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Stochastic Configuration Networks Based Adaptive Storage Replica Management for Power Big Data Processing

机译:基于随机配置网络的功率大数据处理的自适应存储副本管理

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摘要

In the power industry, processing business big data from geographically distributed locations, such as online line-loss analysis, has emerged as an important application. How to achieve highly efficient big data storage to meet the requirements of low latency processing applications is quite challenging. In this paper, we propose a novel adaptive power storage replica management system, named PARMS, based on stochastic configuration networks (SCNs), in which the network traffic and the data center (DC) geodistribution are taken into consideration to improve data real-time processing. First, as a fast learning model with less computation burden and sound prediction performance, the SCN model is employed to estimate the traffic state of power data networks. Then, a series of data replica management algorithms is proposed to lower the effects of limited bandwidths and a fixed underlying infrastructure. Finally, the proposed PARMS is implemented using data-parallel computing frameworks (DCFs) for the power industry. Experiments are carried out in an electric power corporation of 230 million users, China Southern power grid, and the results show that our proposed solution can deal with power big data storage efficiently and the job completion times across geodistributed DCs are reduced by 12.19 on average.
机译:在电力行业中,处理业务大数据从地理分布的位置,如在线线路丢失分析,已成为一个重要的应用。如何实现高效的大数据存储以满足低延迟处理应用的要求是非常具有挑战性的。在本文中,我们提出了一种基于随机配置网络(SCNS)的名为PARMS的新型自适应电力存储副本管理系统,其中考虑了网络流量和数据中心(DC)地理分布,以改善数据实时加工。首先,作为具有较少计算负担和声音预测性能的快速学习模型,使用SCN模型来估计电力数据网络的交通状态。然后,提出了一系列数据副本管理算法,以降低有限带宽和固定底层基础设施的影响。最后,使用用于电力行业的数据并行计算框架(DCF)来实现所提出的PARMS。实验在电力公司中进行了2.3亿用户,中国南方电网,结果表明,我们所提出的解决方案可以有效地处理电力大数据存储,并且平均地理位置的DC的工作完成时间减少了12.19。

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