1. Introduction
Dynamic feature identification is an important step for the bridge health monitoring. Dynamic data, including natural frequencies, mode shapes, and damping factors, can provide meaningful results if they are used to improve a bridge’s finite element model or conduct damage identification [
1,
2,
3,
4]. Traditionally, measurements of the dynamic parameters of structures are based on accelerometers. Sensors, such as the fiber optic accelerometer [
5,
6], force balanced accelerometer [
7,
8], and wireless accelerometer [
9,
10], are typically employed, as they can obtain acceleration directly.
With the development of sensor and measurement technology, other types of sensor, such as strain sensors, GPS, version-based measurement systems, and tiltmeters, can also be used to identify the dynamic features. Fiber optic strain sensors have been used to estimate structural vibration features and have been tested for a beam [
11] and model bridge [
12] in the laboratory. Moschas and Stiros used GPS to measure dynamic displacements of a bridge, and the modal frequencies were identified [
13]. Lee et al. used a version-based dynamic rotational angle measurement system to monitor the dynamic rotational angle of a five-story modal tower [
14]. Fukuda et al. developed a vision-based displacement sensor for monitoring the dynamic response [
15]. Erol et al. used a tiltmeter to determine the structural dynamic movements of a tall building, and identified the structure’s resonance [
16]. This paper includes a bridge vibration study based on the measurement of fiber Bragg grating (FBG) tiltmeters.
Tiltmeters are a measurement tool for monitoring the health of a bridge. Currently, commercial tiltmeters can provide resolution up to 0.001° [
14,
17,
18]. To monitor the bridge’s overall response, it has been applied for different type of bridges. Zhou et al. installed tiltmeters on the top of a pylon for a cable-stayed bridge to record the rotations of the pylon [
19]. Caglayan et al. measured the slope of a bridge deck to identify the vertical displacement of an arch bridge [
8]. Helmi et al. measured the rotations and curvature of a box girder bridge to compute the deflection [
20]. Norouz et al. installed tiltmeters on the piers of a truss bridge to measure the top of the piers’ displacement [
21]. Kim and Laman placed a tiltmeter on bridge abutments and monitored the abutment movements [
22]. In conclusion, these measurements were all performed for the purpose of bridge deflection identification. However, monitoring the bridge’s dynamic features based on a tiltmeter’s measurements has been lacking.
In addition to monitoring the bridge’s longitudinal movement in response to a traffic loading and the environment effects [
23], this paper studied the dynamic rotational signal from the tiltmeter and identified the bridge’s dynamic features. The innovation is the first-time use of FBG tiltmeter readings to identify the natural frequencies of a long-span steel girder bridge.
2. FBG Tiltmeter Technology
A tiltmeter can not only record the rotation or deflection but can also provide the dynamic features based on signal processing technology [
16]. In this study, two FBG-TI-310 (FBG Korea, Inc., Gwangju, Korea) tiltmeters [
24] were employed. The fiber optic sensor is a sensing solution using the fiber Bragg grating and measurement system. The theories and characteristics of this fiber optic technology were presented in previous research [
25,
26].
The FBG sensor with very high accuracy can provide non-stop and long-term angle monitoring. The tiltmeter has a measurement range of 8 degrees and has a resolution of ±0.05% FS. A built-in temperature compensator is used to adjust for the effect of temperature on the measurement, besides the rotational angle measurement, the tiltmeter includes a second FBG which provides active temperature compensation [
24].
The sampling rate of the FBG tiltmeter is determined by the optical sensing interrogator. The optical sensing interrogator sends wide-spectrum light to optical sensors and indicates the change in the reflected wavelength from the optical sensors. The interrogator selected for this study was the Optical Sensing Interrogator sm130 (Micron Optics, Atlanta, GA, USA), the scan frequency was 1k Hz, and the sampling rate for the FBG tiltmeter was 250 Hz.
3. Bridge Description and Monitoring System
The 790-foot Chulitna River Bridge (
Figure 1a) is a five-span steel girder plate bridge located in Alaska and is part of the Parks Highway, which links Anchorage with Fairbanks. Heavily loaded vehicles of up to 410,000 pounds regularly travel the route. The bridge deck is 42 feet 2 inches wide with two exterior steel plate girders and three sub-stringers. Three longitudinal steel trusses were installed utilizing the stringers as top chords (
Figure 1b).
Figure 1c,d shows the bearing condition at the bridge’s end.
The structural health monitoring system consisted of five parts: the sensors, the multiplexer, the interrogator, the local computer, and the remote computer (
Figure 2). The interrogator sends optical signals (laser) to the multiplexer, and the multiplexer switches this laser to several lasers, and each laser goes into one optical sensor array. There is an optic Bragg grating in each optical sensor which can reflect a certain wavelength of light back to the interrogator and allow the other wavelengths of light to pass through the sensor, which can be used for the next optical sensor. The interrogator can identify the reflected laser and read the optical signal. The interrogator will store the data in the local computer. The local computer sends the real-time data to the remote computer through the internet.
Figure 2 shows tiltmeters 1 and 2 installed in one sensor array.
Figure 3 is a photograph of the FBG tiltmeter at the bridge site.
The tiltmeters were installed on the expansion bearings (
Figure 3).
Figure 4a shows the expansion bearing location at the abutment 2.
Figure 4b shows the details at the abutment 2, and tiltmeter 1 and tiltmeter 2 are connected to the same fiber optical cable and that the cable is connected with the control panel on the bridge site. The control panel communicated with the interrogator and the local computer through the optical signal [
23].
The expansion bearing is a pin type expansion bearing (
Figure 4c), which consisted of a pin at the top that facilitates rotation. The rotation of the bearings can accommodate the bridge’s longitudinal movement.
Figure 4c shows the tiltmeter installed on the rocker assembly. The purpose is to monitor the rotation of the rocker assembly in response to the bridge’s longitudinal movement.
4. Dynamic Test and Dynamic Properties Identification
A dynamic load test was conducted on the bridge using two dump trucks. The gross weight of those two trucks are weighted before the load test which are 80.3 kips and 82.1 kips. The two trucks were side by side, heading north at a speed of 45 mph.
Figure 5 and
Figure 6 show the tiltmeter reading in response to the truck loading. The readings can be separated into three phases: trucks approaching the bridge, trucks on the bridge and trucks having left the bridge. In
Figure 5 and
Figure 6, the trucks arrived at the abutment 2 around at the 17 s, and the bridge is in a free-decay response after the trucks left the bridge, and this study used this free-decay response to identify the bridge’s natural frequencies.
4.1. Spectrum Analysis
Figure 7 is the vibration signal after the trucks left the bridge. The dynamic characteristics of the structure were extracted by converting the time domain data to frequency domain data.
Figure 8 shows the natural frequencies obtained using the fast Fourier transform (FFT) method. Both sensors yielded 1.50 Hz, 4.47 Hz, and 4.90 Hz as the primary natural frequencies. The identified frequencies can be used as a characteristic quantity or index for damage identification.
To characterize the bridge vibration in the time-domain, time-frequency analysis of the spectrogram is used [
27].
Figure 9 shows the spectrogram of the measured signal at the tiltmeter 1 and tiltmeter 2 during the free-decay period; Both
Figure 9a,b shows two dominant components. The first component’s corresponding frequencies are 4.47 Hz and 4.90 Hz. The second component’s corresponding frequency is 1.50 Hz. From those results, we can see that all those kinds of spectrum have merged components, the next section will decompose the time-frequency signal.
4.2. Modified Empirical Mode Decomposition
To decompose the signal as being characterized in the time-frequency expression of the signal, we next used the modified empirical mode decomposition method [
28] to decompose the tiltmeter 1 reading (
Figure 9a). This method was based on empirical mode decomposition (EMD) [
29], which established a new framework and avoided the EMD drawbacks [
28]. The method decomposed the original signal into a set of elemental signals called “intrinsic mode functions (IMFs)”.
The decomposed signals are zero-mean components, which must satisfy the following requirements: (1) The number of extreme and the number of zero crossings in the IMF must be equal or differ at most by one; (2) at any point, the mean value of the envelopes defined by the local maxima and local minima must be zero. The signal is locally symmetric around the time axis, and the original signal can now be represented as the sum of
n IMFs plus a residual
.
Next, the Hilbert transform is applied to all IMFs,
, in Equation (1) to derive model parameters.
The Hilbert transform,
, and
form a complex signal,
, where
Then the envelop of each IMF can be given by
in which
, the instantaneous amplitude of
, reflects how the energy of
varies with time. The term
is the instantaneous phase of
. The instantaneous frequency,
, is defined as the time derivative of the instantaneous phase
as follows
Then the original signal
can be expressed as
The EEMD method is supposed to eliminate the mode mixing problem of EMD, and adds noise to the signal
x(
t). The detailed algorithm has been included in Rato et al. [
28].
Figure 10 shows the decomposed components of the measured tiltmeter 1 reading which included the tiltmeter output and IMF 1 to 6. The damping coefficients can be identified using the slope of the amplitude–time plot [
30,
31,
32].
To consider the complex frequency properties, the Hilbert spectrum is applied to re-treat the recorded signal.
Figure 11 shows the Hilbert spectrum of the decomposed signals in
Figure 10. From
Figure 11, we can see that those respective components are well separated, and the time-dependent properties of the frequencies are clearly shown. The dominant mode exhibits modulation centered at approximately 4.90 Hz in a red color.
5. Discussion and Theoretical Consideration
To verify the dynamic characteristics obtained from the tiltmeter readings, a bridge finite element model was built using SAP2000 according to the as-built plans. The bridge deck, stringers, and girders are modeled using shell elements; truss members are modeled using frame elements. The bridge has expansion bearings at the abutment 1, pier 2, pier 3, pier 5, and abutment 2; there are fixed bearings at the pier 4. The bridge model’s material properties are based on the construction drawing.
Based on the modal participating mass ratios, the first three longitudinal modes have been identified successfully through the numerical mode analysis.
Figure 12a is the first mode of longitudinal vibration,
Figure 12b is the second mode of longitudinal vibration, and
Figure 12c is the third mode of longitudinal vibration. According to the identified mode shapes, there exist large longitudinal displacements at the end bearings for each mode, and they will directly cause the dynamic rotation at the rocker bearings at the abutment 2. The bridge’s finite element model theoretically proved that monitoring the expansion bearings can identify the bridge’s natural frequencies in the longitudinal direction. The longitudinal frequencies can be separated based on the end bearings’ movement. The comparison between the experimental and analytical results are presented in the following section.
To quantitatively determine the reliability of the natural frequencies obtained from the tiltmeter reading, it was compared with the bridge’s numerical model, and the results are summarized in
Table 1. The difference between the field test and the numerical analysis was 5.30% for the 1st mode, 2.81% for the 2nd mode, and 3.16% for the 3rd mode. The use of the FBG tiltmeter makes it possible to acquire the dynamic frequencies with high reliability.
6. Conclusions
The tiltmeter reading can extract the primary natural frequencies. This study introduced a new approach to identify long-span steel girder bridge frequencies in the longitudinal direction based on monitoring the dynamic rotational angle at the expansion bearing. The identified frequencies have been compared with the numerical analysis, demonstrating the effectiveness of using a tiltmeter for dynamic feature identification. The analytical and experimental results showed a very strong agreement with a maximum difference of 5.3%. Compared with the accelerometer, the FBG tiltmeter can not only capture the bridge natural frequencies, but also provide the rotational angle.
This study only installed the FBG tiltmeters on the rocker bearings, and it can monitor the swaying movement of the bottom roller. There also exists a rotation of the bearing’s top plate connected to the bridge girder. Future research should install additional tiltmeters on the bridge deck or girder to monitor this rotation which can help to identify the bridge’s vertical dynamic movement, and provide accurate responses of the structure`s bearing. Installing the tiltmeters only on the roller (swaying part of the motion) is not enough, and there should be sensors mounted for measuring the rotation of the deck also. Additionally, the effect of input excitation on the identification results such as road roughness, multiple truck interactions, etc. should also be studied in the next phase of the study.
Acknowledgments
Support for this research by the Alaska University Transportation Center Grant No. 510015 is gratefully acknowledged. The writers also wish to acknowledge the support from the Alaska Department of Transportation and Public Facilities, University of Alaska Fairbanks, Chandler Monitoring System Inc., and Micron Optic, Inc.
Author Contributions
Feng Xiao and J. Leroy Hulsey conceived and designed the experiments; Feng Xiao and J. Leroy Hulsey performed the experiments; Feng Xiao and Gang S. Chen analyzed the data; J. Leroy Hulsey, Gang S. Chen and Feng Xiao contributed analysis tools; Feng Xiao and Gang S. Chen wrote the paper.
Conflicts of Interest
The authors declare no conflict of interest.
References
- Fan, W.; Qiao, P. Vibration-based damage identification methods: A review and comparative study. Struct. Health Monit. 2011, 10, 83–111. [Google Scholar] [CrossRef]
- Li, Y.; Cai, C.S.; Liu, Y.; Chen, Y.; Liu, J. Dynamic analysis of a large span specially shaped hybrid girder bridge with concrete-filled steel tube arches. Eng. Struct. 2016, 106, 243–260. [Google Scholar] [CrossRef]
- Bedon, C.; Morassi, A. Dynamic testing and parameter identification of a base-isolated bridge. Eng. Struct. 2014, 60, 85–99. [Google Scholar] [CrossRef]
- Xing, S.; Halling, M.W.; Barr, P.J. Delamination detection of reinforced concrete decks using modal identification. J. Sens. 2012, 2012, 156583. [Google Scholar] [CrossRef]
- Talebinejad, I.; Fischer, C.; Ansari, F. Serially multiplexed FBG accelerometer for structural health monitoring of bridges. Smart Struct. Syst. 2009, 5, 345–355. [Google Scholar] [CrossRef]
- Lee, Y.G.; Kim, D.H.; Kim, C.G. Performance of a single reflective grating-based fiber optic accelerometer. Meas. Sci. Technol. 2012, 23, 045101. [Google Scholar] [CrossRef]
- Huffman, J.T.; Xiao, F.; Chen, G.; Hulsey, J.L. Detection of soil-abutment interaction by monitoring bridge response using vehicle excitation. J. Civ. Struct. Health Monit. 2015, 5, 389–395. [Google Scholar] [CrossRef]
- Caglayan, B.O.; Ozakgul, K.; Tezer, O. Assessment of a concrete arch bridge using static and dynamic load tests. Struct. Eng. Mech. 2012, 41, 83–94. [Google Scholar] [CrossRef]
- Xu, M.; Shen, Q.; Liu, Y.; Ding, H.; Yang, G.; Ma, Q. Large-scale bridge structural health monitoring system based on smart sensor networks. In Proceedings of the ICTIS 2011: Multimodal Approach to Sustained Transportation System Development: Information, Technology, Implementation, Wuhan, China, 30 June–2 July 2011; pp. 942–948. [Google Scholar]
- Park, J.W.; Sim, S.H.; Jung, H.J. Development of a wireless displacement measurement system using acceleration responses. Sensors 2013, 13, 8377–8392. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Kang, L.H.; Kim, D.K.; Han, J.H. Estimation of dynamic structural displacements using fiber Bragg grating strain sensors. J. Sound Vib. 2007, 305, 534–542. [Google Scholar] [CrossRef]
- Wu, B.; Lu, H.; Chen, B.; Gao, Z. Study on Finite Element Model Updating in Highway Bridge Static Loading Test Using Spatially-Distributed Optical Fiber Sensors. Sensors 2017, 7, 1657. [Google Scholar]
- Moschas, F.; Stiros, S. Measurement of the dynamic displacements and of the modal frequencies of a short-span pedestrian bridge using GPS and an accelerometer. Eng. Struct. 2011, 33, 10–17. [Google Scholar] [CrossRef]
- Lee, J.J.; Ho, H.N.; Lee, J.H. A vision-based dynamic rotational angle measurement system for large civil structures. Sensors 2012, 12, 7326–7336. [Google Scholar] [CrossRef] [PubMed]
- Fukuda, Y.; Feng, M.Q.; Narita, Y.; Kaneko, S.I.; Tanaka, T. Vision-based displacement sensor for monitoring dynamic response using robust object search algorithm. IEEE Sens. J. 2013, 13, 4725–4732. [Google Scholar] [CrossRef]
- Erol, B. Evaluation of high-precision sensors in structural monitoring. Sensors 2010, 10, 10803–10827. [Google Scholar] [CrossRef] [PubMed]
- Park, Y.S.; Agbayani, J.A.; Lee, J.H.; Lee, J.J. Rotational angle measurement of bridge support using image processing techniques. J. Sens. 2016, 2016, 1923934. [Google Scholar] [CrossRef]
- Dong, Y.; Song, R.; Liu, H. Bridges Structural Health Monitoring and Deterioration Detection-Synthesis of Knowledge and Technology; Final Report; Alaska University Transportation Center: Fairbanks, AK, USA, 2010. [Google Scholar]
- Zhou, J.; Li, X.; Xia, R.; Yang, J.; Zhang, H. Health Monitoring and Evaluation of Long-Span Bridges Based on Sensing and Data Analysis: A Survey. Sensors 2017, 17, 603. [Google Scholar] [CrossRef] [PubMed]
- Helmi, K.; Taylor, T.; Zarafshan, A.; Ansari, F. Reference free method for real time monitoring of bridge deflections. Eng. Struct. 2015, 103, 116–124. [Google Scholar] [CrossRef]
- Norouzi, M.; Cormier, K.; Aydemir, M.; Hashtroodi, S.; Hunt, V.; Nims, D.; Helmicki, A. Measuring Displacement of Tall Concrete Columns During Construction: Jeremiah Morrow Bridge, Interstate 71, Lebanon, Ohio. Transp. Res. Rec. J. Transp. Res. Board 2014, 2408, 97–106. [Google Scholar] [CrossRef]
- Kim, W.; Laman, J.A. Seven-year field monitoring of four integral abutment bridges. J. Perform. Constr. Facil. 2011, 26, 54–64. [Google Scholar] [CrossRef]
- Xiao, F.; Hulsey, J.L.; Balasubramanian, R. Fiber optic health monitoring and temperature behavior of bridge in cold region. Struct. Control Health Monit. 2017, 24, e2020. [Google Scholar] [CrossRef]
- FBG KOREA, Inc. FBG Tiltmeter. Available online: http://www.fbg.co.kr/eng/bbs/board.php?bo_table=fbgp04&wr_id=1 (accessed on 24 August 2017).
- Ansari, F. Fiber optic sensors for structural health monitoring of civil infrastructure systems. Struct. Health Monit. Civ. Infrastruct. Syst. 2009, 4, 103–110. [Google Scholar]
- Ye, X.W.; Su, Y.H.; Han, J.P. Structural health monitoring of civil infrastructure using optical fiber sensing technology: A comprehensive review. Sci. World J. 2014, 2014, 652329. [Google Scholar] [CrossRef] [PubMed]
- Alan, V.O.; Ronald, W.S.; John, R. Discrete-Time Signal Processing, 2nd ed.; Prentice Hall: Upper Saddle River, NJ, USA, 1999. [Google Scholar]
- Rato, R.T.; Ortigueira, M.D.; Batista, A.G. On the HHT, its problems, and some solutions. Mech. Syst. Signal Process. 2008, 22, 1374–1394. [Google Scholar] [CrossRef]
- Huang, N.E.; Shen, Z.; Long, S.R.; Wu, M.C.; Shih, H.H.; Zheng, Q.; Yen, N.C.; Tung, C.C.; Liu, H.H. The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis. Proc. R. Soc. Lond. A Math. Phys. Eng. Sci. 1998, 454, 903–995. [Google Scholar] [CrossRef]
- Shi, W.X.; Shang, J.Z.; Lu, X.L. Modal identification of Shanghai World Financial Center both from free and ambient vibration response. Eng. Struct. 2012, 36, 14–26. [Google Scholar] [CrossRef]
- Wang, Z.C.; Chen, G. Analytical mode decomposition with Hilbert transform for modal parameter identification of buildings under ambient vibration. Eng. Struct. 2014, 59, 173–184. [Google Scholar] [CrossRef]
- Chen, J.; Xu, Y.L.; Zhang, R.C. Modal parameter identification of Tsing Ma suspension bridge under Typhoon Victor: EMD-HT method. J. Wind Eng. Ind. Aerodyn. 2004, 92, 805–827. [Google Scholar] [CrossRef]
© 2017 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).