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Transient Stability Assessment of Power System Based on XGBoost and Factorization Machine

机译:基于XGBoost和分解机的电力系统瞬态稳定性评估

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摘要

As the deployment of wide-area measurement systems (WAMS) expands, data-driven methods are playing an increasingly important role in transient stability assessment (TSA). However, if the measured data is disturbed by noise or the topological structure of the power system changes, the performance of the model based on data-mining would decline so that it could not meet the needs of real-world scenarios. In this paper, we develop a TSA methodology based on extreme gradient boosting (XGBoost) and factorization machine (FM). Utilizing XGBoost to complete automatically the feature construction and transform the power flow into a sparse matrix. The influence of noise can be reduce due to the sparsity of the new feature set. On this basis, FM algorithm, which has advantage in processing the large sparse matrix, is introduced into the model to complete fault classification. Furthermore, the feature crossing function of FM further mines the interactive information of the spatio-temporal features. For changed topology scenarios, we propose a extended-training set scheme. Adding some pivotal data of topology changes to the training set improves the robustness of the model. Compared with existing studies, the proposed assessment model based on XGBoost-FM not only has the better generalization performance in the case of noise interference or changed topology, but also has the least time consumption and complexity.
机译:随着广域测量系统(WAMS)的部署扩展,数据驱动方法在瞬态稳定性评估(TSA)中扮演越来越重要的作用。但是,如果测量的数据受到噪声的干扰或电力系统的拓扑结构的变化,则基于数据采矿的模型的性能将下降,以便它无法满足现实世界方案的需求。在本文中,我们基于极端梯度升压(XGBoost)和分解机(FM)开发了TSA方法。利用XGBoost自动完成功能构造并将电源流变为稀疏矩阵。由于新功能集的稀疏性,噪声的影响可以减少。在此基础上,将在处理大稀疏矩阵时具有优势的FM算法,以完成故障分类。此外,FM的特征交叉功能进一步挖掘了时空特征的交互式信息。对于更改的拓扑情景,我们提出了一种扩展培训集计划。在培训集中添加一些拓扑更改的关键数据可以提高模型的稳健性。与现有研究相比,基于XGBoost-FM的建议评估模型不仅在噪声干扰或改变拓扑的情况下具有更好的泛化性能,而且还具有最少的消耗和复杂性。

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