Febrian Rekzi D, Kim Wanyub, Lee Yangwon, Kim Jinsoo, Choi Minha
Department of Global Smart City, Sungkyunkwan University, Suwon 440-746, Republic of Korea.
Major of Geomatics Engineering, Division of Earth Environmental System Science, Pukyong National University, Busan 48513, Republic of Korea.
Sensors (Basel). 2025 Apr 16;25(8):2503. doi: 10.3390/s25082503.
Accurate flood monitoring and forecasting techniques are important and continue to be developed for improved disaster preparedness and mitigation. Flood estimation using satellite observations with deep learning algorithms is effective in detecting flood patterns and environmental relationships that may be overlooked by conventional methods. Soil Moisture Active Passive (SMAP) fractional water (FW) was used as a reference to estimate flood areas in a long short-term memory (LSTM) model using a combination of soil moisture information, rainfall forecasts, and floodplain topography. To perform flood modeling in LSTM, datasets with different spatial resolutions were resampled to 30 m spatial resolution using bicubic interpolation. The model's efficacy was quantified by validating the LSTM-based flood inundation area with a water mask from Senti-nel-1 SAR images for regions with different topographic characteristics. The average area under the curve (AUC) value of the LSTM model was 0.93, indicating a high accuracy estimation of FW. The confusion matrix-derived metrics were used to validate the flood inundation area and had a high-performance accuracy of ~0.9. SMAP FW showed optimal performance in low-covered vegetation, seasonal water variations and flat regions. The estimates of flood inundation areas show the methodological promise of the proposed framework for improved disaster preparedness and resilience.
精确的洪水监测和预报技术非常重要,并且仍在不断发展以加强灾害防范和减轻灾害影响。利用深度学习算法结合卫星观测进行洪水估算是有效的,能够检测到传统方法可能忽略的洪水模式和环境关系。在一个长短期记忆(LSTM)模型中,使用土壤湿度信息、降雨预报和洪泛区地形的组合,将土壤湿度主动被动(SMAP)分数水(FW)用作估算洪水区域的参考。为了在LSTM中进行洪水建模,使用双三次插值将不同空间分辨率的数据集重采样到30米的空间分辨率。通过使用哨兵 - 1合成孔径雷达(SAR)图像的水掩码对具有不同地形特征区域的基于LSTM的洪水淹没区域进行验证,来量化模型的有效性。LSTM模型的曲线下面积(AUC)平均值为0.93,表明对FW的估计具有较高的准确性。源自混淆矩阵的指标用于验证洪水淹没区域,其高性能准确率约为0.9。SMAP FW在植被覆盖度低、季节性水位变化和平坦地区表现出最佳性能。洪水淹没区域的估计显示了所提出框架在改进灾害防范和恢复力方面的方法前景。