1. Introduction
Several ongoing research projects are focused on the mitigation of seismic risk. One of these is the Kairos project [
1], which is aimed to maintain and increase the resilience and sustainability of communities against earthquakes. One research area in the Kairos project is the development of advanced numerical tools to assess the seismic risk of structures. The current capacity of computers, combined with advanced statistical approaches, means that new probabilistic frameworks can be developed for estimating the stochastic nonlinear response of civil structures submitted to seismic actions. Vargas-Alzate et al. (2019) [
2] presented the development through implementation of software useful for estimating the stochastic response of multi degree of freedom systems (MDoF) systems by considering uncertainties in the seismic hazard and in the main features of the structures. Uncertainties were considered in relation to the geometry of the structure, the mechanical properties of the materials and the seismic action, amongst many other variables. In that study, thousands of non-linear dynamic analyses (NLDA) were executed using thousands of structural models and earthquake records. The procedure for combining the structural models and the earthquake records was based on the Latin hypercube and Monte Carlo sampling methods.
From the NLDA results presented in Vargas-Alzate et al. 2019 [
2], a simplified methodology was proposed to estimate maximum inter-story drifts ratios (MIDR), based on the equal displacement approximation (EDA) rule. The numerical tools developed in Vargas-Alzate et al. (2019) [
2] were intended to estimate seismic damage via cloud analysis. However, in the present study, these tools have been adapted to estimate expected seismic damage based on stripe analysis [
3]. To achieve this correctly, it is fundamental to have enough information to characterize the seismic hazard and the exposure. The finer the characterization of these variables, the more precise the quantification of seismic risk.
The main factors affecting the estimation of seismic risk are hazard, exposure and vulnerability. Hazard refers to seismic actions and their occurrence probabilities. Exposure concerns structures, facilities and properties in the stricken area. Vulnerability is related to susceptibility to damage of exposed goods. Vulnerability connects hazard and exposure to obtain risk, that is, expected damage and cost. Regarding seismic hazard, probabilistic seismic hazard analysis (PSHA) is useful to calculate not only the expected intensity levels but also the uncertainties inherent in the ground motions produced by earthquakes [
4].
Concerning the characterization of exposure, current geographic information systems (GIS) tools, combined with ever-improving databases stored by civil authorities, can be used to develop enhanced probabilistic numerical structural models. Quantification of hazard and exposure is not straightforward, since these factors are highly random [
5]. In addition, there are several methodologies for calculating seismic vulnerability that consider hazard and exposure in different ways. For instance, vulnerability-index-based methods (VIM) [
6,
7] and capacity spectrum-based methods (CSM) [
8] are the most used to estimate seismic vulnerability in urban environments, from a probabilistic perspective. Borzi et al. [
9] developed models to quantify seismic vulnerabilities by considering uncertainties for reinforced concrete structures. This approach was focused on the CSM and has been adapted to assess masonry structures [
10]. VIM and CSM were identified within the Risk-UE project [
11,
12] as level 1 method (LM1) and level 2 method (LM2), respectively. In the Risk-UE project, seismic risk was estimated for several European cities using both methods. Barcelona was one of the cities. In this study, a new method is presented for estimating the expected seismic damage of buildings at urban scale, considering the probabilistic nature of the hazard, the exposure and the nonlinear dynamic response. Specifically, the hazard is considered by means of actual earthquake records and the exposure by means of stochastic nonlinear models. The seismic response of these models is obtained using the NLDA, which is a new approach compared to LM1 and LM2. Moreover, seismic damage is quantified from the classical damage index of Park and Ang. A similar approach to develop vulnerability curves for Portugal using the MIDR as a damage indicator can be found in Silva et al. [
13]. The approach presented herein will be called the Level 3 method (LM3). As a testbed, a new estimation of seismic damage is performed for the reinforced concrete (RC), buildings of
the Eixample district of Barcelona.
3. Level 2 Method, LM2
Lantada et al. (2010) [
6] and Irizarry et al. (2011) [
8] estimated the seismic risk of Barcelona using LM1 and LM2 respectively, which were developed in the Risk-UE project. A comparison between these approaches can be found in Lantada et al. (2009) [
7]. In LM2, RC buildings of Barcelona were classified into three types: low-, mid- and high-rise, called RCL, RCM and RCH, respectively. RCL included buildings with 1 to 3 stories, RCM 4 to 6 and RCH more than 6 stories. Only one specific building was modeled for each height range, assuming that it was representative of all the buildings in the category. Thus, buildings were characterized by bilinear capacity spectra.
Figure 12a shows the three bilinear capacity spectra, which represent the mean seismic behavior of these structural typologies.
According to LM2, fragility curves can be obtained from the bilinear capacity spectra. For a specific damage state
DSK, the fragility function provides the probability that this damage state is attained or exceeded. A detailed description of the calculation of fragility functions in LM2 can be found in Milutinoviç and Trendafiloski (2003) [
28]. Similar to the damage state definitions presented in
Table 2, LM2 proposes 4 non-null damage states identified as
slight (
DS1),
moderate (
DS2),
severe (
DS3) and
complete (
DS4). Notice that the
complete damage state in LM2 groups
DS4 (
Complete) and
DS5 (
Collapse) from
Table 2.
Figure 12b,c, and d depict the fragility functions for RCL, RCM and RCH, respectively, for the four
non-null damage states. Recall that the fragility function for the
null (
DS0) damage state is equal to one.
The probability of occurrence of each
DSK can be obtained from the fragility curves, given a spectral displacement value [
28]. For a specific earthquake scenario, there are several methods to obtain the expected spectral displacement, given a capacity spectrum and a response spectrum function. The expected spectral displacement is generally known as the performance point,
pp. The most simplified assumption, and one of the most used in practice, is to estimate the
pp based on the equal displacement approximation (EDA) rule. EDA is a well-known empirical rule for the assessment of the non-linear behavior of structures exposed to strong ground motions. This procedure states that the predicted inelastic displacement response of oscillators is often very similar to the predicted elastic displacement response of oscillators with the same period (ATC-40) [
29]. In this study, the EDA rule is used to estimate the
pp for the capacity spectra of
Figure 12a and the UHS of
Figure 9b. Once the
pp is known, the probability of occurrence of
DSK, represented in the fragility curves, can be obtained.
Tables S1–S5 found in the Supplementary also show the probabilities of occurrence of each
DSK for the return periods presented in
Figure 9 and for the structural typologies RCL, RCM and RCH. Note that subscript
T, which stands for building type in Equation (4), has been omitted when referring to the probabilities of
DSK in LM2.
4. Comparison of the Results
In this section, the results obtained with LM2 and LM3 are compared and discussed. However, in LM2, the structural typology classification brings together buildings with different numbers of stories. Therefore, to compare both methods, the following is necessary. (i) The probabilities of the
DSK obtained with LM3 must be grouped in terms of number of stories. Hence,
RC1,
RC2 and
RC3 will be aggregated so that the results are equivalent to those obtained for the RCL class in LM2. This grouping should be performed for RCM and RCH as well. (ii) Complete (
DS4) and collapse (
DS5) damage states in LM3 should be aggregated to make the results compatible with those corresponding to complete (
DS4) damage state of LM2. In the following, this will be referred to as LM3*, whenever this grouping is made.
Figure 13 shows comparisons of the probabilities of occurrence of
DSK, named
, for the UHS presented in
Figure 9b by using LM2 ((a), (c) and (e), left side) and LM3* ((b), (d) and (f), right side). Again, subscript
T has been omitted in reference to the probabilities of the
DSK in LM3*.
The results depicted in
Figure 13 can also be represented and spatially distributed building by building using a GIS. For instance,
Figure 14 shows the probability of occurrence of the damage state moderate,
for the return period of 475 years by considering the LM3.
Figure 13a,b (first line) shows that the probability of the complete damage state in low-rise structures,
, is always higher in LM3*. In these structures, the probability of collapse increases because of the low redundancy level. That is, the fewer the number of nodes in the structure, the fewer the number of failure modes. Therefore, the beginning of plasticization can quickly trigger the collapse of the structure. Note that
strongly affects the scenarios of victims and the economic costs, which in turn are crucial to the development of strategies for earthquake risk assessments, prevention and management.
From the probabilities presented in
Figure 13, the mean damage grade,
DSm, can be obtained according to Equation (4).
Figure 15 depicts the evolution of
DSm as a function of the return period by using both LM2 and LM3* for RCL, RCM and RCH building classes.
The above indicates that, on average, the LM2 simplified method provides realistic results. However, it does not reveal, for instance, the differences between the expected damage in a six-story and a twelve-story building. LM3 has better accuracy and resolution and should therefore be preferred.
5. Discussion and Conclusions
A principal issue in seismic risk assessments concerns the capacity of civil structures to withstand the strong ground motions produced by earthquakes. When these ground motions produce catastrophic events, the resilience and sustainability of affected communities are stretched and compromised [
1]. Note that a significant issue for global economic stability concerns the resilience of civil structures, since increasing globalization is causing a redistribution of seismic risk. This means that areas without seismic hazards or with low-seismic risk will be affected if they are economically connected to areas where the seismic risk is high. This is another reason why the estimation and mitigation of seismic risk must be a worldwide effort.
Advanced knowledge of the expected seismic behavior of civil structures will contribute to correct quantification, and indeed to the mitigation of seismic risk. In this respect, the current and increasing capacity of modern computers means that a tremendous amount of numerical analyses can be performed that only a few years ago were costly and time-consuming. This enhanced capability of computer technology allows consideration of the non-linear time history response of sophisticated structural models and the uncertainties related to a number of input variables. A couple of decades ago, this kind of structural analysis was unaffordable, even for a single model of a building. Along with these technological advances, conceptual bases, probabilistic methods and programming tools have been developed to tackle the nonlinear stochastic response of a structure. These advanced tools will contribute to the planning of optimal strategies for reducing seismic risk. In this study, a new method for estimating the probabilistic seismic damage of structures at urban scale has been presented (LM3). In this method, the seismic hazard is characterized by means of actual earthquake records and the exposure by using MDoF systems. The results are compared with those obtained using LM2, which is a simplified method for assessing expected seismic damage of structures.
The main differences between LM2 and LM3 are in the characterization of seismic actions (hazard) and buildings (exposure). In LM2, seismic actions are characterized by response spectra and buildings are defined by means of capacity spectra. In LM3, comprehensive acceleration time histories (earthquake records) and realistic structural models are used. In LM2, the expected seismic response of a structure is obtained by means of the EDA rule, which crosses the capacity and response spectra. In LM3 the expected seismic response is calculated by means of the NLDA. The results obtained with both methods, LM2 and LM3, were compared and presented in
Section 4. Several conclusions can be drawn from these comparisons. For instance, for low return periods (31 and 225 years), the expected mean damage states,
DSm, are similar with both methods in RCM and RCH structures. In RCL structures,
DSm tends to be higher when the LM2 method is used. This proves that for RCL structures, LM2 is more conservative than LM3*. In mid-rise structures,
DSm tends to be lower when the LM3* method is used. Conversely, in high-rise structures,
DSm tends to be slighter when LM3* is used. This fact can be attributed to the participation of higher modes as well as to the nonlinear response of the structure, which are considered in a more exhaustive manner in LM3. Another factor that may have a significant impact on this increment is that LM3 contemplates p-delta effects. In any case, the differences between LM2 and LM3* for RCM and RCH are lower than those observed in the analysis of RCL structures.
In LM2, related typologies are essentially defined through capacity spectra. Therefore, it would be interesting to compare the capacity spectra obtained with both methods.
Figure 16 presents a comparison between the capacity spectra obtained with models generated in this study and those proposed in LM2 for Barcelona. A total of 1400 capacity spectra are obtained, 100 for each structural typology, as in the LM3 calculations.
Figure 16 also shows the mean capacity spectra, after grouping the generated models as in LM2. It can be seen that these mean curves are similar to those originally proposed for Barcelona, except for RCH structures. In the case of RCL structures (see
Figure 16a), the fundamental period associated with the mean capacity spectrum is lower than the one observed in LM2 (blue line). This may be because in LM3 modeling, for the upmost story, gravity loads are one third of those considered for intermediate stories. In low structures, this reduction significantly decreases the fundamental period of the models. As the EDA rule is applied to estimate the performance points, which in turn will be used to define the probabilities of each damage state, the elastic part of the capacity spectra is fundamental to perform a good estimation of the seismic response. Moreover, due to the low yielding point assigned to the capacity spectrum in LM2, the mean damage state for low performance points is higher than the one obtained with LM3. These aspects could explain the differences observed in
Figure 13 when the LM2 and LM3* results are compared for RCL buildings. In the case of RCM structures, the differences between the capacity spectra obtained with both methods are insignificant (at least in the elastic part). This is reflected in
Figure 13 when similar estimations are provided by both approaches (LM2 and LM3*). In the case of RCH structures, the mean capacity spectrum differs considerably from that proposed in LM2. Interestingly, both approaches (LM2 and LM3*) provide similar estimations of the
DSm as can be observed in
Figure 13. In any case,
Figure 16c presents the mean capacity spectra (green line) that provide a better approximation to the LM2 capacity spectra for RCH structures. A comparison between all the capacity spectra using the LM3 approach can be seen in
Figure 16d. This figure reflects the high scattering inherent to the exposure.
In LM2, structures with over six stories are grouped as RCH, which may be too general. In this respect, LM3 increases the resolution of the results in estimations of seismic damage. The cost of repairing a 14-story structure can be much higher than the cost of repairing a 7-story one. For this reason, it is important to develop and characterize new typologies that represent the exposure of an urban environment in a more realistic, exhaustive manner. These new typologies must be assessed considering the current state of the art regarding the modeling of structures and the characterization of seismic action. All these aspects have been considered in the development of LM3.
LM3 also improves the accuracy of the results as it considers the contribution of higher modes in the non-linear dynamic response of structures without simplifying the behavior of MDoF through single degree of freedom systems. The method presented herein, LM3, can be extended to other structural typologies. Thus, structural typologies related to steel and masonry can be redefined and recalculated considering the aspects presented in this study. This effort should be made to obtain a better estimation of the expected seismic damage and risk at an urban level.
Regarding the reliability of the probabilities of the
DSK obtained with LM3 and presented in this study, several simulations have been repeated. The average error between results of different simulations is approximately 2%.
AvSa has been used to scale the earthquake records to the UHS. It would be of interest to review whether other intensity measures reduce this error. Pinzon et al. (2019) [
30] recently analyzed the correlation between several IMs and the MIDR. They found that there are IMs which tend to be strongly correlated with the MIDR than, for instance, the more traditional IM spectral acceleration at the first-mode period of the structure,
Sa(
T1). Moreover, the results are sensitive to the definition of damage limits presented in
Table 2. It will be of interest to analyze the damage observed in real structures after an earthquake, to calibrate and improve these limits.
Currently, the simulation scheme allows for obtaining the probabilities of DSK by considering several structural typologies and earthquake records, the latter conditioned to a single UHS. However, parallelization tools could be used in such a way that several return periods can be assessed simultaneously.
In the current simulation scheme, participation of non-structural elements was not included, since 2D models are being simulated. Hence, the infills that affect the dynamic behavior of the structure are mainly those located at the facades. In 2D modeling approaches, one should look for a frame that characterizes the structure under study in the best possible way. Thus, considering the infills in this singular frame could overestimate the contribution to the global stiffness of these elements. Moreover, as this contribution to global stiffness disappears at low deformation values of the structure and generally makes the structure less vulnerable, the calculation was performed without considering the contribution of these elements. However, further research will be conducted to perform the calculation presented herein using 3D models. This approach will take into consideration not only the participation of non-structural elements but also torsion, which is a key issue in assessments of a structure’s seismic behavior.
Finally, the results presented here will be open access and can be downloaded from a repository administrated by the Polytechnic University of Catalonia (UPC), the host institution of the KaIROS project. Link to the repository:
http://kairoseq.upc.edu.