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Temporal Modeling of Anomalous Coastal Sea Level Values Using Synoptic Climatological Patterns

11

Citations

30

References

2019

Year

Abstract

Abstract Short‐term changes in sea level can have substantial impacts on coastlines, and increases in coastal flooding have been observed as the mean sea level continues to climb. While extreme events such as hurricanes have been well studied in terms of their impacts on anomalous sea level values, anomalous sea levels due to less extreme atmospheric events have been less well studied, despite the increases in nuisance flood events that have occurred. In this study, we assess the relationship between short‐term atmospheric circulation patterns and anomalous coastal sea level values for all oceanic tidal gauges in the conterminous United States for the period 1979–2016. Atmospheric patterns are depicted using self‐organizing maps for four variables: sea level pressure, 10‐m wind, 850‐mb temperature, and 700‐mb geopotential height. We then reconstruct the time series of anomalous sea level through nonlinear autoregressive models with exogenous input (NARX models), an artificial neural network‐based time series model. Results show that these four atmospheric variables can successfully model sea level, with a correlation between model and observation using a closed‐loop (open‐loop) architecture of 0.83 (0.64), with a median absolute error of 3.34 (4.90) cm. The model generally performs better in winter than summer, and along the Pacific Coast than the Atlantic and Gulf Coasts. By using the NARX methodology, we intend to next assess its utility as a forecasting tool.

References

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