State Key Laboratory of Water Resources Engineering and Management, Wuhan University, Wuhan 430072, China.
State Key Laboratory of Water Resources Engineering and Management, Wuhan University, Wuhan 430072, China.
Sci Total Environ. 2023 Sep 15;891:164494. doi: 10.1016/j.scitotenv.2023.164494. Epub 2023 May 26.
Due to a small proportion of observations, reliable and accurate flood forecasts for large floods present a fundamental challenge to artificial neural network models, especially when the forecast horizons exceed the flood concentration time of a river basin. This study proposed for the first time a Similarity search-based data-driven framework, and takes the advanced Temporal Convolutional Network based Encoder-Decoder model (S-TCNED) as an example for multi-step-ahead flood forecasting. A total of 5232 hourly hydrological data were divided into two datasets for model training and testing. The input sequence of the model included hourly flood flows of a hydrological station and rainfall data (traced back to the previous 32 h) of 15 gauge stations, and the output sequence stepped into 1- up to 16-hour-ahead flood forecasts. A conventional TCNED model was also built for comparison purposes. The results demonstrated that both TCNED and S-TCNED could make suitable multi-step-ahead flood forecasts, while the proposed S-TCNED model not only could effectively mimic the long-term rainfall-runoff relationship but also could provide more reliable and accurate forecasts of large floods than the TCNED model even in extreme weather conditions. There is a significant positive correlation between the mean sample label density improvement and the mean Nash-Sutcliffe Efficiency (NSE) improvement of the S-TCNED over the TCNED at the long forecast horizons (13 h up to 16 h). Based on the analysis of the sample label density, it is found that the similarity search largely improves the model performance by enabling the S-TCNED model to learn the development process of similar historical floods in a targeted manner. We conclude that the proposed S-TCNED model that converts and associates the previous rainfall-runoff sequence with the forecasting runoff sequence under a similar scenario can enhance the reliability and accuracy of flood forecasts while extending the length of forecast horizons.
由于观测数据的比例较小,对于大型洪水,可靠和准确的洪水预测对人工神经网络模型来说是一个基本挑战,特别是当预测时间超过流域洪水集中时间时。本研究首次提出了一种基于相似性搜索的数据驱动框架,并以先进的基于时间卷积网络的编解码器模型(S-TCNED)为例,进行多步洪水预测。总共 5232 个小时的水文数据被分为两个数据集,用于模型训练和测试。模型的输入序列包括一个水文站的每小时洪水流量和 15 个测量站的降雨数据(追溯到前 32 小时),输出序列分为 1 至 16 小时的洪水预测。还建立了一个传统的 TCNED 模型进行比较。结果表明,TCNED 和 S-TCNED 都可以进行合适的多步洪水预测,而所提出的 S-TCNED 模型不仅可以有效地模拟长期的降雨-径流关系,而且即使在极端天气条件下,也可以比 TCNED 模型提供更可靠和准确的大型洪水预测。在较长的预测时间(13 小时至 16 小时),S-TCNED 相对于 TCNED 的平均样本标签密度提高和平均纳什-苏特克里夫效率(NSE)提高之间存在显著的正相关关系。通过对样本标签密度的分析,发现相似性搜索通过使 S-TCNED 模型有针对性地学习类似历史洪水的发展过程,极大地提高了模型性能。我们得出结论,所提出的 S-TCNED 模型可以将先前的降雨-径流序列转换并关联到类似情景下的预测径流序列,从而提高洪水预测的可靠性和准确性,同时延长预测时间。