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Neural Network Based Early Warning System for an Emerging Blackout in Smart Grid Power Networks

机译:基于神经网络的智能电网电网新出现的停电预警系统

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Worldwide power blackouts have attracted great attention of researchers towards early warning techniques for cascading failure in power grid. The key issue is how to analyse, predict and control cascading failures in advance and prevent system against emerging blackouts. This paper proposes a model which analyse power flow of the grid and predict cascade failure in advance with the integration of Artificial Neural Network (ANN) machine learning tool. The Key contribution of this paper is to introduce machine learning concept in early warning system for cascade failure analysis and prediction. Integration of power flow analysis with ANN machine learning tool has a potential to make present system more reliable which can prevent the grid against blackouts. An IEEE 30 bus test bed system has been modeled in powerworld and used in this paper for preparation of historical blackout data and validation of proposed model. The proposed model is a step towards realizing smart grid via intelligent ANN prediction technique.
机译:全球电力停电引起了研究人员对早期预警技术的极大关注,以便在电网中级联失效。关键问题是如何提前分析,预测和控制级联故障,防止系统对新兴的停电。本文提出了一种分析电网电流的模型,并通过人工神经网络(ANN)机器学习工具的集成预先预测级联故障。本文的主要贡献是在预警系统中引入机器学习概念,以进行级联故障分析和预测。随着ANN机器学习工具的电力流量分析的集成有可能使现有系统更加可靠,这可以防止电网对漏洞。 IEEE 30总线测试床系统已在PowerWorld中建模,并用于本文用于准备历史停电数据和提出模型的验证。所提出的模型是通过智能ANN预测技术实现智能电网的步骤。

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