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Article

The Role of Redundancy of Infrastructures on the Seismic Resilience (SR) of Sustainable Communities

by
Davide Forcellini
Faculty of Civil and Environmental Engineering, University of San Marino, via Consiglio dei 60, n. 99, 47899 Serravalle, San Marino
Sustainability 2023, 15(15), 11849; https://doi.org/10.3390/su151511849
Submission received: 5 July 2023 / Revised: 30 July 2023 / Accepted: 31 July 2023 / Published: 1 August 2023
(This article belongs to the Special Issue Reshaping Infrastructure for a Sustainable and Resilient Future)

Abstract

:
Infrastructures are fundamental links in sustainable communities, and they need to remain at a level of functionality during and after natural events. In particular, assessing the seismic resilience of infrastructures has become an interesting topic in earthquake engineering. The estimation of indirect losses due to seismic events is still a topic under discussion, especially for infrastructures. In this regard, the paper focused on including the level of redundancy inside an analytical formulation of the seismic resilience (SR). The main idea is to explore the possibility of alternative infrastructures that allow the circulation of services and people when the flow on the original infrastructure is interrupted or reduced. This goal is fundamental for preserving the resilience for sustainable communities. Therefore, the proposed formulation consists of considering the reduction in losses when the infrastructure is redundant by introducing the concept of the level of redundancy. In particular, indirect costs were herein defined with a new formulation that includes the level of redundancy inside the calculation of SR. The paper presented a case study that implements the formulation with the aim to demonstrate the efficiency of the proposed methodology. Several levels of infrastructural redundancy have been applied in the calculation of the SR of an infrastructure subjected to an ensemble of 100 seismic motions in order to scope the role of redundancy in improving the SR of the system.

1. Introduction

The definition of losses after the impacts of natural hazards is fundamental in defining the resilience of infrastructures that is a fundamental issue for sustainable communities. In this regard, many methodologies consider the calculation of the direct losses, such as the physical damages without accounting for the losses associated with traffic flow. As shown in [1], realistic assessments of the losses need to include both direct and indirect costs. Adey et al. [2], defined direct costs as those losses that the owners sustain to recover the infrastructure. For example, they may consist of the material and labor costs due to recovering procedures (e.g., deck replacement, column protection, etc.). Indirect costs consists of the losses that the users experience due to the closure of the infrastructure (e.g., travel time and vehicle operating costs). In particular, the main source of indirect losses consists of the network conditions and the preparedness of the community and the surrounding region. In this regard, the most significant indirect losses consist of time delays, interruptions of goods and services, as shown in [3]. In particular, redundancy has several definitions depending on which level is considered. For example, infrastructure redundancy is defined as the chance of connection loss and, thus, it significantly affects the economic losses when travelling is reduced and/or not possible on that particular infrastructure [3].
On the other side, structural redundancy is defined by the ASCE standard for Mitigation of Disproportionate Collapse Potential in Buildings and Other Structures, as the availability of alternative load paths that would allow for a load to be transferred from the point(s) of application to the point(s) of resistance in the event of structural compromise of the primary load path by a hazard scenario [4]. Before this, the definition of redundancy was built up to consider the different characteristics of structural systems [5,6,7,8,9]. In this regard, ref. [5] describes the progressive collapse of bridges in the several aspects of analysis and design. Moreover, disproportionate collapses have been discussed in [6], with particular attention to the terminology and procedures. The redundancy of bridges configurations has been described in [7,8,9]. In particular, ref. [7] considered the role of redundancy and robustness in the design and evaluation of European and North American bridges. Considering redundancy of single structures, the alternative load paths may prevent failures since they may allow redistributions of the original forces that the failed components need to carry [10]. In this regard, the vulnerability of bridges is particularly important for the assessment of the indirect losses of infrastructures, and many techniques (e.g., [11,12]) have been proposed in order to ensure their redundancy. As shown in [13], indirect losses need to be estimated by expert judgments by considering the socio-economic consequences on the infrastructures. In particular, ref. [14] estimated indirect losses for highway bridges, while [15] considered that they may range between 5% and 15%.
In addition, ref. [3] showed that the role of interdependency is fundamental in the assessment of the resilience of infrastructures and thus to ensure the sustainability of communities. In particular, redundancy is affected by the level of interdependency between infrastructures, their geographical proximity, or the sharing of their functions and operations. Therefore, there could be interactions between the impacts due to the natural events on the infrastructures and, thus, the assessment of the redundancy is of fundamental importance in the evaluation of the resilience of the various systems. For example, when a disruption or a failure in the main infrastructure occurs, it may compromise the delivery and the transportation of products, services and people on the other interconnected infrastructures. Moreover, because of the level of interconnectivity, the functionality of the linked infrastructure may reduce and be degraded. This may cause problems to the whole community in terms of indirect losses (loss of connectivity and prolongation of time, as discussed in [3]).
In this background, resilience calculation is based on the definition of the Loss Model that consists of calculating the losses due to a natural event, such as earthquakes, floods, fires, etc. In this paper, a new formulation for the Loss Model was proposed to account the role of redundancy over the time in the case of infrastructures subjected to earthquakes. In particular, the possibility to alternative routes that allow to substitute the damaged infrastructure was included in the general formulation that relates the losses to the functionality of the system. It is important to note that [16] proposed the 4R framework that considered the role of four factors: Robustness, Redundancy, Resourcefulness and Rapidity. The loss model particularly depends on two performance criteria: robustness and redundancy. While the effects of robustness in reducing the losses have been investigated by several contributions, the novelty of this paper is to concentrate on the role of redundancy. In particular, ref. [17] considered the loss model at the level of the community, while other studies concentrated on several typologies of infrastructures, such as tunnels [18], HP/HT unburied subsea pipelines [19] and bridges [20]. Apart from earthquake engineering, the quantification of community resilience (CR) has been proposed by few methodologies, such as [21,22]. In particular, indirect losses were assessed by considering the contribution of [23], which proposed two sources: economic costs and losses due to casualties. Furthermore, ref. [24,25,26,27] applied the methodologies to assess indirect costs of natural hazards. In particular, ref. [25] considered the microinsurance for natural disasters in developing countries, ref. [26] investigated role of embodied technical change in cases of natural hazards and [27] discussed how natural disasters may impact a macroeconomic model with endogenous dynamics.
The main novelty of the paper consists in including the level of redundancy inside an analytical formulation of the seismic resilience (SR). The proposed formulation describes the reduction in losses when the network is redundant by introducing the concept of the level of redundancy. The functionality and the losses have been defined with a new formulation that allows to include the level of redundancy inside the calculation of SR. The originality is to include redundancy inside the definition of the indirect losses, that together with the direct losses define the loss model. In order to demonstrate the efficiency of the proposed methodology, the formulation is applied to a case study that compares several levels of infrastructural redundancy by calculating the resilience of the system at 100 seismic motions.
The paper is divided in five sections. The description of the seismic resilience (SR) of infrastructures is presented in Section 2, which introduces the principal variables and parameters considered in the paper. The loss model is detailed in order to introduce the concept of redundancy that is defined and described in detail in Section 3. In particular, a new formulation to describe infrastructure redundancy is proposed in terms of functionality Q and the losses L. A case study is presented in Section 4 in order to demonstrate the efficiency of the proposed formulation to represent the role of redundancy on the SR of infrastructures. Finally, the summary and key conclusions made in the study are discussed in Section 5.

2. Seismic Resilience of Infrastructures

The resilience of infrastructures has been the object of many publications (e.g., [28,29,30,31,32,33,34,35]), being a fundamental property for assessing the vulnerability of an infrastructure. In this regard, sustainable communities are particularly affected by the failure of infrastructures since their economy depends on the state of the infrastructures. Two perspectives can be considered when the resilience of infrastructure is considered. Firstly, resilience may be considered the ability to maintain a certain level of functionality after that an event occurs. In particular, the events may cause disruptions or failure of the infrastructure itself. Therefore, the second definition of resilience takes into consideration the time and resources required to repair or restore a suitable level of functionality. In this regard, when earthquakes are considered, the disruption occurs at one time and, thus, the losses are defined simply as the difference between the original functionality and the functionality after the occurrence of the event. Other natural hazards (e.g., floods or hurricanes) are disruptions potentially last for longer periods of time and, thus, it is not correct to concentrate all the losses on the vertical axes.
Following [21], which introduced the formulation to calculate the resilience of a system, the seismic resilience (SR) is calculated herein calculated by defining two models: the loss model and the recovery model (Figure 1).
S R = T 0 E T 0 E + R T Q t R T d t
where
  • T0E is the time of occurrence of the event E;
  • RT is the repair time due to system for the recovery process;
  • Q(t) is the variation of the functionality over the time: it models the recovery process to reach a new level of functionality.
Both RT and Q(t) describes the process of recovery from the instant when the event occurs until the system has recovered a suitable level of functionality. The recovery process is described with an analytical formulation and the area below the curve first describes the resilience (Formula (1)). The loss model is represented by the reduction in Q at the time of occurrence (see Figure 1). It is worth noting that, herein, the losses are considered equal to the inoperability (1 − (t)). This assumption is a simplification because a more developed relationship between the losses and the inoperability should be defined. Loss model depends on two sources of losses: direct and indirect [3] and, thus, on the definition of the redundancy of infrastructures.
Figure 1. Definition of Seismic Resilience (SR, t = time, L = losses; Tf = time of finishing the repair work; Q = functionality; T0E = time of occurrence of the earthquake).
Figure 1. Definition of Seismic Resilience (SR, t = time, L = losses; Tf = time of finishing the repair work; Q = functionality; T0E = time of occurrence of the earthquake).
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3. Infrastructure Redundancy

As shown in [29,33], redundancy may be considered a dimension on which resilience depends. In particular, Bruneau et al. [16] firstly proposed a R4 framework that considers four properties of resilience: robustness, redundancy, resourcefulness and rapidity. In addition, as described in [36], infrastructure resilience depends on the possibility of maintaining the circulation of services and movements of people, valuable goods and services across the network. Road redundancy consists of being joined, linked and/or fastened together in alternative ways and it becomes fundamental when one or more infrastructures fail. Such property may be called redundancy and it may be considered the possibility to provide alternative paths for traffic, so that service can keep working even in the event of failure. In other words, redundancy means more reliability of the infrastructure by reducing the probability that a failure may take the infrastructure down. However, the level of redundancy is relatively challenging to be defined, since it depends on the ways in which networks are interconnected [37], the topological structure of the network and the flow patterns of traffic. As shown in [38], the definition of the level of redundancy requires measurements of the infrastructure performance in order to estimate the network recovery time and long-term reliability.
The level of redundancy is particularly important in the case of interdependent infrastructures, such as road networks. For example, integrated systems in urban regions, such as metro and bus service network, intermodal transport network, etc. Redundancy is the parameter that measures the level of interconnection between intermodal transportation since the traffic demand may be transferred from different transportation modes in case of a congestion or a disruption occurs in one mode of the network. On the contrary, complexity of the network may be caused by high interdependence among different infrastructures or modal systems, leading to problem of management during the eventuality of damage or failures (e.g., cascading effects). In this regard, the level of redundancy needs detailed estimations, and future research is necessary to examine the methods to define such parameter on the basis of scientific criteria.
A formulation that relates the losses with infrastructure redundancy (Q(r)) is herein proposed with the aim to investigate the role of redundancy on the seismic resilience of infrastructures. In particular, the main idea is that there is a limit r0 above that the functionality of the infrastructure does not vary with the redundancy. For values of redundancy smaller that r0, the losses vary from zero to one (100%) with a crescent function that depends on the exponent c:
Q r = r r 0 1 / c
where
  • r is the level of redundancy (variable);
  • r0 is the limit level of redundancy;
  • c is the exponential that represents the trend of grown of the functionality with the level of redundancy. In particular, for c bigger than 1, there is a grown of the functionality that is bigger than linear, while for 0 < c < 1, the growth is less than linear (Figure 2).
Considering that the losses depend on the functionality as the complement to 1 (100%), Equation (2) may be used to derive the indirect losses due to the lack of redundancy. In other words, redundancy modifies the losses of the infrastructure: the more redundant the infrastructure is, the less the losses become.
L = 1 Q = 1 r r 0 1 / c
In particular, for c bigger than 1, there is a grown of the functionality that is bigger than linear, while for 0 < c < 1, the grown is less than linear (Figure 3). Figure 4 shows the flow chart for the implementation of the level of redundancy inside the framework. In particular, once the redundancy of the infrastructural system is assessed, both the loss model and the recovery model need to consider its role on the SR. Therefore, Equation (2) is implemented inside the framework, respectively, by calculating the losses (Equation (3)) and the trend which describes the recovery process. The calculation of SR is the consequence of such implementation. In the next section, a case study is presented in order to implement Equation (3) to calculate the SR of a infrastructure where is characterized by the presence of a bridge.

4. A Case Study

In this section, a case study (Figure 5) is considered on the basis of the previous paper [36]. The present paper considers infrastructure 1 that consists of a road network built up with the previous typology of bridge named B1 (number of total of bridges: 3), as shown in Figure 4. PGA (Peak Ground Acceleration) is considered since this Im does not depend on the structural properties (such as modal shapes), more details in [36]. The hypothesis herein is that the functionality ratio is considered 1, meaning that the infrastructure is fully operating. Also, the costs (direct and indirect) were calculated by considering the losses due to the bridges (other losses neglected), as in [36].

4.1. Benchmark Bridge

The scheme of the bridge was the same studied in [36] with the name B1 (Figure 6). It consisted of a benchmark scheme that represent the ordinary standard bridges (OSBs) used in the Californian highways and designed by considering the Caltrans Seismic Design Criteria [39]. The connections between the deck and the abutments were realized with sliding isolators that were modeled with the simplified two-spring model (more details in [36]) in the longitudinal direction. The vertical and transversal directions of the abutments and the connection between the column and the deck were fixed in all directions. Since the isolation was assumed to perform correctly, the deck (length: 90.00 m; width: 11.90 m; depth: 1.83 m; cross area: 5.72 m2, transversal inertia: 2.81 m4 and vertical inertia: 53.9 m4, weight per unit length: 130.3 kN/m) and the column (height: 6.71 m) were herein modeled with non-linear beam column elements and considered fixed at the base (soil structure interaction effects were neglected). More details can be found in [36].

4.2. Seismic Scenario

The selected seismic scenario consisted of an ensemble of 100 input ground motions retrieved from the NGA database that can be seen in Table 1, in terms of their duration and the peak ground acceleration (PGA). The input ground motions were selected as the most representative ones of a wide range of intensities, with PGA values ranging between 0.05 g and 0.89 g, as already performed in [20]. The input ground motions were applied at the base of the structure, along the longitudinal direction. The nodes at the base of the structure were considered fixed and, thus, there was no need to introduce links of elements and to consider the effects due to the presence of the soil. In order to avoid convergence problems, the nonlinear dynamic analyses were performed by considering the approach adopted in Forcellini [40], which consisted of three steps: (1) linear properties of the structural material were considered; (2) the associated loads were applied to the structure and the properties were changed into non-linear. Modelling non-linearity is particularly challenging and, thus, it was necessary to divide this step into twenty-five load steps to guarantee numerical convergence. Finally, Step 3 consisted of the input ground motion application at the base of the model as longitudinal acceleration time history. The NewtonLineSearch algorithm was used to perform these analyses as proposed by Mazzoni et al. [41].

4.3. Calculation of Resilience

Following the previous studies [42,43], The Pacific Earthquake Engineering Research (PEER) Centre methodology, ref. [44], was applied to assess the recovery time (RT). In particular, the direct losses were calculated by applying the Caltrans Comparative Bridge Costs database [39] and by implementing the LLRCAT methodology (more details in [44]). Indirect losses were calculated herein by implementing Equation (3) and by considering that indirect losses were the 10%, as the mean value between those indicated in [15]. The recovery curve was considered linear, since no information on the recovery process was available. The results were herein expressed in terms of RT (unit: crew working days, CWD). In particular, Figure 7 shows that at lower intensities (PGA < 0.68 g), RT values were less than 60 CWD, while most of the damage (and, thus, the costs) at PGA = 0.68 g, after which the losses were almost constant. In particular, several values of exponential c (0.5, 1.0 and 2.0) were considered and three levels of r/r0 (0.25, 0.50 and 0.75). The values of L are shown in Table 2 (compare with Figure 2).
Figure 8, Figure 9 and Figure 10 show the role of redundancy (r/r0 = 0.25, 0.50 and 0.75) for the various coefficients c (0.5, 1.0 and 2.0, respectively Figure 7, Figure 8 and Figure 9). It is worth noting that SR decreased with the intensities. For low intensities (PGS < 0.20 g), all the systems were resilient, with SR values around 85–95%. Between 0.20 g and 0.40 g, there was big reduction (around 1/3 of the previous values) in SR for all the systems, followed by a plateau between 0.42 g and 0.68 g. For high intensities (PGA > 0.70 g), SR was significantly reduced. Overall, the results demonstrate that the redundancy had positive effects on the SR of the entire infrastructure, since the biggest values of SR were obtained for SR-0.75–2.0 (c = 2.0 and r/r0 = 0.75).

5. Summary and Conclusions

The paper proposed a novel approach to assess the redundancy inside the calculation of the seismic resilience (SR) of infrastructures. In this regard, the role of redundancy was assessed by proposing two formulations for the functionality and the losses that enable to calculate the SR. In this regard, the resilience may be used as a key parameter to consider the performance of infrastructures during seismic events and, thus, to ensure the sustainability of the community. Two parameters were used to describe the role of redundancy on SR: the level of redundancy and the coefficient of grown of the functionality because of the present of redundancy. Several values were selected and tested within a case study of an infrastructure built up with three bridges with same characteristics of a benchmark one. The results confirmed that the redundancy had a positive effect on improving the SR of the selected infrastructure. In addition, the proposed formulation may help the decision makers to study the role of redundancy on the evaluation of the seismic resilience of infrastructures. Overall, this paper may be considered a first attempt to include the concept of redundancy inside the assessment of SR. The limitations of the study relate to the hypotheses that were herein assumed. In particular, (1) infrastructure redundancy was considered only in the definition of the indirect losses and not in the determination of the repair time, (2) redundancy was implemented inside the resilience to earthquakes without consider other natural hazards, (3) the losses of the infrastructure were assumed those connected with the structural damages of the bridges. (4) The relationship between the losses and the inoperability will be the object of a more developed approach. Future works are necessary to extend the presented methodology with the aim to propose a more comprehensive framework to investigate the sustainability of communities.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The author declares no conflict of interest.

References

  1. Brookshire, D.S.; Chang, S.E.; Cochrane, H.; Olson, R.A.; Rose, A.; Steenson, J. Direct and indirect economic losses from earthquake damage. Earthq. Spectra 1997, 14, 683–701. [Google Scholar] [CrossRef]
  2. Adey, B.; Hajdin, R.; Brudwile, E. Effect of common cause failures on indirect costs. J. Bridge Eng. 2004, 9, 200–208. [Google Scholar] [CrossRef]
  3. Forcellini, D. A new methodology to assess indirect losses in bridges subjected to multiple hazards. Innov. Infrastruct. Solut. 2019, 4, 1–9. [Google Scholar] [CrossRef]
  4. Dusenberry, D.O. New SEI/ASCE disproportionate collapse mitigation standard. J. Struct. Eng. 2022, 148, 04022014. [Google Scholar] [CrossRef]
  5. Starossek, U. Progressive collapse of bridges, aspects of analysis and design. In Proceedings of the International Symposium on Sea-Crossing Long-Span Bridges, Mokpo, Republic of Korea, 15–17 February 2006; Citeseer: State College, PA, USA, 2006; pp. 1–22. [Google Scholar]
  6. Starossek, U.; Haberland, M. Disproportionate collapse: Terminology and procedures. J. Perform. Constr. Facil. 2010, 24, 519–528. [Google Scholar] [CrossRef] [Green Version]
  7. Anitori, G.; Casas, J.; Ghosn, M. Redundancy and robustness in the design and evaluation of bridges: European and North American perspectives. J. Bridge Eng. 2013, 18, 1241–1251. [Google Scholar] [CrossRef]
  8. Ghosn, M.; Yang, J.; Beal, D.; Sivakumar, B. Bridge System Safety and Redundancy; Transportation Research Board: Washington, DC, USA, 2014. [Google Scholar]
  9. Bontempi, F. Elementary concepts of structural robustness of bridges and viaducts. J. Civ. Struct. Health Monit. 2019, 9, 703–717. [Google Scholar] [CrossRef]
  10. Fiorillo, G.; Ghosn, M. Structural Redundancy, Robustness, and Disproportionate Collapse Analysis of Highway Bridge Superstructures. J. Struct. Eng. 2022, 148, 04022075. [Google Scholar] [CrossRef]
  11. Forcellini, D.; Alzabeebee, S. Seismic fragility assessment of geotechnical seismic isolation (GSI) for bridge configuration. Bull. Earthq. Eng. 2023, 21, 3969–3990. [Google Scholar] [CrossRef]
  12. Forcellini, D. Assessment of Geotechnical Seismic Isolation (GSI) as a Mitigation Technique for Seismic Hazard Events. Geosciences 2020, 10, 222. [Google Scholar] [CrossRef]
  13. Cimellaro, G.P. Urban resilience for emergency response and recovery. In Fundamental Concepts and Applications, Geotechnical, Geological and Earthquake Engineering; Springer International Publishing: Berlin/Heidelberg, Germany, 2016; Volume 41, ISBN 978-3-319-30656-8. [Google Scholar]
  14. Venkittaraman, A.; Banerjee, S. Enhancing resilience of highway bridges through seismic retrofit. Earthq. Eng. Struct. Dyn. 2014, 43, 1173–1191. [Google Scholar] [CrossRef]
  15. Argyroudis, S.A.; Nasiopoulos, G.; Mantadakis, N.; Mitoulis, S.A. Cost-based resilience assessment of bridges subjected to earthquakes. Int. J. Disaster Resil. Built Environ. 2021, 12, 209–222. [Google Scholar] [CrossRef]
  16. Bruneau, M.; Chang, S.E.; Eguchi, R.T. A Framework to Quantitatively Assess and Enhance the Seismic Resilience of Communities. Earthq. Spectra 2003, 19, 733. [Google Scholar] [CrossRef] [Green Version]
  17. Chang, S.E.; Shinozuka, M. Measuring improvements in the disaster resilience of communities. Eng. Struct. 2004, 20, 739–755. [Google Scholar] [CrossRef]
  18. Renschler, C.; Frazier, A.; Arendt, L.; Cimellaro, G.P.; Reinhorn, A.M.; Bruneau, M. Framework for Defining and Measuring Resilience at the Community Scale: The PEOPLES Resilience Framework; Technical Report MCEER-10-006; University at Buffalo: Buffalo, NY, USA, 2010. [Google Scholar]
  19. Huang, Z.; Zhang, D.; Pitilakis, K.; Tsinidis, G.; Huang, H.; Zhang, D.; Argyroudis, S. Resilience assessment of tunnels: Framework and application for tunnels in alluvial deposits exposed to seismic hazard. Soil Dyn. Earthq. Eng. 2022, 162, 107456. [Google Scholar] [CrossRef]
  20. Forcellini, D. A Resilience-Based Methodology to Assess Soil Structure Interaction on a Benchmark Bridge. Infrastructures 2020, 5, 90. [Google Scholar] [CrossRef]
  21. Cimellaro, G.P.; Reinhorn, A.M.; Bruneau, M. Framework for analytical quantification of disaster resilience. Eng. Struct. 2010, 32, 3639–3649. [Google Scholar] [CrossRef]
  22. Zelaschi, C.; De Angelis, G.; Giardi, F.; Forcellini, D.; Monteiro, R.; Papadrakakis, M. Performance based earthquake engineering approach applied to bridges in a road network. In Proceedings of the 5th International Conference on Computational Methods in Structural Dynamics and Earthquake Engineering Methods in Structural Dynamics and Earthquake Engineering (ECCOMAS), Crete Island, Greece, 25–27 May 2015; pp. 900–910. [Google Scholar]
  23. Ranjbar, P.R.; Naderpour, H. Probabilistic evaluation of seismic resilience for typical vital buildings in terms of vulnerability curves. Structures 2020, 23, 314–323. [Google Scholar] [CrossRef]
  24. Meyer, V.; Becker, N.; Markantonis, V.; Schwarze, R.; van den Bergh, J.C.J.M.; Bouwer, L.M.; Bubeck, P.; Ciavola, P.; Genovese, E.; Green, C.; et al. Review article: Assessing the costs of natural hazards—State of the art and knowledge gaps. Nat. Hazards Earth Syst. Sci. 2013, 13, 1351–1373. [Google Scholar] [CrossRef] [Green Version]
  25. Mechler, R.; Linnerooth-Bayer, J.; Peppiatt, D. Microinsurance for Natural Disasters in Developing Countries: Benefits, Limitations and Viability; ProVention Consortium: Geneva, Switzerland, 2006. [Google Scholar]
  26. Hallegatte, S.; Dumas, P. Can Natural Disasters Have Positive Consequences? Investigating the Role of Embodied Technical Change. Ecol. Econ. 2008, 68, 777–786. [Google Scholar] [CrossRef] [Green Version]
  27. Hallegatte, S.; Ghil, M. Natural Disasters Impacting a Macroeconomic Model with Endogenous Dynamics. Ecol. Econ. 2008, 68, 582–592. [Google Scholar] [CrossRef] [Green Version]
  28. Murray-Tuite, P.M. A comparison of transportation network resilience under simulated system optimum and user equilibrium conditions. In Proceedings of the Winter Simulation Conference, Monterey, CA, USA, 3–6 December 2006; pp. 1398–1405. [Google Scholar]
  29. Beiler, M.O.; McNeil, S.; Ames, D.; Gayley, R. Identifying resiliency performance measures for megaregional planning: Case study of the transportation corridor between Boston, Massachusetts, and Washington, DC. Transp. Res. Rec. J. Transp. Res. Board 2013, 2397, 153–160. [Google Scholar] [CrossRef]
  30. Bhavathrathan, B.K.; Patil, G.R. Quantifying resilience using a unique critical cost on road networks subject to recurring capacity disruptions. Transp. A Transp. Sci. 2015, 11, 836–855. [Google Scholar]
  31. NSerulle, U.; Heaslip, K.; Brady, B.; Louisell, W.; Collura, J. Resiliency of transportation network of Santo Domingo, Dominican Republic: Case Study. Transp. Res. Rec. J. Transp. Res. Board 2011, 2234, 22–30. [Google Scholar] [CrossRef]
  32. Liao, T.-Y.; Hu, T.-Y.; Ko, Y.-N. A resilience optimization model for transportation networks under disasters. Nat. Hazards 2018, 93, 469–489. [Google Scholar] [CrossRef]
  33. Bocchini, P.; Frangopol, D.M.; Ummenhofer, T.; Zinke, T. Resilience and sustainability of civil infrastructure: Toward a unified approach. J. Infrastruct. Syst. 2013, 20, 04014004. [Google Scholar] [CrossRef]
  34. Forcellini, D.; Kalfas, K.N. Inter-story seismic isolation for high-rise buildings. Eng. Struct. 2023, 275, 115175. [Google Scholar] [CrossRef]
  35. Forcellini, D. Seismic resilience of isolated bridge configurations with soil–structure interaction. Innov. Infrastruct. Solut. 2017, 2, 2. [Google Scholar] [CrossRef]
  36. Forcellini, D. 3D Numerical simulations of elastomeric bearings for bridges. Innov. Infrastruct. Solut. 2016, 1, 45. [Google Scholar] [CrossRef] [Green Version]
  37. Grubesic, T.H.; Timothy, C.; Matisziw, T.C.; Murray, A.T.; Snediker, D. Comparative Approaches For Assessing Network Vulnerability. Int. Reg. Sci. Rev. 2008, 31, 88–112. [Google Scholar] [CrossRef]
  38. Duenas-Osorio, L.; Craig, J.I.; Goodno, B.J. Seismic response of critical interdependent networks. Earthq. Eng. Struct. Dyn. 2007, 36, 285–306. [Google Scholar] [CrossRef]
  39. Caltrans (California Department of Transportation). Seismic Design Criteria Version 1.3; Caltrans: Sacramento, CA, USA, 2003. [Google Scholar]
  40. Forcellini, D.; Tarantino, A.M. Assessment of stone columns as a mitigation technique of liquefaction-induced effects during Italian earthquakes (May 2012). Sci. World J. 2014, 2014, 216278. [Google Scholar] [CrossRef] [Green Version]
  41. Mazzoni, S.; McKenna, F.; Scott, M.H.; Fenves, G.L. Open System for Earthquake Engineering Simulation, User Command-Language Manual; OpenSees Version 2.0; Pacific Earthquake Engineering Research Center, University of California: Berkeley, CA, USA, 2009; Available online: http://opensees.berkeley.edu/OpenSees/manuals/usermanual (accessed on 15 August 2022).
  42. Forcellini, D. Seismic resilience of bridges isolated with traditional and geotechnical seismic isolation (GSI). Bull. Earthq. Eng. 2023, 21, 3521–3535. [Google Scholar] [CrossRef]
  43. Wachter, R.F.; Forcellini, D.; McManus Warnell, J.; Walsh, K.Q. Relationship between Coastal Hazard Countermeasures and Community Resilience in the Tohoku Region of Japan Following the 2011 Tsunami. Nat. Hazards Rev. 2023, 24, 04023017. [Google Scholar] [CrossRef]
  44. Mackie, K.R.; Wong, J.-M.; Stojadinovic, B. Post-earthquake bridge repair cost and repair time estimation methodology. Earthq. Eng. Struct. Dyn. 2010, 39, 281–301. [Google Scholar] [CrossRef]
Figure 2. Definition of redundancy (r) based on Equation (2).
Figure 2. Definition of redundancy (r) based on Equation (2).
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Figure 3. Definition of losses (L) based on Equation (2).
Figure 3. Definition of losses (L) based on Equation (2).
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Figure 4. Flow chart of the framework.
Figure 4. Flow chart of the framework.
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Figure 5. Scheme of the road infrastructure considered in the case study.
Figure 5. Scheme of the road infrastructure considered in the case study.
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Figure 6. Numerical model of Bridge B1 (vertical view).
Figure 6. Numerical model of Bridge B1 (vertical view).
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Figure 7. Repair time (CWD).
Figure 7. Repair time (CWD).
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Figure 8. PGA (g) Vs SR (c = 0.5 and r/r0 = 0.25, 0.50, 0.75).
Figure 8. PGA (g) Vs SR (c = 0.5 and r/r0 = 0.25, 0.50, 0.75).
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Figure 9. PGA (g) Vs SR (c = 1.0 and r/r0 = 0.25, 0.50, 0.75).
Figure 9. PGA (g) Vs SR (c = 1.0 and r/r0 = 0.25, 0.50, 0.75).
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Figure 10. PGA (g) Vs SR (c = 2.0 and r/r0 = 0.25, 0.50, 0.75).
Figure 10. PGA (g) Vs SR (c = 2.0 and r/r0 = 0.25, 0.50, 0.75).
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Table 1. Selected input ground motions.
Table 1. Selected input ground motions.
NumberEarthquakeStationDuration (s)PGA (g)
1A-ELC1968 Borrego Mountain40.000.13
2A2E1989 Loma Prieta39.960.18
3FMS1989 Loma Prieta39.760.20
4HVR1989 Loma Prieta39.960.14
5SJW1989 Loma Prieta39.960.10
6SLC1989 Loma Prieta39.580.20
7BAD1989 Loma Prieta35.000.11
8CAS1994 Northridge39.800.10
9CEN1994 Northridge30.000.49
10DEL1994 Northridge35.360.15
11DWN1994 Northridge40.000.17
12JAB1994 Northridge35.000.11
13L011994 Northridge32.000.09
14LOA1994 Northridge40.000.09
15LV21994 Northridge32.000.10
16PHP1994 Northridge60.000.07
17PIC1994 Northridge40.000.11
18SOR1994 Northridge36.480.07
19SSE1994 Northridge35.000.14
20VER1994 Northridge30.000.13
21AGW1989 Loma Prieta40.000.18
22CAP1989 Loma Prieta39.960.55
23G031989 Loma Prieta39.960.59
24G041989 Loma Prieta39.960.45
25GMR1989 Loma Prieta39.960.24
26HCH1989 Loma Prieta39.100.27
27HAD1989 Loma Prieta39.640.29
28SVL1989 Loma Prieta39.260.21
29CNP1994 Northridge25.000.39
30FAR1994 Northridge30.000.30
31FLE1994 Northridge30.000.17
32GLP1994 Northridge30.000.37
33LOS1994 Northridge20.000.44
34NYA1994 Northridge30.000.20
35PEL1994 Northridge40.000.25
36RO31994 Northridge30.280.31
37Z-PEL1954 Ferndale28.000.22
38B-ICC1987 Superstition Hills40.000.38
39B-IVW1987 Superstition Hills44.000.17
40B-WSM1987 Superstition Hills40.000.18
41H-PVB1983 Coalinga39.960.40
42H-AEP1979 Imperial Valley11.160.36
43H-BCR1979 Imperial Valley37.620.63
44H-CXO1979 Imperial Valley37.820.29
45H-E051979 Imperial Valley39.300.55
46H-ECC1979 Imperial Valley40.000.23
47H-SHP1979 Imperial Valley15.720.30
48I-ELC1979 Imperial Valley40.000.33
49G021989 Loma Prieta39.960.39
50GOF1989 Loma Prieta39.960.30
51Z-HVR1984 Morgan Hill39.980.17
526371994 Northridge47.780.81
53JEN1994 Northridge28.620.62
54NWH1994 Northridge40.000.63
55RRS1994 Northridge19.920.89
56SCS1994 Northridge40.000.66
57SYL1994 Northridge40.000.65
58C081966 Parkfield26.120.24
59A-JAB1987 Whittier Narrows34.300.24
60A-SOR1987 Whittier Narrows28.720.15
61B-ELC1968 Borrego Mountain40.000.07
62H-C051983 Coalinga40.000.16
63H-C081983 Coalinga32.000.10
64H-CC41979 Imperial Valley28.540.12
65H-CMP1979 Imperial Valley36.000.20
66H-DLT1979 Imperial Valley99.920.24
67H-NIL1979 Imperial Valley40.000.12
68H-PLS1979 Imperial Valley18.760.05
69H-VCT1979 Imperial Valley40.000.13
70A-STP1980 Livermore33.000.05
71SJB1984 Morgan Hill28.000.05
72Z-CAP1984 Morgan Hill36.000.11
73Z-HCH1984 Morgan Hill28.340.08
74H061986 North Palm Springs40.000.07
75INO1986 North Palm Springs30.000.07
76A-BIR1987 Whittier Narrows28.620.26
77A-CTS1987 Whittier Narrows39.960.05
78A-HAR1987 Whittier Narrows40.000.06
79A-SSE1987 Whittier Narrows22.940.05
80A-STC1987 Whittier Narrows40.000.17
81H-CAL1979 Imperial Valley39.540.14
82H-CHI1979 Imperial Valley40.000.29
83E-E011979 Imperial Valley39.040.15
84H-E121979 Imperial Valley39.020.15
85H-E131979 Imperial Valley39.520.12
86H-WSM1979 Imperial Valley40.000.08
87A-KOD1980 Livermore20.980.17
88A-SRM1980 Livermore40.000.06
89Z-AGW1984 Morgan Hill59.960.03
90Z-G021984 Morgan Hill29.980.17
91Z-G031984 Morgan Hill39.980.21
92Z-GMR1984 Morgan Hill29.980.20
93PHN1946 Point Mugu23.200.12
94BRA1966 Westmore28.420.17
95NIL1966 Westmore40.000.11
96A-CAS1987 Whittier Narrows31.180.36
97A-CAT1987 Whittier Narrows32.920.05
98A-DWN1987 Whittier Narrows40.000.24
99A-W701987 Whittier Narrows31.940.21
100A-WAT1987 Whittier Narrows29.700.11
Table 2. Values of the indirect losses calculated with Equation (3) for different values of the coefficient c (0.50, 1.00 and 2.00) and three levels of r/r0 (0.25, 0.50 and 0.75).
Table 2. Values of the indirect losses calculated with Equation (3) for different values of the coefficient c (0.50, 1.00 and 2.00) and three levels of r/r0 (0.25, 0.50 and 0.75).
r/r0c = 0.5c = 1.0c = 2.0
0.250.9380.7500.500
0.500.7500.5000.293
0.750.4380.2500.134
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Forcellini, D. The Role of Redundancy of Infrastructures on the Seismic Resilience (SR) of Sustainable Communities. Sustainability 2023, 15, 11849. https://doi.org/10.3390/su151511849

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Forcellini D. The Role of Redundancy of Infrastructures on the Seismic Resilience (SR) of Sustainable Communities. Sustainability. 2023; 15(15):11849. https://doi.org/10.3390/su151511849

Chicago/Turabian Style

Forcellini, Davide. 2023. "The Role of Redundancy of Infrastructures on the Seismic Resilience (SR) of Sustainable Communities" Sustainability 15, no. 15: 11849. https://doi.org/10.3390/su151511849

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