基于知识和数据驱动的输电线路建模方法

Yanming Zhang;Lijun Jiang
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摘要

本文提出了一种新的基于知识和数据驱动的混合方案来确定输电线路(TL)的控制偏微分方程(PDE)。沿着TL的二维(2-D)电流和电压分布被用作输入数据。假设函数,包括可能出现在电报方程中的候选项,是基于感兴趣的TL系统的先验知识构建的。通过对二维电流和电压数据进行空间和时间导数,TL的控制偏微分方程仅由线性代数方程表示。岭回归用于通过从假设函数中提取有效项来确定TL的实际偏微分方程。通过三个基准示例,包括有损、非均匀和非线性TL,证明了该方法的准确性和有效性。结果验证了所提出的方案可以反演单位长度(p.-u-l)参数,并识别出控制偏微分方程。我们的工作为建立观测和理论TL模型之间的联系提供了一种有用的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Transmission Lines Using a Hybrid Knowledge-Based and Data-Driven Approach
This article presents a novel hybrid knowledge-based and data-driven scheme to determine the governing partial differential equation (PDE) for the transmission line (TL). The two-dimensional (2-D) current and voltage distributions along the TL are used as the input data. The hypothetical functions, including the candidate terms that may appear in the telegraphic equations, are built based on prior knowledge of the TL system of interest. Through the spatial and temporal derivatives performed on 2-D current and voltage data, the governing PDEs of TLs are solely represented by the linear algebraic equations. The ridge regression is employed to ascertain the actual PDEs of TLs via extracting the active terms from hypothetical functions. The accuracy and effectiveness of this approach are demonstrated through three benchmarked examples, including the lossy, nonuniform, and nonlinear TLs. The results verify that the proposed scheme can inverse the per-unit-length (p.-u.-l.) parameters and identify the governing PDEs. Our work offers a helpful technique to establish connections between observation and the theoretical TL model.
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