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

机译:一种提高动态等效电流等效的模型泛化能力的新方法

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摘要

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.
机译:随着可再生资源,大量分布式发电的发展(DG)单位渗透到销售网络。代替传统的被动PQ总线等价的,DG其特征在于主动分配网络(ADN)需要被适当建模为活性成分,以表示它的动态行为。尽管存在ADN相当于研究认为基于逆变器的DG单位型号,不确定因素的影响,如系统故障或意外事故,ADN和电网之间不放在模型研究。基于先前的动态等效ADN过程中,等效模型可能不足够稳健,以反映原始ADN和传输系统之间的相关影响。具体而言,等效模型可以基于历史分析故障不能预测未知故障:当故障条件改变时,ADN模型可能不被任何更多的利用。这种现象的术语为弱模型综合能力(MGA)。为了克服这些问题,本文提出了一种新的方法,以提高ADN的动态等效模型泛化能力。基于相关性和轨迹灵敏度分析的算法介绍,筛选出“关键参数”,然后建立一个包含多个故障的故障信息的数据库。这种多重故障和“关键参数”基于参数识别方案可以消除有效建模过程的影响污染。 ADN等效模型的MGA能够通过该方法来显著增加。还设置有样品结果修改IEEE两区域四机电力系统上的模拟情况,以验证MGA的改善。

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