2016
DOI: 10.3390/w8040152
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Understanding Persistence to Avoid Underestimation of Collective Flood Risk

Abstract: Abstract:The assessment of collective risk for flood risk management requires a better understanding of the space-time characteristics of flood magnitude and occurrence. In particular, classic formulation of collective risk implies hypotheses concerning the independence of intensity and number of events over fixed time windows that are unlikely to be tenable in real-world hydroclimatic processes exhibiting persistence. In this study, we investigate the links between the serial correlation properties of 473 dai… Show more

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Cited by 29 publications
(21 citation statements)
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References 78 publications
(143 reference statements)
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“…To mitigate this effect, we did not apply monthly or seasonal stratification in the analysis of CONUS temperature and precipitation, and spatiotemporal dependence structures were estimated on the parent process X and then suitably deflated by equation to obtain those of Y . Moreover, it is known that correlation can influence the statistics of extreme values yielding, for instance, spatiotemporal clustering of RB, POT, or block maxima (e.g., Bogachev & Bunde, ; Eichner et al, ; Serinaldi & Kilsby, ) . On the other hand, it is generally difficult to retrieve the underlying correlation structures only from extreme events, which often appear to be approximately independent because of downsampling effects of data selection and consequent removal of nonextreme data providing information on correlation (e.g., Serinaldi et al, ).…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…To mitigate this effect, we did not apply monthly or seasonal stratification in the analysis of CONUS temperature and precipitation, and spatiotemporal dependence structures were estimated on the parent process X and then suitably deflated by equation to obtain those of Y . Moreover, it is known that correlation can influence the statistics of extreme values yielding, for instance, spatiotemporal clustering of RB, POT, or block maxima (e.g., Bogachev & Bunde, ; Eichner et al, ; Serinaldi & Kilsby, ) . On the other hand, it is generally difficult to retrieve the underlying correlation structures only from extreme events, which often appear to be approximately independent because of downsampling effects of data selection and consequent removal of nonextreme data providing information on correlation (e.g., Serinaldi et al, ).…”
Section: Discussionmentioning
confidence: 99%
“…This property can result in observed sequences of low and high summary statistics (e.g., block minima, block maxima, and POT values) that appear, however, approximately uncorrelated because these statistics do not provide enough information to assess the actual dependence of the underlying process. Lack of apparent dependence can lead to interpret low and high regimes as lack of stationarity, while they can be explained by the underlying dependence, which is however concealed by the sampling procedure (Serinaldi & Kilsby, ; Serinaldi et al, ). In this respect, focusing on monthly, seasonal, and annual values, as done in the literature mentioned above, and using resampling methods that preserve only approximately a fraction of the actual correlation can invalidate preliminary analysis and modeling efforts.…”
Section: Analysis Of Temperature and Precipitation Datamentioning
confidence: 99%
“…In hydrology, but also in many other geophysical fields of application, time-dependence has been recognized to be the rule rather than the exception since a long time (see, e.g., the examples provided by Eichner, Kantelhardt, Bunde, & Havlin, 2011); this important characteristic of natural processes has stimulated many scientists to investigate the properties of return period when the independence condition is omitted (Douglas et al, 2002;Fernández & Salas, 1999b;Leadbetter, 1983;Lloyd, 1970;Rosbjerg, 1977;Sen, 1999;Serinaldi & Kilsby, 2016;Volpi et al, 2015).…”
Section: Time-dependent Processesmentioning
confidence: 99%
“…Besides, when dealing with observed time series that shows correlation in time, data could be preliminary selected to allow for events to be independent from one another; common methods for independent data selection in hydrological applications are those based on the selection of annual maxima or independent peaks exceeding a given threshold (Coles, 2001). Note that even annual maxima are usually selected to fulfill the independence assumption, flood annual extremes may exhibit a nonnegligible temporal correlation in systems dominated by a large water storage; at smaller sampling time intervals (i.e., subannual scale) the effects of persistence usually become more and more important (the reader is referred to the article by Serinaldi and Kilsby (2016) for an interesting discussion on this issue).…”
Section: Concluding Remarks On Return Period Estimationmentioning
confidence: 99%
“…Such policies also imply a shift toward more integrated flood risk management strategies comprising portfolios of structural flood protection assets such as dikes, levees, resilience‐improved residences, and upstream retention areas, and nonstructural solutions such as property‐level protection, land‐use planning, and insurance arrangements . An effective implementation of evolving management strategies must account for key flood characteristics such as their inherent spread over many administrative/physical regions, causing simultaneous collective losses, and their temporal clustering, resulting in flood‐rich and flood‐poor periods . In particular, modeling flood clustering is paramount to set up mitigation strategies that are not affected by the flood risk perception related to the alternation of flood‐rich and flood‐poor periods.…”
Section: Introductionmentioning
confidence: 99%