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A novel application of parallel betweenness centrality to power grid contingency analysis

机译:电网应急分析对电网平行度平行度量的新颖应用

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In Energy Management Systems, contingency analysis is commonly performed for identifying and mitigating potentially harmful power grid component failures. The exponentially increasing combinatorial number of failure modes imposes a significant computational burden for massive contingency analysis. It is critical to select a limited set of high-impact contingency cases within the constraint of computing power and time requirements to make it possible for real-time power system vulnerability assessment. In this paper, we present a novel application of parallel betweenness centrality to power grid contingency selection. We cross-validate the proposed method using the model and data of the western US power grid, and implement it on a Cray XMT system - a massively multithreaded architecture - leveraging its advantages for parallel execution of irregular algorithms, such as graph analysis. We achieve a speedup of 55 times (on 64 processors) compared against the single-processor version of the same code running on the Cray XMT. We also compare an OpenMP-based version of the same code running on an HP Superdome shared-memory machine. The performance of the Cray XMT code shows better scalability and resource utilization, and shorter execution time for large-scale power grids. This proposed approach has been evaluated in PNNL's Electricity Infrastructure Operations Center (EIOC). It is expected to provide a quick and efficient solution to massive contingency selection problems to help power grid operators to identify and mitigate potential widespread cascading power grid failures in real time.
机译:在能量管理系统中,通常进行应急分析,用于识别和减轻潜在有害的电网组件故障。失效模式的指数增加的组合数对大规模应急分析产生了显着的计算负担。在计算电源和时间要求的约束范围内选择一组有限的高冲击应刻病例,以使实时电力系统漏洞评估成为可能。在本文中,我们在电网应急选择中提出了平行的平行度量。我们使用西方美国电网的模型和数据交叉验证所提出的方法,并在CRAY XMT系统上实现它 - 一种大量多线程架构 - 利用其对不规则算法的并行执行的优点,例如图形分析。与在Cray XMT上运行的同一代码的单处理器版本相比,我们实现了55次(64个处理器)的加速。我们还比较在HP SuperDome共享存储器上运行的同一代码的基于OpenMP的版本。 CRAY XMT代码的性能显示出更好的可扩展性和资源利用率,以及大型电网的更短的执行时间。该提出的方法已在PNNL的电力基础设施运营中心(EIOC)中进行了评估。预计将为大规模应急选择问题提供快速有效的解决方案,以帮助电网运营商实时识别和减轻潜在的广泛级联电网故障。

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