核心概念
The author proposes using an LSTM-based ML model to predict systemic errors in storm surge forecasting models, leading to improved accuracy by correcting biases.
摘要
The content discusses the use of LSTM-based machine learning to enhance storm surge forecasting accuracy. The authors trained their model on historical storm data and tested it on hurricane Ian, showing significant improvements in forecasting accuracy. Various ML techniques were compared for bias correction in storm surge modeling.
The study highlights the potential of ML models to improve real-time forecasting and bias correction in physics-based simulation scenarios beyond storm surge forecasting. Different scenarios were considered, demonstrating the effectiveness of the proposed approach across various prediction window lengths.
Key metrics such as R2, MSE, RMSE, and MAE were used to evaluate model performance. The results show promising outcomes in improving water level predictions through ML bias correction.
统计
We trained our proposed ML model on a dataset of 61 historical storms in the coastal regions of the U.S.
Our model consistently improved the forecasting accuracy for hurricane Ian at all gauge station coordinates used for initial data.
By examining different subsets of training data from hurricanes with similar or different tracks, we found similar quality of bias correction with only six hurricanes.
The LSTM model outperformed other architectures like ANN and CNN for predicting storm surge levels at gauge stations.
The proposed ML architecture showed reasonable sea level predictions based on tidal station data under normal weather conditions.
The use of LSTM networks was explored for predicting wind waves from buoy stations data with promising results.