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基于遗传算法的特征加权技术用于支持向量机的电力系统事件分类

Power system events classification using genetic algorithm based feature weighting technique for support vector machine.

作者信息

Alimi Oyeniyi Akeem, Ouahada Khmaies, Abu-Mahfouz Adnan M, Rimer Suvendi

机构信息

Department of Electrical & Electronic Engineering Science, University of Johannesburg, Johannesburg 2006, South Africa.

Council for Scientific and Industrial Research, Pretoria, South Africa.

出版信息

Heliyon. 2021 Jan 12;7(1):e05936. doi: 10.1016/j.heliyon.2021.e05936. eCollection 2021 Jan.

Abstract

Currently, ensuring that power systems operate efficiently in stable and secure conditions has become a key challenge worldwide. Various unwanted events including injections and faults, especially within the generation and transmission domains are major causes of these instability menaces. The earlier operators can identify and accurately diagnose these unwanted events, the faster they can react and execute timely corrective measures to prevent large-scale blackouts and avoidable loss to lives and equipment. This paper presents a hybrid classification technique using support vector machine (SVM) with the evolutionary genetic algorithm (GA) model to detect and classify power system unwanted events in an accurate yet straightforward manner. In the proposed classification approach, the features of two large dimensional synchrophasor datasets are initially reduced using principal component analysis before they are weighted in their relevance and the dominant weights are heuristically identified using the genetic algorithm to boost classification results. Consequently, the weighted and dominant selected features by the GA are utilized to train the modelled linear SVM and radial basis function kernel SVM in classifying unwanted events. The performance of the proposed GA-SVM model was evaluated and compared with other models using key classification metrics. The high classification results from the proposed model validates the proposed method. The experimental results indicate that the proposed model can achieve an overall improvement in the classification rate of unwanted events in power systems and it showed that the application of the GA as the feature weighting tool offers significant improvement on classification performances.

摘要

目前,确保电力系统在稳定和安全的条件下高效运行已成为全球面临的一项关键挑战。包括注入和故障在内的各种不良事件,尤其是在发电和输电领域内的这些事件,是造成这些不稳定威胁的主要原因。操作人员越早识别并准确诊断这些不良事件,就能越快做出反应并及时采取纠正措施,以防止大规模停电以及避免人员伤亡和设备损失。本文提出了一种使用支持向量机(SVM)和进化遗传算法(GA)模型的混合分类技术,以准确而直接的方式检测和分类电力系统不良事件。在所提出的分类方法中,首先使用主成分分析对两个大维度同步相量数据集的特征进行降维,然后根据其相关性对特征进行加权,并使用遗传算法启发式地确定主导权重,以提高分类结果。因此,利用遗传算法加权和选择的主导特征来训练建模的线性支持向量机和径向基函数核支持向量机,以对不良事件进行分类。使用关键分类指标对所提出的遗传算法-支持向量机(GA-SVM)模型的性能进行了评估,并与其他模型进行了比较。所提出模型的高分类结果验证了所提出的方法。实验结果表明,所提出的模型可以在电力系统不良事件的分类率上实现整体提升,并且表明将遗传算法用作特征加权工具对分类性能有显著提升。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cd62/7810784/c945ace6dba9/gr1.jpg

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