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Cloud-based parallel power flow calculation using resilient distributed datasets and directed acyclic graph

机译:基于云的并行电流计算使用弹性分布式数据集和定向非循环图

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With the integration of distributed generation and the construction of cross-regional long-distance power grids, power systems become larger and more complex. They require faster computing speed and better scalability for power flow calculations to support unit dispatch. Based on the analysis of a variety of parallelization methods, this paper deploys the large-scale power flow calculation task on a cloud computing platform using resilient distributed datasets (RDDs). It optimizes a directed acyclic graph that is stored in the RDDs to solve the low performance problem of the MapReduce model. This paper constructs and simulates a power flow calculation on a large-scale power system based on standard IEEE test data. Experiments are conducted on Spark cluster which is deployed as a cloud computing platform. They show that the advantages of this method are not obvious at small scale, but the performance is superior to the stand-alone model and the MapReduce model for large-scale calculations. In addition, running time will be reduced when adding cluster nodes. Although not tested under practical conditions, this paper provides a new way of thinking about parallel power flow calculations in large-scale power systems.
机译:随着分布式发电和跨区域长距离电网的构造,电力系统变得越来越复杂。它们需要更快的计算速度和更好的功率流量计算可扩展性,以支持单位调度。根据各种并行化方法的分析,本文使用弹性分布式数据集(RDD)部署云计算平台上的大规模电力流量计算任务。它优化存储在RDD中的定向非循环图形以解决MapReduce模型的低性能问题。基于标准IEEE测试数据,本文构建并模拟了大型电力系统的电力流量计算。实验是在Spark集群上进行的,该集群部署为云计算平台。他们表明,这种方法的优势在小规模不明显,但性能优于独立模型和MapReduce模型,用于大规模计算。此外,添加群集节点时,将减少运行时间。虽然在实际条件下没有测试,但本文提供了一种关于大型电力系统并联电流计算的新方法。

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