13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Ensemble prediction as a tool.

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13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Ensemble prediction as a tool for probabilistic forecast of floods in Venice P. Lionello (2) & R. Mel (1) (1) DICEA (Dipartimento di Ingegneria Civile, Edile ed Ambientale), University of Padova, Italy, (2) DISTEBA (Dipartimento Scienze e Tecnologie Biologiche e Ambientali), University of Salento, Lecce, Italy,

The problem: The storm surge 13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK

wind Atmospheric pressure Venice Total level Effect of wind Effect of atmospheric pressure Sea bottom Storm surge dynamics 13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK An accurate and fully informative prediction of sea level in the time range from few hours to several days is an essential tool for the management of the city, in particular for operating efficiently the movable dams that the Italian government is presently building. Operational requirements impose that the decision of closing has to be taken aboout 8 hours before the Sea Level reaches a reference threshold (about 1meter) The forecast centre of the Venice municipality (I.C.P.S.M. - Istituzione Centro Previsione e Segnalazione Maree, Centre for tide prediction and warning), operates a set of models for SL prediction. BIGSUMDP (Tomasin, 1972, Canestrelli and Pastore, 2000), a linear statistical autoregressive model SHYFEM (Shallow Water Hydrodynamic Finite Element. Model, Umgiesser et al., 2004), based on the finite element method HYPSE-AM (HYdrostatic Padua Sea Elevation and Adjoint Model, Lionello et al., 2006), a finite difference model with data assimilation

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Sea level (SL) forecast for the city of Venice is of paramount importance for the management and maintenance of this historical city and for operating the movable barriers that are presently being built for its protection. In this paper an Ensemble Prediction System (EPS, based on an ensemble of 50 simulations) for operational forecasting of storm surge in the northern Adriatic Sea is presented and applied to ten relatively high storm surge events that occurred in the year The SL simulations carried out in this study are based on HYPSE, which is a standard single-layer nonlinear shallow water model, whose equations are derived from the depth averaged momentum equations. 3-hourly ECMWF wind and MSLP are used as forcing of the HYPSE model. The ECMWF EPS produces 50 different forecasts, which are used for producing a corresponding SL-EPS, and a high resolution meteorological forecast (deterministic forecast, DF), which is used for a corresponding SL deterministic prediction What is actually computed is the SL residual (storm surge + seiches), which is what is left of the sea level after subtracting astronomical tide and long term (> several days) variability.

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Event n. Peak date SR (CNR) SR (TS) SR (RO) SR (SP) SR (DU) Observed sea level (VENICE-PS) SR (PS) m0.26 m0.41 m0.24 m0.23 mh m ( 1%)0.44 m m0.63 m0.75 m0.58 m0.53 mh m (36%)0.80 m m0.20 m0.43 m0.31 m h m ( 7%)0.48 m m0.38 m0.51 m0.14 m0.13 mh m ( 7%)0.51 m m0.48 m0.65 m0.43 m0.42 mh m ( 9%)0.57 m m0.38 m0.48 m0.32 m0.29 mh m ( 3%)0.52 m m0.68 m0.73 m0.59 m0.55 mh m (32%)0.72 m m0.55 m0.69 m0.48 m0.46 mh m (13%)0.62 m m0.54 m0.93 m0.70 m0.51 mh m (53%)0.67 m m 0.73 m0.86 m0.63 m0.53 mh m (64%)0.82 m List of the 10 events analysed in this study: date, SR maxima at the five Adriatic gauges considered for the analysis: ISMAR-CNR (CNR), Trieste (TS), Rovinj (RO), Split (SP), Dubrovnik (DU). Last four columns show time and value of observed maximum SL with percentage of Venice flooded (between brackets), and maximum SR at the Punta Salute gauge (Venice city centre, PS).

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK ISMAR-CNR platform, event n10 on , 48 hour forecast. Top panel: original SL values (in m) showing the observed time series, the DF, the EMF (thick blue, green and red lines with dots) and the 50 EPS members (thin coloured lines). The value of R O, R A and of H max (see formula below) are reported in this figure. Bottom panel : the same information after the application of the normalization procedure as described in the following equation The procedure for producing a set of dimensionless time series DF: Deterministic Forecast EMF: Ensemble Mean Forecast

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Mean evolution of the normalized time series of the ten events in the time range from -24 to +24 hours respect to the observed peak. The observed SL at the CNR platform (blue line), the EMF (red line) and the DF (green line) are shown considering the simulations that started approximately 24 hours before the observed peak. DF: Deterministic ForecastEMF: Ensemble Mean Forecast

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Mean (average values over the 10 normalized events) results for 24, 48 and 72 hours forecasts. mean peak values of the DF (Deterministic Forecast, green line with dots), of the EMF (Ensemble Mean Forecast, red line with dots), of the highest (brown line with squares) and lowest (blue line with squares) member of the EPS (Ensemble Prediction System) and their difference (EPS range, fuchsia line with squares), mean absolute error (MABS) of the DF (green line with triangles), EMF (red line with triangles), standard deviation of the EPS (Ensemble Prediction System) members peak values (violet line with triangles).

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Top panel: maximum absolute error of the ten normalized events for the 24hour forecast at the ISMAR-CNR platform. The lines refer to the EMF (red), the DF (green) and to their difference (error of DF minus error of EMF, violet line). The time 0 refers to the time of the observed SL peak. Bottom panel difference (DF minus EMF)between EMF and DF for the maximum absolute error at the five stations considered in this study. In all panels the thin black line represents an interpolation of the error differences. DF: Deterministic Forecast EMF: Ensemble Mean Forecast

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Event n.10, 48 hour forecast at the ISMAR-CNR platform. SL (left y axis, m) of 48 hour DF (green line), EMF (red line), observed level (blue line) and probability (violet line, right y- axis, %) of exceeding the observed peak level (69cm). The panel reports also the actual values of the deterministic forecast (green bullet), EMF (red bullet) and the observed value (blue bullet). DF: Deterministic Forecast EMF: Ensemble Mean Forecast SL (m)

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Probability distribution of the peak indexes (red bars) with the respective Gaussian normalized distribution (line with red dots) for the EPS (Ensemble Prediction System) 24 hours forecast. The blue bars show the observed peak indexes. The blue dotted line shows the Gaussian with same mean value and standard deviation as the observations.

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Scatter plot of the absolute error of the EMF (Ensemble Mean Forecast) y-axis) versus the spread of the Ensemble (x-axis) the 24 (red), 48 (green ) and 72hours (blue) for CNR platform (large dots), Trieste (triangles), Rovinj (small circles), Split (squares) and Dubrovnik (diamonds). All values refer to the normalized peak indexes. spread of the Ensemble absolute error of the EMF

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK evolution in time of the normalized spread with time range. Each red line describes a forecast with different lead time with respect to the peak, so that the peak is reached at 24, 48, 72, 96, 120 hours. Colour lines represent the spread during each case, the red line their mean value. The blue line shows the mean of all red lines. Time (h) spread

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK Panel a-e: comparison of the evolution in time of spread for different variables: SL (red line), wind(solid blue line with dots), MSLP (dashed black line) at the ISMAR- CNR platform. The different time series have been shifted in time and normalized. Panel f reports the mean of time series for all lead times

13 th EMS Annual Meeting & 11 th European Conference on Applications of Meteorology 9 th – 13 th September 2013Reading, UK CONCLUSIONS An EPS for storm surges in the Northern Adriatic Sea has been implemented using the ECMWF EPS wind and MSLP fields as forcing in a storm surge model (HYPSE). The EMF has an accuracy similar to that of the single DF for predicting the peak SL values, though it uses forcing fields at a much lower resolution. The prediction of EMF is more robust than that of DF, meaning that hourly predictions have a slightly lower mean absolute and maximum errors. For these 10 events, the EPS probabilistic forecast is biased low and underestimates the uncertainty of the forecast. The low bias is inherited from the deterministic prediction. The EPS spread increases linearly with time and its evolution is proportional to the spread of the forcing fields. Finally, the EPS spread is correlated with the error of the EMF, meaning that events with large EPS spread are more likely to produce large errors in the EMF (and in the DF as well).