1. Introduction
Extreme events such as earthquakes can cause severe damage to structures, and an event can occur at any time during the structure’s operating service lifetime [
1,
2]. For example, the 2011 Christchurch earthquake caused ~11 to 15 billion US dollars in economic losses [
3,
4]. Another example is the 2011 Tohoku earthquake, which caused nearly 30,000 casualties [
2] and ~195 billion US dollars in losses. Similarly, the 2010 Haiti and 2008 Wenchuan earthquakes also led to massive casualties (i.e., 27,000 [
5] and 69,000 [
6], respectively). Hence, the assessment of structural performance, before, during, and after an extreme event, is critical for ensuring their safe operations and resiliency to natural hazards such as earthquakes.
In that regard, structural health monitoring (SHM) aims to achieve this goal by integrating sensors, structural response measurements, and algorithms to detect and localize damage. Damage information can not only help inform decisions for repairs but also facilitate urban planning and post-earthquake emergency rescue efforts [
7]. Maintaining civil infrastructure systems’ optimal performance is necessary for preventing structural failure, which can reduce the number of casualties and property losses incurred following an extreme event.
SHM using vibration measurements have seen tremendous advancements over the last few decades [
8]. The principle of modal analysis is that modal parameters are functions of the physical properties of the structure (i.e., mass, damping, and stiffness), which can be determined using acceleration response time history measurements [
9]. Peeters and De Roeck [
10] reviewed system identification methods for operational modal analysis, such as using the complex mode identification function [
11], the instrumental-variable method [
12], and stochastic subspace identification [
13,
14], among others, and their accuracies in terms of identifying modal parameters were compared by means of a Monte-Carlo analysis. Hearn et al. [
15] demonstrated a structural inspection method based on modal analysis of vibration response in experiments on a welded steel frame and on wire rope. Lam et al. [
16] conducted a full-scale ambient vibration test of a 14-story reinforced concrete building, where six horizontal vibration modes were identified with Bayesian modal analysis and Markov Chain Monte Carlo-based model updating and when using only limited numbers of sensor measurements. Worden and Green [
17] proposed a machine learning approach for nonlinear modal analysis and demonstrated their applicability using a number of case studies based on both simulated and experimental acceleration data. Mirshafiei et al. [
18] introduced an approach for seismic assessment based on experimental modal analysis using acceleration and velocity measurements. The technique was verified using four buildings located in Montreal, Canada.
On the other hand, displacement is another particularly important parameter when nonlinear behavior and permanent deformations occur [
19]. Traditionally, displacements are measured using linear potentiometers and linear variable differential transducers (LVDTs). However, they measure relative displacements and require a fixed reference point, which is often unavailable. One solution is to construct a scaffold underneath the point of interest and use the ground as a stationary reference. This is often impractical because of costs and considerable time required for field assembly and disassembly of the scaffold [
20]. It should be mentioned that acceleration data can be double integrated to obtain displacements. Unfortunately, the results are typically erroneous, with large drifts observed. Frequency-domain integration methods can also be used, but errors are introduced due to the low-cut-off frequency, and multiple attempts are needed to identify an optimal frequency range [
21]. Despite these limitations, displacement and acceleration data can be used to compute damage indices for SHM purposes [
15,
22].
In fact, a variety of different monitoring systems have been implemented in large-scale structures. In the case of bridges, although tethered monitoring systems have been widely used in the past [
23], the field is transitioning towards the use of wireless sensor networks so as to avoid the difficulties, high-costs, and degradation issues associated with cables [
24,
25,
26,
27]. Wireless sensors’ node-to-node communications in this application are suitable since they operate in an open space environment. Different types of sensors can often be interfaced with these wireless sensor nodes to realize both acceleration, displacement, temperature, and wind speed monitoring, among many other parameters. However, wireless signals can be obstructed by walls and partitions in a building, causing signal reliability issues [
28,
29], which make their use in high-rises more difficult. Therefore, there remains a need to develop rapid, low-cost, and convenient monitoring techniques for structural response monitoring and rapid damage evaluation.
Recent advances in smartphones offer a unique opportunity for SHM [
30], since these devices host a suite of different sensors, multi-modal wireless communication capabilities, and computing power, all packaged in a small form factor. In fact, smartphones have been used for various applications, such as for human monitoring [
31], movement recognition [
32], and car accident detection [
33]. Yu and Zhao [
34] proposed the concept for SHM using smartphones in civil infrastructures, and they have also been investigated, in the laboratory and field, for SHM of civil infrastructure systems [
34,
35,
36,
37,
38,
39,
40,
41,
42,
43,
44,
45,
46,
47,
48,
49,
50,
51,
52,
53,
54]. Höpfner and Morgenthal [
35,
36] studied the possibilities and limitations of using smartphones for the measurement of mechanical oscillations and transient structural displacements. Reilly et al. [
38] developed a mobile app,
iShake, to use smartphones as seismographs to measure and then transmit ground motion data to a central server. The accuracy of the built-in sensors was validated through shaking table tests. Sharma and Gupta [
39] measured various field parameters, including absolute location with GPS (in terms of latitude and longitude), distance, area, and perimeter, using an Android app called
MAP MEASURE. Cimellaro et al. [
40] proposed a rapid building damage assessment system using mobile phone technology, which can collect photos of damaged houses with the help of residents or volunteers situated in disaster-struck areas. Feng et al. [
42] and Ozer et al. [
43] developed a crowdsourcing platform for SHM and a post-event damage assessment app. Min et al. [
44] developed a smartphone application called
RIRO to measure absolute dynamic displacements by processing image frames of a color-patterned target. Oraczewski and Staszewski [
45] developed a platform for crack detection based on nonlinear acoustics and validated the system using a simple example of fatigue crack detection in aluminum plates. Ozer and Feng [
46] proposed a modal identification strategy that integrated spatial and temporally sparse SHM data collected from smartphones. In addition, Ozer and Feng [
47] also proposed a coordinate system transformation procedure to correct the sensor signal caused by the improper positioning of smartphone sensors, followed by its validation using impact hammer testing conducted on a two-story laboratory structural model and a real bridge. Xie et al. [
54] conducted a single-layer frame test and the frame responses were measured by using smartphones.
It is clear from the aforementioned studies that SHM research based on smartphones has been developing at a rapid pace with contributions from various countries. These studies were mostly validated in the laboratory, and a significant amount of attention was on bridge monitoring, ground motion monitoring, measurement uncertainties, and post-disaster investigation. Their applications for SHM and damage detection during an event (e.g., an earthquake), particularly in multi-story buildings and frames, remains limited and is a main focus of this study. Moreover, the displacement obtained by smartphone acceleration signals in multi-story buildings has not been studied previously.
In this work, the objective was to assess and validate the use of smartphones in relation to the monitoring of artificial damage states, by measuring acceleration and inter-story displacements, in a three-story steel frame structure subjected to shaking table-induced earthquake excitations. This paper begins with a discussion of the experimental details, including the test structure, test plan, and damage cases. Second, and upon conducting the tests, smartphone monitoring capabilities were validated by comparing measured responses (of undamaged and two damaged cases) to those obtained by conventional sensors. Third, wavelet packet analysis was employed for damage detection and for computing a suitable damage index based on energy ratio variation difference (ERVD). Lastly, as further validation, frequency-domain integration converted raw acceleration signals to displacements, which was also used for comparison purposes.
6. Conclusions
In this paper, shaking table tests of a three-story steel frame, instrumented with conventional transducers and smartphones equipped to measure acceleration and inter-story displacement, were conducted. Smartphones preloaded with Orion-CC and D-Viewer were employed to enable these devices to record acceleration and displacement (i.e., using video recordings). After exciting the undamaged structure using the El-Centro earthquake ground motion record, damage was introduced to the system. Here, damaged case #1 was introduced by reducing the column cross-sectional area, and damage case #2 was introduced by removing a rigid beam in the first floor of the system to engage rotary dampers installed at the beam–column connections. First, this study compared smartphone acceleration and inter-story displacement measurements with data obtained using tethered accelerometers and laser displacement sensors. The acceleration response compared fairly well, as did the inter-story displacement measurements; however, more significant errors in inter-story displacements were observed for data corresponding to the third story, especially in damaged case #2. This could have been due to experimental errors caused by vibrations of the LDS mounting frame, significant damage to the column-beam joint in the first story, measurement errors from smartphones, and the minor displacement in the third story. Second, wavelet packet analysis was employed for the analysis of acceleration data, and a damage index based on ERVD was computed for the different cases. The results demonstrated the feasibility of performing damage detection using smartphones. Last, to further validate the quality of smartphone measurements, inter-story displacement was computed by means of frequency-domain integration of the acceleration measurements. The cut-off frequency band was selected according to the first, second, and third modal frequencies identified for comparing the integration accuracies. The results showed that the integrated displacements compared well with the measured displacement when the low cut-off frequency was based on the first modal frequency. The quality of integrated displacements (i.e., using smartphone and conventional accelerometer data) compared well with one another.
Overall, this study demonstrated the feasibility of using smartphones for the dynamic monitoring of structural systems (e.g., frames) subjected to earthquake excitations. One advantage of using smartphones is that smartphones house a diverse suite of sensors in one compact form factor. While displacement and acceleration data were collected using different smartphones in this study, in principle, both apps could be installed on a single smartphone where collocated acceleration and displacement data could be acquired, which would be convenient. In contrast, conventional instrumentation strategies would require two separate sensors (as in the case of using an accelerometer and an LDS) to acquire these two different sets of data. More realistic experiments for the monitoring of buildings’ responses will be conducted in the future.