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Big Data Storage and Parallel Analysis of Grid Equipment Monitoring System

机译:电网设备监控系统的大数据存储与并行分析

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With the analysis on data feature of grid equipment operation monitoring, this work focuses on discussing the big data storage scheme for grid equipment online monitoring data, and describes optimization measure of grid monitoring data analysis. Based on the characteristics of large data scale, multiple data types and low value density with the online monitoring data, we provide a big data storage scheme based on HDFS cloud platform using consistent hashing. Meanwhile, we also employ a multi-channel data acquisition system using multiscale multivariate entropy as the feature extraction algorithm of the multi-source power grid monitoring data. To validate the efficiency of the algorithm, we perform experiments using power grid equipment ledger data, chromatographic hydrocarbons data of transformer oil, microclimate data, and transformer vibration data for association analysis. The big data storage scheme and the feature extraction algorithm proved that it could reduce the communication overhead between storage nodes, efficiently improve system performance, and is suitable for the actual application of power grid monitoring system.
机译:随着网格设备操作监控数据特征的分析,这项工作侧重于讨论网格设备在线监测数据的大数据存储方案,并描述了网格监测数据分析的优化测量。基于大数据刻度的特性,具有在线监测数据的多种数据类型和低值密度,我们提供了一种基于HDFS云平台的大数据存储方案,使用一致散列。同时,我们还采用了多通道数据采集系统,该系统使用多尺度多变量熵作为多源电网监测数据的特征提取算法。为了验证算法的效率,我们使用电网设备分类账数据,变压器油,微气候数据和变压器振动数据进行关联分析的电网数据,色谱碳氢化合物数据进行实验。大数据存储方案和特征提取算法证明它可以降低存储节点之间的通信开销,有效地提高系统性能,适用于电网监控系统的实际应用。

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