47, 35–49. [Google Scholar] [CrossRef]
  47. Belleri, A.; Moaveni, B.; Restrepo, J.I. Damage assessment through structural identification of a three-story large-scale precast concrete structure. Earthq. Eng. Struct. Dyn. 2014, 43, 61–76. [Google Scholar] [CrossRef]
  48. Zhu, H.P.; Mao, L.; Weng, S. Calculation of Dynamic Response Sensitivity to Substructural Damage Identification under Moving Load. Adv. Struct. Eng. 2016, 16, 1621–1631. [Google Scholar] [CrossRef]
  49. Li, J.; Law, S.S.; Zhu, H.P. Improved damage identification in bridge structures subject to moving loads: Numerical and experimental studies. Int. J. Mech. Sci. 2013, 74, 99–111. [Google Scholar] [CrossRef] [Green Version]
  50. Alvandi, S.A.; Cremona, C. Assessment of vibration-based damage identification techniques. J. Sound Vib. 2006, 292, 179–202. [Google Scholar] [CrossRef]
  51. Zhang, J.B. Dynamic analysis of structures based on spectral element method. Huazhong Univ. Sci. Technol. 2001. [Google Scholar]
  52. Zhang, R.Q.; Tang, W.S. Monkey algorithm for global numerical optimization. J. Uncertain. Syst. 2008, 2, 165–176. [Google Scholar]
  53. Zhang, T.; Xia, Y.; Zong, M.L. Optimization of gas filling station project scheduling problem based on monkey algorithm. Value Eng. 2010, 8, 90–92. [Google Scholar]
  54. Zhang, J.J.; Zhang, Y.P.; Sun, J.Z. Intrusion detection technology based on monkey algorithm. Comput. Eng. 2011, 37, 131–133. [Google Scholar]
  55. Yi, T.H.; Li, H.N.; Zhang, X.D. Sensor placement on Canton Tower for health monitoring using asynchronous-climb monkey algorithm. Smart Mater. Struct. 2012, 21, 125023. [Google Scholar] [CrossRef]
  56. Wang, J.R.; Yun, Y.X.; Zeng, Y. Discrete monkey algorithm and its application in transmission network expansion planning. J. Tianjin Univ. 2010, 43, 798–803. [Google Scholar]
  57. Faug, T.; Naaim, M.; Bertrand, D.; Lachamp, P.; Naaim-Bouvet, F. Varying Dam Height to Shorten the Run-Out of Dense Avalanche Flows: Developing a Scaling Law from Laboratory Experiments. Surv. Geophys. 2003, 24, 555–569. [Google Scholar] [CrossRef]
Figure 1. Process of damage identification based on frequency response function.
Figure 1. Process of damage identification based on frequency response function.
Sensors 18 03033 g001
Figure 2. Experimental setup for dynamic tests of aluminum pipe model.
Figure 2. Experimental setup for dynamic tests of aluminum pipe model.
Sensors 18 03033 g002
Figure 3. Sketch of aluminum pipe model: (a) segments are tighten by the bolts against the flange; (b) sensor.
Figure 3. Sketch of aluminum pipe model: (a) segments are tighten by the bolts against the flange; (b) sensor.
Sensors 18 03033 g003
Figure 4. Shape and size information of aluminum segment model (unit: mm): (a) side view; (b) front view.
Figure 4. Shape and size information of aluminum segment model (unit: mm): (a) side view; (b) front view.
Sensors 18 03033 g004
Figure 5. Bar damage scenarios: (a) 5% damage; (b) 10% damage.
Figure 5. Bar damage scenarios: (a) 5% damage; (b) 10% damage.
Sensors 18 03033 g005
Figure 6. Block damage scenarios: (a) 5% damage; and, (b) 10% damage.
Figure 6. Block damage scenarios: (a) 5% damage; and, (b) 10% damage.
Sensors 18 03033 g006
Figure 7. Number of aluminum pipes.
Figure 7. Number of aluminum pipes.
Sensors 18 03033 g007
Figure 8. Simulated train load: (a) moving train; (b) traction device.
Figure 8. Simulated train load: (a) moving train; (b) traction device.
Sensors 18 03033 g008
Figure 9. Simplified finite element model.
Figure 9. Simplified finite element model.
Sensors 18 03033 g009
Figure 10. Moving load frequency response.
Figure 10. Moving load frequency response.
Sensors 18 03033 g010
Figure 11. Acceleration frequency response of Group A: (a) UDMa; (b) DMG1a; (c) DMG5a; and, (d) DMG8a.
Figure 11. Acceleration frequency response of Group A: (a) UDMa; (b) DMG1a; (c) DMG5a; and, (d) DMG8a.
Sensors 18 03033 g011
Figure 12. Acceleration frequency response of Group B. (a) UDMb; (c) DMG5b; and, (d) DMG8b.
Figure 12. Acceleration frequency response of Group B. (a) UDMb; (c) DMG5b; and, (d) DMG8b.
Sensors 18 03033 g012
Figure 13. Frequency response function of Group A: (a) UDMa; (b) DMG1a; (c) DMG5a; (d) DMG8a; and, (e) all cases.
Figure 13. Frequency response function of Group A: (a) UDMa; (b) DMG1a; (c) DMG5a; (d) DMG8a; and, (e) all cases.
Sensors 18 03033 g013
Figure 14. Frequency response function of Group B: (a) UDMb; (b) DMG1b; (c) DMG5b; (d) DMG8b; and, (e) all cases.
Figure 14. Frequency response function of Group B: (a) UDMb; (b) DMG1b; (c) DMG5b; (d) DMG8b; and, (e) all cases.
Sensors 18 03033 g014aSensors 18 03033 g014b
Figure 15. Damage location results under moving load of Group A: (a) DMG1a; (b) DMG2a; (c) DMG3a; (d) DMG4a; (e) DMG5a; (f) DMG6a; (g) DMG7a; and, (h) DMG8a.
Figure 15. Damage location results under moving load of Group A: (a) DMG1a; (b) DMG2a; (c) DMG3a; (d) DMG4a; (e) DMG5a; (f) DMG6a; (g) DMG7a; and, (h) DMG8a.
Sensors 18 03033 g015
Figure 16. Damage location results under moving load of Group B: (a) DMG1b; (b) DMG2b; (c) DMG3b; (d) DMG4b; (e) DMG5b; (f) DMG6b; (g) DMG7b; and, (h) DMG8b.
Figure 16. Damage location results under moving load of Group B: (a) DMG1b; (b) DMG2b; (c) DMG3b; (d) DMG4b; (e) DMG5b; (f) DMG6b; (g) DMG7b; and, (h) DMG8b.
Sensors 18 03033 g016
Figure 17. Damage location results of all cases: (a) Group A; and, (b) Group B.
Figure 17. Damage location results of all cases: (a) Group A; and, (b) Group B.
Sensors 18 03033 g017
Table 1. The properties of aluminum model pipes considered in experimental verification.
Table 1. The properties of aluminum model pipes considered in experimental verification.
ItemScalePrototypeDesired ModelAdopted Model
Soil modelLength 1 30 135   m 4500   mm 4300   mm
Height 1 30 30   m 1000   mm 800   mm
Depth 1 30 30   m 1000   mm 800   mm
Bulk density 1 1 1800   kg / m 3 1800   kg / m 3 1800   kg / m 3
Shield tunnel modelInner diameter 1 30 5.4   m 180   mm 160   mm
Outer diameter 1 30 6   m 200   mm 180   mm
Length 1 30 135   m 4500   mm 4300   mm
Table 2. Damage cases of Groups A and B considered in experimental verification.
Table 2. Damage cases of Groups A and B considered in experimental verification.
LabelSegment No.Damage LocationGroup AGroup BDamage Severity
Damage ScenarioDamage TypeDamage ScenarioDamage Type
0NullNullUDMaBarUDMbBlockNull
1S10x = 9 m~10 mDMG1abarDMG1bblock 5 %
2S10x = 9 m~10 mDMG2abarDMG2bblock 10 %
3S15x = 14 m~15 mDMG3abarDMG3bblock 5 %
4S20x = 19 m~20 mDMG4abarDMG4bblock 5 %
5S10x = 9 m~10 mDMG5abarDMG5bblock 5 %
S20x = 19 m~20 mbarblock 5 %
6S10x = 9 m~10 mDMG6abarDMG6bblock 5 %
S20x = 19 m~20 mbarblock 10 %
7S10x = 9 m~10 mDMG7abarDMG7bblock 5 %
S15x = 14 m~15 mbarblock 5 %
8S10x = 9 m~10 mDMG8abarDMG8bblock 5 %
S15x = 14 m~15 mbarblock 5 %
S20x = 19 m~20 mbarblock 5 %
Table 3. Specifications of wireless accelerometer.
Table 3. Specifications of wireless accelerometer.
Range (g) ± 5
Sensitivity (mV/g) 400
Frequency Response (Hz)0–600
Output Noise, Differential [Root Mean Square, typical] ( μ g / Hz ) 7
Max Shock [( 0.1   ms )] ( g ) 2000
Non-Linearity ( ± 90 % F S O ) 0.5 %
Bias Tem. Shift ( T = 55   ° C   t o   + 125   ° C ) 0.0001   g / ° C
TypeMicro-machined capacitive sense element
Excitation Voltage (VDC) + 5.0   V D C   ( ± 0.025   V D C )
Output Impedance 50   Ω
Operating Current 15   mA   @   5.0   V D C
Differential Output ± 2.0 V D C   F S O
Cross Axis Sensitivity < = 3 %
Operating Temperature 55   ° C   t o   + 125   ° C
DampingNitrogen Gas Damped
Overal Size ( A × B × C ) 49.5   mm × 12.4   mm × 20.3   mm
Weight (g) 54
Housing6061 Aluminunum, IP67 rated
CableBDI-RC-187 (specify length)
Table 4. Stiffness change of partial unit of undamaged case.
Table 4. Stiffness change of partial unit of undamaged case.
Element NumberUnmodified E I Modified E I Δ E I
52.71 × 1092.09 × 1096.20 × 108
72.71 × 1092.38 × 1093.33 × 108
102.71 × 1092.21 × 1095.00 × 108
132.71 × 1092.53 × 1091.80 × 108
142.71 × 1092.49 × 1092.11 × 108
172.71 × 1091.89 × 1098.25 × 108
202.71 × 1092.07 × 1096.40 × 108
Table 5. Stiffness change of partial unit of case 1a.
Table 5. Stiffness change of partial unit of case 1a.
Element NumberUndamaged E I u Damaged E I d Δ E I Δ E I E I u (%)
52.09 × 1092.03 × 1096.48 × 107 0.031
72.38 × 1092.35 × 1093.33 × 107 0.014
102.21 × 1091.73 × 1094.81 × 108 0.218
132.53 × 1092.43 × 1099.87 × 107 0.039
142.49 × 1092.44 × 1094.73 × 107 0.019
171.89 × 1091.68 × 1092.08 × 107 0.011
202.07 × 1091.98 × 1098.90 × 107 0.043

Share and Cite

MDPI and ACS Style

Wang, S.; Long, X.; Luo, H.; Zhu, H. Damage Identification for Underground Structure Based on Frequency Response Function. Sensors 2018, 18, 3033. https://doi.org/10.3390/s18093033

AMA Style

Wang S, Long X, Luo H, Zhu H. Damage Identification for Underground Structure Based on Frequency Response Function. Sensors. 2018; 18(9):3033. https://doi.org/10.3390/s18093033

Chicago/Turabian Style

Wang, Shengnan, Xiaohong Long, Hui Luo, and Hongping Zhu. 2018. "Damage Identification for Underground Structure Based on Frequency Response Function" Sensors 18, no. 9: 3033. https://doi.org/10.3390/s18093033

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop