Ensemble-Based Storm Surge Forecasting Models

Author:

Salighehdar Amin1,Ye Ziwen1,Liu Mingzhe1,Florescu Ionut1ORCID,Blumberg Alan F.2

Affiliation:

1. Hanlon Financial Systems Laboratory, Financial Engineering Division, Stevens Institute of Technology, Hoboken, New Jersey

2. Davidson Laboratory, Stevens Institute of Technology, Hoboken, New Jersey

Abstract

Abstract Accurate prediction of storm surge is a difficult problem. Most forecast systems produce multiple possible forecasts depending on the variability in weather conditions, possible temperature levels, winds, etc. Ensemble modeling techniques have been developed with the stated purpose of obtaining the best forecast (in some specific sense) from the individual forecasts. In this work a statistical methodology of evaluating the performance of multiple ensemble forecasting models is developed. The methodology is applied to predicting storm surge in the New York Harbor area. Data from three hurricane events collected from multiple locations in the New York Bay area are used. The methodology produces three key findings for the particular test data used. First, it is found that even the simplest possible way of creating an ensemble produces results superior to those of any single forecast. Second, for the data used and the events under study the methodology did not interact with any event at any location studied. Third, based on the methodology results for the data studied selecting the best-performing ensemble models for each specific location may be possible.

Funder

Port Authority of New York and New Jersey

Hanlon Laboratories

Publisher

American Meteorological Society

Subject

Atmospheric Science

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