数据驱动的分销网络精益管理

Jiao Hao, Chen Jinming, Guo Yajuan
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引用次数: 2

摘要

本文提出了配电网“数据驱动、精益化、闭环”的管理理念,并对如何实现配电网“数据驱动、精益化、闭环”的管理进行了阐述,如图1所示。首先,构建大数据平台,对多源数据进行整合和组合。其次,应用数据挖掘、机器学习、数据可视化等大数据分析技术解决配电网生产中的问题。例如,借助来自不同设备和系统的多源信息,可以找到故障的准确位置。通过历史数据分析,我们还可以了解配电网的风险点。最后,本文阐述了如何基于大数据平台和大数据分析方法,在资产、运维、投资等领域推进配电网精益化管理。此外,反馈过程在应用程序和数据收集之间架起了一座桥梁,进一步提高了数据质量。这些管理措施已经在江苏的几个城市进行了试点。结果表明,该方法能够显著提高供电可靠性,降低运行成本。给出了两个实际案例来说明它们是如何工作的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven lean Management for Distribution Network
This paper proposes a concept of “data-driven, lean-oriented and closed-loop” management for distribution network and explain how to implement this kind of management, as shown in fig. 1Firstly, a big data platform is constructed to integrate and combine the multi-source data. Secondly, big data analysis technologies such as data mining, machine learning and data visualization are applied to solve problems in distribution network production. For example, accurate location of the fault can be found with help of multisource information from different devices and systems. And we can also be aware of the risk points in distribution network through history data analysis. Finally, this Paper explains how to promote lean management of distribution network in the fields of asset, operation, maintenance and investment based on the big data platform and big data analysis methods. In addition, the feedback procedure sets up a bridge between application and data collecting, which further improve the data quality. Those management measure have been piloted in several cities in Jiangsu. The result proves that they can improve power supply reliability and reduce operating costs significantly. Two practical cases are given to show how they work.
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