基于人工智能的专线专用变压器客户负荷分析与应用

Ma Jie, Sun Shiming, Cen Hongxing, Qian Hanjia, Wang Xiaofei, Zhou Mengqi
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引用次数: 0

摘要

本研究通过对大数据技术处理得到的带有专用线路和专用变压器的客户负荷功率曲线特征进行分析,得到典型用电量行业负荷功率的时变特征和用电量行业构成比例。在此基础上,提出了一种基于人工智能的系统自动识别方法,实现了对工厂生产状况的实时掌握。在疫情特殊时期,为江苏省及其他城市电力公司掌握大型企业生产情况提供了强有力的技术支持。从长远来看,本文对基于客车的负荷模型识别和聚类分析技术的研究,将构成今后客车负荷预测工作的基础。此外,它还将成为提供与电力行业相关的增值服务的良好基础设施。
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Analysis and Application of Customer Load with Special Line and Private Transformer Based on Artificial Intelligence
In this study the customer load power curve characteristics with special line and private transformer, which can be obtained by big data technology processing, are analyzed for getting the time-varying characteristics of load power in typical power consumption industry and composition proportion of power consumption industry. Furthermore, an approach for systems automatic identification using artificial inteligence was proposed, so that the situation regarding the production of a factory is possible to grasp in real time. In the special period of the epidemic situation, it has provided a strong technical support for the power companies in Jiangsu Province and other cities to master the production situation of large-scale enterprises. In the long term, research into load model identification and cluster analysis technology based on bus in this paper, will constitute the basis of future work in bus load forecasting. Also it will be a good infrastructure for making value added services related to electricity industry.
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