大数据背景下的电网数据智能化管理与应用

Gu Xihui
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引用次数: 0

摘要

随着大数据、云计算、物联网等新技术在智能电网建设中的普及,电力数据呈现爆发式增长。传统的电力企业依靠人力来收集数据,追讨欠款。新冠肺炎疫情期间,政府部门封闭管理、用电客户欠费、无停电等情况给恢复工作增加了难度。本文通过对客户历史支付数据、历史电费等数据的挖掘和分析,运用人工智能领域的深度学习算法,构建数学模型,制定商旅异化电费回收风险的防控策略。应用结果表明,新策略能有效降低客户拖欠金额,全面提升供电企业的精益化、数字化、智能化管理水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power grid data intelligent management and application under the background of big data
With the popularization of new technologies such as big data, cloud computing and the Internet of things in the construction of smart grid, power data is showing explosive growth. Traditional power enterprises rely on manpower to collect data and recover arrears. During the period of COVID-19, the closed management of government departments, the arrears of electricity customers and no power outages made the recovery work more difficult. In this paper, through the mining and analysis of customers’ historical payment data, historical electricity and other data, using the deep learning algorithm in the field of artificial intelligence, this paper constructs a mathematical model and formulates the prevention and control strategy of electricity charge recovery risk of business travel alienation. The application results show that the new strategy can effectively reduce the amount of customer arrears and comprehensively improve the lean, digital and intelligent management level of power supply enterprises.
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