Power Data Operation Effectiveness Analysis Based on Multi-dimensional Analysis

Zhidong Deng, Yanyan Li, Wei Xing, Mingjie Zhang, Jian Gong
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Abstract

To reduce the absolute error of the effectiveness of power data operation analysis, build a more stable and multivariate analysis structure, and maximize the reliability of the overall analysis results, a new power data operation effectiveness analysis method based on multi-dimensional analysis is designed. Set up nodes and collect data. Design equivalent analysis links according to the amount of data, adopt the multi-dimensional analysis method, construct multi-dimensional data operation effectiveness analysis sovereignty model, and combine with directional processing mechanism to realize the power data operation effectiveness analysis. The test results show that compared with the traditional multi-mechanism data operation effectiveness analysis test group and the traditional data sovereignty operation effectiveness analysis test group, the absolute error of the effectiveness analysis of the multi-dimension analysis method is smaller, and the error value is only 1. This analysis method is more reliable and accurate in dealing with data operation and has practical application value.
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基于多维度分析的电力数据运行有效性分析
为了减少电力数据运行有效性分析的绝对误差,构建更加稳定、多元的分析结构,最大限度地提高整体分析结果的可靠性,设计了一种基于多维度分析的电力数据运行有效性分析新方法。安装节点和收集数据。根据数据量设计等效分析环节,采用多维分析方法,构建多维数据运营有效性分析主权模型,结合定向处理机制,实现权力数据运营有效性分析。试验结果表明,与传统多机制数据运行有效性分析试验组和传统数据主权运行有效性分析试验组相比,多维分析方法有效性分析的绝对误差较小,误差值仅为1。该分析方法在处理数据运算时更加可靠、准确,具有实际应用价值。
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