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High-performance predictor for critical unstable generators based on scalable parallelized neural networks

机译:基于可扩展并行神经网络的关键不稳定发电机的高性能预测器

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摘要

A high-performance predictor for critical unstable generators (CUGs) of power systems is presented in this paper. The predictor is driven by the MapReduce based parallelized neural networks. Specifically, a group of back propagation neural networks (BPNNs), fed by massive response trajectories data, are efficiently organized and concurrently trained in Hadoop to identify dynamic behavior of individual generator. Rather than simply classifying global stability of power systems, the presented approach is able to distinguish unstable generators accurately with a few cycles of synchronized trajectories after fault clearing, enabling more in-depth emergency awareness based on wide-area implementation. In addition, the technique is of rich scalability due to Hadoop framework, which can be deployed in the control centers as a high-performance computing infrastructure for real-time instability alert. Numerical examples are studied using NPCC 48-machines test system and a realistic power system of China.
机译:本文提出了一种用于电力系统关键不稳定发电机(CUG)的高性能预测器。预测器由基于MapReduce的并行神经网络驱动。具体来说,一组由大量响应轨迹数据提供的反向传播神经网络(BPNN)在Hadoop中进行了有效地组织和并行训练,以识别单个发电机的动态行为。提出的方法不仅可以简单地对电力系统的整体稳定性进行分类,还可以在清除故障后通过同步轨迹的几个周期准确地识别不稳定的发电机,从而基于广域实施实现更深入的应急意识。此外,由于采用了Hadoop框架,该技术具有丰富的可伸缩性,可以将其作为实时不稳定警报的高性能计算基础结构部署在控制中心中。使用NPCC 48机测试系统和中国的实际动力系统研究了数值示例。

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