Enhancing the performance of runoff prediction in data-scarce hydrological domains using advanced transfer learning

IF 12.4 Q1 ENVIRONMENTAL SCIENCES
Songliang Chen , Qinglin Mao , Youcan Feng , Hongyan Li , Donghe Ma , Yilian Zhao , Junhui Liu , Hui Cheng
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引用次数: 0

Abstract

Accurate hydrological predictions are often hindered by the lack of stream gauges in data-scarce regions, where traditional transfer learning (TL) models like Long Short-Term Memory (LSTM) networks often face limitations due to reduced accuracy and adaptability. To enhance runoff prediction in such regions, we developed DAformer, a novel TL approach that integrates domain adversarial neural networks with the Informer model. Trained on comprehensive runoff data from U.S. basins, DAformer was applied to three basins in Chile and the Chaersen basin in China, demonstrating an effective transfer from data-rich to data-scarce environments. Results show that DAformer significantly outperforms LSTM-based models, improving forecast accuracy by 16.1% for 1-day lead time and by 100.5% for 5-day lead time. These improvements indicate that the DAformer model not only enhances prediction accuracy but also holds substantial practical implications for flood risk management and water resource planning in regions with limited data availability. By clustering basins based on Shuttle Radar Topography Mission (SRTM) and other geographical data, we found that relying on multiple source basins further enhances the performance. DAformer, therefore, serves as a robust and scalable method for enhancing runoff prediction for regions with limited data.

Abstract Image

利用高级迁移学习提高数据稀缺水文领域的径流预测性能
在数据稀缺的地区,精确的水文预测往往受到缺乏溪流测量数据的阻碍,而传统的迁移学习(TL)模型(如长短期记忆(LSTM)网络)往往由于精度和适应性降低而面临局限。为了提高此类地区的径流预测能力,我们开发了 DAformer,这是一种将域对抗神经网络与 Informer 模型相结合的新型 TL 方法。DAformer 在美国流域的综合径流数据上进行了训练,并应用于智利的三个流域和中国的柴尔森流域,展示了从数据丰富环境到数据稀缺环境的有效转换。结果表明,DAformer 的性能明显优于基于 LSTM 的模型,1 天提前期的预测精度提高了 16.1%,5 天提前期的预测精度提高了 100.5%。这些改进表明,DAformer 模型不仅提高了预测精度,而且对数据有限地区的洪水风险管理和水资源规划具有重要的实际意义。通过基于航天飞机雷达地形图任务(SRTM)和其他地理数据对流域进行聚类,我们发现依靠多源流域可进一步提高性能。因此,DAformer 是一种稳健且可扩展的方法,可用于加强数据有限地区的径流预测。
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来源期刊
Resources Environment and Sustainability
Resources Environment and Sustainability Environmental Science-Environmental Science (miscellaneous)
CiteScore
15.10
自引率
0.00%
发文量
41
审稿时长
33 days
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