用于管道水力瞬态模拟的知识启发型分层物理信息神经网络

Jian Du, Haochong Li, Qi Liao, Jun Shen, Jianqin Zheng, Yongtu Liang
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引用次数: 0

摘要

管道的高压运输过程需要精确的水力瞬态模拟工具,以防止出现松弛的管线流动和过压,从而危及管道运行。然而,目前的数值求解方法往往难以兼顾计算效率和精度。此外,很少有研究尝试针对输出大小不同和损失函数梯度不平衡的管道瞬态仿真,改革物理信息学习架构。为了应对这些挑战,我们提出了一种知识启发分层物理信息神经网络,用于多产品管道的水力瞬态模拟。所提出的模型将控制方程、边界条件和初始条件整合到训练过程中,以确保与物理规律保持一致。此外,为了提高神经网络的训练性能,还实现了输出的幅度转换和控制方程的等效转换。为了进一步解决具有固定权重的多个损失项的不平衡梯度问题,设计了一种分层训练策略。数值仿真表明,所提出的模型优于最先进的模型,在复杂的水力瞬态条件下仍能产生精确的仿真结果,平均绝对百分位误差降低了 87.8%,压力预测误差降低了 92.7%。因此,所提出的模型可以进行准确有效的水力瞬态分析,确保管道的安全运行。
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A Knowledge-Inspired Hierarchical Physics-Informed Neural Network for Pipeline Hydraulic Transient Simulation
The high-pressure transportation process of pipeline necessitates an accurate hydraulic transient simulation tool to prevent slack line flow and over-pressure, which can endanger pipeline operations. However, current numerical solution methods often face difficulties in balancing computational efficiency and accuracy. Additionally, few studies attempt to reform physics-informed learning architecture for pipeline transient simulation with magnitude different in outputs and imbalanced gradient in loss function. To address these challenges, a Knowledge-Inspired Hierarchical Physics-Informed Neural Network is proposed for hydraulic transient simulation of multi-product pipelines. The proposed model integrates governing equations, boundary conditions, and initial conditions into the training process to ensure consistency with physical laws. Furthermore, magnitude conversion of outputs and equivalent conversion of governing equations are implemented to enhance the training performance of the neural network. To further address the imbalanced gradient of multiple loss terms with fixed weights, a hierarchical training strategy is designed. Numerical simulations demonstrate that the proposed model outperforms state-of-the-art models and can still produce accurate simulation results under complex hydraulic transient conditions, with mean absolute percentage errors reduced by 87.8\% and 92.7 \% in pressure prediction. Thus, the proposed model can conduct accurate and effective hydraulic transient analysis, ensuring the safe operation of pipelines.
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