基于数据挖掘的短期电力负荷风险预测分析

    Prediction of Short-Term Load Based on Big Data Mining

    • 摘要: 电力负荷风险越来越成为电力生产行业关注的热点,传统的电力负荷风险预测仅仅从单因素测评台区的风险度,缺乏全面和系统性.因此,传统的预测方法,不能准确地预测风险因素造成的电力故障隐患.为解决此问题,从供电局客服数据、机器监测台区记录、天气等多数据源着手,对电力负荷风险进行分析和预测.首先,对数据进行清洗和分类.然后,利用K-Mean聚类筛选出与电力负荷相关性强的因素作为模型的变量.并在此基础上,构建基于贝叶斯判别的台区电力风险预测模型.通过数据实验,该模型能够以99.53%的准确度来预估台区的负荷风险,从而进行有效的电力故障预测判断,为电力企业传送电的风险防范和控制决策提供支持,降低客户的用电故障,提高客户满意度.

       

      Abstract: The risk of power load becomes the hot spot in the electric power industry; however, due to the single factor evaluation, the traditional power load forecasting model is not adequately comprehensive and systematic. Hence, it cannot accurately predict the risk and may cause hidden danger of power failures. To address this issue, the risk of power load is analyzed and forecast by collecting data from multiple sources:customer service center, machine, and historical weather records and so on. First by cleaning and sorting the data and then by the K-Mean clustering, variables are chosen which have strong correlation with risk degree of transformer to construct the Bayesian discriminant models. The experimental results show that this model can accurately predict the risk of transformer at a certain probability of 99.53%. In the practical aspect, this model can provide prevention scheme and control decisions to power supply security and contribute to reduce customer's electricity failure and improve customer satisfaction.

       

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