2019
DOI: 10.1111/risa.13328
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Rethinking Resilience Analytics

Abstract: The concept of "resilience analytics" has recently been proposed as a means to leverage the promise of big data to improve the resilience of interdependent critical infrastructure systems and the communities supported by them. Given recent advances in machine learning and other data-driven analytic techniques, as well as the prevalence of high-profile natural and man-made disasters, the temptation to pursue resilience analytics without question is almost overwhelming. Indeed, we find big data analytics capable… Show more

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Cited by 23 publications
(11 citation statements)
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References 26 publications
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“…It should be noted that if the number of perturbations is large, then this may not be computationally effective and advanced sampling strategies may be necessary. In general, the model should be carefully constructed in order to provide the insights into the desired characteristics of the system and its limitations should be carefully understood [72].…”
Section: Optimization Models and Network Robustnessmentioning
confidence: 99%
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“…It should be noted that if the number of perturbations is large, then this may not be computationally effective and advanced sampling strategies may be necessary. In general, the model should be carefully constructed in order to provide the insights into the desired characteristics of the system and its limitations should be carefully understood [72].…”
Section: Optimization Models and Network Robustnessmentioning
confidence: 99%
“…In resilience literature, network extensibility refers to models and measures for, “how well systems stretch to handle surprises,” [220]. The term surprise is used to describe stressors where network operations and functional requirements may not be known a priori [72]. Methods for analyzing network robustness and rebound are limited for managing surprises because they only consider perturbations within the predefined set, pP, or produce results constrained by predefined network structure ( G = ( N , A )), design options, and objectives.…”
Section: Optimization Models and Network Extensibilitymentioning
confidence: 99%
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“…This set of papers describes how to visualize overall system performance, relationships among variables, and predicted likelihoods of events. Prescriptive analytics suggest and evaluate proposed risk management solutions (Eisenberg, Seager, & Alderson, 2019;Zheng & Albert, 2019). Automatic collection, storage, and transmission of massive numbers of measurements offer the possibility of building data-informed resilience and enabling more careful human supervision, as well as encouraging machine learning and self-corrective mechanisms supervised by expert staff.…”
Section: Illustrationsmentioning
confidence: 99%