论文标题
物理引导的复发图网络,用于预测河网络中的流量和温度
Physics-Guided Recurrent Graph Networks for Predicting Flow and Temperature in River Networks
论文作者
论文摘要
本文提出了一种物理引导的机器学习方法,该方法结合了先进的机器学习模型和基于物理的模型,以改善河网络中水流和温度的预测。我们首先构建了一个经常的图形网络模型,以捕获河网络中多个细分市场之间的相互作用。然后,我们提出了一种预训练技术,该技术将知识从基于物理的模型转移到初始化机器学习模型并学习流量和热力学的物理学。我们还提出了一种新的损失功能,可以平衡不同河段的性能。我们证明了所提出的方法在预测特拉华河盆地子集中温度和水流方面的有效性。特别是,我们表明,所提出的方法比最先进的物理模型提高了33 \%/14 \%的改善,并且使用非常稀疏的(0.1 \%)观察数据进行培训数据,比传统的机器学习模型(例如,长期术语内存神经网络)在温度/流量预测中的24 \%/14 \%。该方法还显示出在概括到不同季节或具有不同流量范围的河段时产生更好的性能。
This paper proposes a physics-guided machine learning approach that combines advanced machine learning models and physics-based models to improve the prediction of water flow and temperature in river networks. We first build a recurrent graph network model to capture the interactions among multiple segments in the river network. Then we present a pre-training technique which transfers knowledge from physics-based models to initialize the machine learning model and learn the physics of streamflow and thermodynamics. We also propose a new loss function that balances the performance over different river segments. We demonstrate the effectiveness of the proposed method in predicting temperature and streamflow in a subset of the Delaware River Basin. In particular, we show that the proposed method brings a 33\%/14\% improvement over the state-of-the-art physics-based model and 24\%/14\% over traditional machine learning models (e.g., Long-Short Term Memory Neural Network) in temperature/streamflow prediction using very sparse (0.1\%) observation data for training. The proposed method has also been shown to produce better performance when generalized to different seasons or river segments with different streamflow ranges.