基于数据挖掘的电网分布可视化优化分析

Chengsi Wang
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引用次数: 0

摘要

中国智能配电技术的不断发展,带动了智能电网的蓬勃建设。不同的数据信息系统在配电网的应用中起着至关重要的作用,因此配电网的数据规模不断扩大,数据信息的复杂性日益增加。为了准确挖掘智能电网运维过程中的隐藏规律,保证智能电网的稳定运行,本研究利用数据挖掘相关技术,对电网可视化配电技术进行深入分析。结果表明,当前一项是意外停电或故障停电等不确定情况时,后一项的数据挖掘结果包括轻、空载配电变压器、重、计划停电,这些都是由于维护工作不佳造成的,因此应更多地采用可视化配电技术。本研究为电网可视化配电技术的优化提供了一定的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Visual Distribution Optimization of Power Grid Based on Data Mining
The continuous development of intelligent distribution technology in China has driven the vigorous construction of smart grid. Different data information systems play a vital role in the application of the distribution network, so the data scale of distribution network is expanding, and the complexity of data information is increasing. In order to accurately dig out the hidden laws from the operation and maintenance process of the smart grid, and ensure the stable operation of the smart grid, this study uses data mining related technologies to conduct an in-depth analysis of the visual power distribution technology of the grid. The results show that when the previous item is an uncertain situation such as unplanned power outages or faulty power outages, the data mining results of the latter item include light and no-load distribution transformers, heavy and planned power outages, which are caused by poor maintenance work, so more visual power distribution technology should be used. This study provides a certain reference for the optimization of power grid visualization distribution technology.
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