A novel approach to improve model generalization ability in dynamic equivalent of active distribution network

Peng Wang, Zhenyuan Zhang, Qi Huang, Jian Li, Jianbo Yi, Weijen Lee
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引用次数: 3

Abstract

With the development of renewable resources, large amounts of Distributed Generation (DG) units penetrated into distribution network. Instead of traditional passive PQ bus equivalence, DG characterized Active Distribution Network (ADN) need to be appropriate modeled as active components to represents its dynamic behaviors. Though existed ADN equivalent research considered the inverter-based DG units model, the uncertainties impacts, such as system faults or contingencies, between ADN and grid are not to be investigated on the model. Based on previous dynamic equivalent of ADN process, the equivalent model may not robust enough to reflect the correlated impacts between original ADN and transmission system. To be specific, equivalent model cannot predict the unknown fault based on historical analyzed faults: when the fault condition changed, the ADN model may not be utilized any more. This phenomenon terms as weak Model Generalization Ability (MGA). In order to overcome the issues, this paper presents a novel approach to improve model generalization ability in dynamic equivalent of ADN. An algorithm based on correlation and trajectory sensitivity analysis are introduced to screen out “Key Parameters”, then a fault information database which contains multiple faults is established. This multiple faults and “Key Parameter” based parameter identification scheme can eliminate the influence contaminations on modeling process effectively. The MGA of ADN equivalent model is able to increase significantly through the proposed approach. A simulation case on modified IEEE two-area four-machine power system with sample results are also provided to verify the improvement of MGA.
一种提高有源配电网动态等效模型泛化能力的新方法
随着可再生能源的发展,大量的分布式发电机组进入配电网。与传统的无源PQ总线等效不同,DG特征有源配电网(ADN)需要适当地建模为有源组件来表示其动态行为。虽然已有的ADN等效研究考虑了基于逆变器的DG机组模型,但模型并未考虑ADN与电网之间的不确定性影响,如系统故障或突发事件。基于以往ADN过程的动态等效模型,其鲁棒性不足以反映原始ADN与传输系统之间的相关影响。具体来说,等效模型不能基于历史分析的故障来预测未知故障,当故障条件发生变化时,ADN模型可能不再被使用。这种现象称为弱模型泛化能力(MGA)。为了克服这些问题,本文提出了一种提高动态等价ADN模型泛化能力的新方法。引入基于关联和轨迹灵敏度分析的关键参数筛选算法,建立包含多个故障的故障信息库。这种基于多故障和“关键参数”的参数识别方案可以有效地消除污染对建模过程的影响。该方法能显著提高ADN等效模型的MGA。通过对改进后的IEEE二区四机电力系统的仿真,验证了MGA的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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