用于复杂工业电力系统建模的物理引导图神经网络

IF 8.9 1区 工程技术 Q1 ENGINEERING, MECHANICAL
Yi Di , Fujin Wang , Zhi Zhai , Zhibin Zhao , Xuefeng Chen
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引用次数: 0

摘要

在工业场景中的多维时间序列(MTS)任务中,由于建立物理模型的困难、高质量数据的稀缺性以及对模型准确性、鲁棒性和可解释性的高要求,出现了一些挑战。传统的物理模型和纯神经网络在处理这些挑战时表现出一定的局限性。物理信息神经网络(PINN)的出现缓解了这些问题。然而,在复杂的工业电力系统(CIPS)中,经典pin提出了新的挑战。控制CIPS的物理定律是庞大而极其复杂的。如果将这些规律转化为损失项,损失函数将变得复杂、冗余、难以优化,甚至会产生相互冲突的梯度方向和病态优化曲率。为了解决这一挑战,我们提出了一个物理引导图神经网络(PhyGNN)。图结构的一个优点是它们可以自然地表示像CIPS这样的复杂系统。PhyGNN利用这种能力作为桥梁,将物理信息直接集成到模型体系结构中,而不是将其嵌入到损失函数中。具体以航天器动力系统(SPS)为例进行研究,该系统是典型的CIPS系统。首先,构建了其物理模型,该模型包括八个子系统,并部署了多种保真策略。然后,将该模型的物理知识嵌入到所提出的PhyGNN中。最后,在我们的数据集XJTU-SPS上进行了各种对比实验和可视化分析。总的来说,这项工作的核心贡献在于物理指导的GNN方法。同时,还提供了全面的动力系统物理仿真模型和航天器动力系统数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PhyGNN: Physics guided graph neural network for complex industrial power system modeling
In multi-dimension time series (MTS) tasks within industrial scenarios, several challenges arise due to the difficulty of establishing physical models, the scarcity of high-quality data, and the high demands for model accuracy, robustness, and interpretability. Traditional physical models and pure neural networks exhibit certain limitations in dealing with these challenges. Physics informed neural networks (PINN) have emerged to alleviate these issues. However, in complex industrial power systems (CIPS), classical PINNs present new challenges. The physical laws governing CIPS are vast and extremely intricate. If these laws are converted into loss terms, the loss function becomes complex, redundant, and hard to optimize, even generates conflicting gradient directions and pathological optimization curvature. To address this challenge, we propose a physics guided graph neural network (PhyGNN). One advantage of graph structures is their natural representation of complex systems like CIPS. PhyGNN utilizes this capability as a bridge to integrate physical information directly into the model architecture rather than embedding it into the loss function. Specifically, the spacecraft power system (SPS) is selected as a case study, which is a typical CIPS. First, its physical model is constructed, which includes eight subsystems and deploys diverse fidelity strategies. Then, the physical knowledge of this model is embedded into the proposed PhyGNN. Finally, various comparative experiments and visual analyses are performed on our dataset XJTU-SPS. Overall, the core contribution of this work lies in a physics guided GNN method. Meanwhile, it also contributes a comprehensive physical simulation model for power systems, and a dataset of spacecraft power systems.
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来源期刊
Mechanical Systems and Signal Processing
Mechanical Systems and Signal Processing 工程技术-工程:机械
CiteScore
14.80
自引率
13.10%
发文量
1183
审稿时长
5.4 months
期刊介绍: Journal Name: Mechanical Systems and Signal Processing (MSSP) Interdisciplinary Focus: Mechanical, Aerospace, and Civil Engineering Purpose:Reporting scientific advancements of the highest quality Arising from new techniques in sensing, instrumentation, signal processing, modelling, and control of dynamic systems
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