MLLGAO-PHDec 6, 2021

Flood Inflow Forecast Using L2-norm Ensemble Weighting Sea Surface Feature

arXiv:2112.03108v21 citations
Originality Incremental advance
AI Analysis

This work addresses flood forecasting for dam management, but it is incremental as it builds on existing methods with specific weight adjustments.

The authors tackled the problem of forecasting dam inflow for flood damage mitigation by proposing novel target inflow weights to create an ocean feature vector from sea surface images, which improved predictor importance stability. They applied this method to a dam in Japan's Kanto region, achieving accurate forecasts during the 2019 flood term.

It is important to forecast dam inflow for flood damage mitigation. The hydrograph provides critical information such as the start time, peak level, and volume. Particularly, dam management requires a 6-h lead time of the dam inflow forecast based on a future hydrograph. The authors propose novel target inflow weights to create an ocean feature vector extracted from the analyzed images of the sea surface. We extracted 4,096 elements of the dimension vector in the fc6 layer of the pre-trained VGG16 network. Subsequently, we reduced it to three dimensions of t-SNE. Furthermore, we created the principal component of the sea temperature weights using PCA. We found that these weights contribute to the stability of predictor importance by numerical experiments. As base regression models, we calibrate the least squares with kernel expansion, the quantile random forest minimized out-of bag error, and the support vector regression with a polynomial kernel. When we compute the predictor importance, we visualize the stability of each variable importance introduced by our proposed weights, compared with other results without weights. We apply our method to a dam at Kanto region in Japan and focus on the trained term from 2007 to 2018, with a limited flood term from June to October. We test the accuracy over the 2019 flood term. Finally, we present the applied results and further statistical learning for unknown flood forecast.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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