首页> 外文会议>Probabilistic Methods Applied to Power Systems, 2008. PMAPS '08 >Artificial Neural Networks Applied to Reliability and Well-Being Assessment of Composite Power Systems
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Artificial Neural Networks Applied to Reliability and Well-Being Assessment of Composite Power Systems

机译:人工神经网络在复合电力系统可靠性和幸福感评估中的应用

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This paper presents a new methodology for assessing both reliability and well-being indices for composite generation and transmission systems. Firstly, a transmission network reduction is applied to find an equivalent for assessing composite reliability for practical large power systems. After that, in order to classify the operating states, Artificial Neural Networks (ANNs) based on Group Method Data Handling (GMDH) techniques are used to capture the patterns of the operating states, during the beginning of the non-sequential Monte Carlo simulation (MCS). The idea is to provide the simulation process with an intelligent memory, based only on polynomial parameters, to speed up the evaluation of the operating states. For the conventional reliability assessment, the ANNs are used to classify the operating states into success and failure. However, for the well-being analysis, only success states are classified into healthy and marginal by the ANNs. The proposed methodology is applied to the IEEE Reliability Test System 1996 and to a configuration of the Brazilian South- Southeastern System.
机译:本文提出了一种用于评估复合发电和输电系统的可靠性和福祉指标的新方法。首先,通过减少传输网络来找到用于评估实际大型电力系统的综合可靠性的等效项。之后,为了对运行状态进行分类,在非顺序蒙特卡洛模拟的开始阶段,使用基于组方法数据处理(GMDH)技术的人工神经网络(ANN)来捕获运行状态的模式( MCS)。这个想法是为仿真过程提供仅基于多项式参数的智能存储器,以加快对运行状态的评估。对于常规的可靠性评估,使用ANN将操作状态分类为成功和失败。然而,对于幸福感分析,人工神经网络仅将成功状态分类为健康状态和边缘状态。所提出的方法适用于IEEE可靠性测试系统1996和巴西的东南系统的配置。

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