人工神经网络
估计
电能质量
谐波
国家(计算机科学)
功率(物理)
计算机科学
分布(数学)
统计物理学
电子工程
物理
人工智能
数学
工程类
算法
声学
量子力学
系统工程
数学分析
作者
P. Mack,Markus de Koster,Patrick Lehnen,Eberhard Waffenschmidt,Ingo Stadler
出处
期刊:Energies
[Multidisciplinary Digital Publishing Institute]
日期:2024-10-31
卷期号:17 (21): 5452-5452
被引量:1
摘要
In the transition from traditional electrical energy generation with mainly linear sources to increasing inverter-based distributed generation, electrical power systems’ power quality requires new monitoring methods. Integrating a high penetration of distributed generation, which is typically located in medium- or low-voltage grids, shifts the monitoring tasks from the transmission to distribution layers. Compared to high-voltage grids, distribution grids feature a higher level of complexity. Monitoring all relevant nodes is operationally infeasible and costly. State estimation methods provide knowledge about unmeasured locations by learning a physical system’s non-linear relationships. This article examines a new flexible, close-to-real-time concept of harmonic state estimation using synchronized measurements processed in a neural network. A physics-aware approach enhances a data-driven model, taking into account the structure of the electrical network. An OpenDSS simulation generates data for model training and validation. Different load profiles for both training and testing were utilized to increase the variance in the data. The results of the presented concept demonstrate high accuracy compared to other methods for harmonic orders 1 to 20.
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