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首页> 外文期刊>IEEE Transactions on Power Systems >Integrating Model-Driven and Data-Driven Methods for Power System Frequency Stability Assessment and Control
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Integrating Model-Driven and Data-Driven Methods for Power System Frequency Stability Assessment and Control

机译:集成模型驱动和数据驱动方法进行电力系统频率稳定性评估和控制

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摘要

With increase of practical power system complexity, power system online stability assessment and control is more and more important. Application of the traditional model-driven methods is always limited by contradiction between accuracy and efficiency, while data-driven methods demonstrate strong abilities for the online decision-making support with advancement of various data mining techniques. Instead of direct application of data-driven methods in the power system, this paper first discusses feasible integration approaches for the model-driven and data-driven methods based on the existing achievements, and then, proposes to integrate both methods for the power system online frequency stability assessment and control. The integrated method consists of frequency dynamics prediction and load shedding procedure. In frequency dynamics prediction procedure, integration of system frequency response (SFR) model and the extreme learning machine (ELM)-based learning model is applied, where basic physical causality is kept in the SFR model and ELM is used to fit and correct error of the SFR. The ELM also plays a part in load shedding prediction model construction by digging out mapping relationship from samples. Finally, the proposed prediction and control scheme for the frequency stability is verified by simulations on WSCC 9-bus, New England 39-bus, and NPCC 140-bus system. Results show that the reliability, time efficiency, and accuracy are enhanced with the proposed method.
机译:随着实际电力系统复杂性的增加,电力系统在线稳定性评估和控制变得越来越重要。传统的模型驱动方法的应用始终受到准确性和效率之间矛盾的限制,而数据驱动方法则随着各种数据挖掘技术的发展而显示出强大的在线决策支持能力。本文不是基于数据驱动方法在电力系统中的直接应用,而是基于现有成果,讨论了模型驱动和数据驱动方法的可行集成方法,然后提出将两种方法在线集成到电力系统中。频率稳定性评估和控制。集成方法包括频率动态预测和减载过程。在频率动力学预测程序中,应用系统频率响应(SFR)模型和基于极限学习机(ELM)的学习模型的集成,其中基本物理因果关系保留在SFR模型中,并且ELM用于拟合和校正误差。 SFR。通过从样本中找出映射关系,ELM在减负荷预测模型的构建中也发挥了作用。最后,通过对WSCC 9总线,New England 39总线和NPCC 140总线系统的仿真,验证了所提出的频率稳定性预测和控制方案。结果表明,该方法提高了算法的可靠性,时间效率和准确性。

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