The Analysis of a Power Information Management System Based on Machine Learning Algorithm

Daren Li, Jie Shen, Jiarui Dai, Yifan Xia
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Abstract

With the deepening reform of the power market, great progress has been made in informatization. Blockchain can improve the reliability of power management system (PMS) data processing. PMS informatization has become the basis for improving the quality and efficiency of project management and maximizing the social and economic benefits of the project. Due to the requirement of safe and stable power production, PMS attaches great importance to the application and implementation of information in power management, but does not attach enough importance to the informatization of power production management. Therefore, this article analyzes the current situation, characteristics, and existing problems of PMS through a machine learning algorithm, then constructs the design principles, and finally proposes the optimization path of PMS according to the principles. The information collection ability and system control ability of the optimized PMS were better than the original PMS. The information collection ability was 14.2% higher than the original, and the system control ability was 9.8% higher than the original. In general, both blockchain and machine learning can improve the data reliability of PMS.
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基于机器学习算法的电力信息管理系统分析
随着电力市场改革的不断深入,信息化建设取得了很大进展。区块链可以提高电源管理系统(PMS)数据处理的可靠性。PMS信息化已成为提高项目管理质量和效率,实现项目社会效益和经济效益最大化的基础。由于电力生产安全稳定的要求,PMS非常重视信息化在电力管理中的应用和实施,但对电力生产管理的信息化重视不够。因此,本文通过机器学习算法分析了PMS的现状、特点和存在的问题,然后构建了PMS的设计原则,最后根据这些原则提出了PMS的优化路径。优化后的PMS的信息采集能力和系统控制能力均优于原PMS。信息收集能力比原产品提高14.2%,系统控制能力比原产品提高9.8%。总的来说,区块链和机器学习都可以提高PMS的数据可靠性。
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