基于超短期负荷预测的改进数据流在线分割

Q1 Engineering 电网技术 Pub Date : 2014-07-05 DOI:10.13335/J.1000-3673.PST.2014.07.046
Conglan Tang, Jiping Lu, Yingzhao Xie, Zhang Lu
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引用次数: 7

摘要

为了提高超短期负荷预测的实时性和准确性,满足电网对实时负荷预测的更高要求,提出了一种基于改进数据流在线分割的超短期负荷预测方法。该方法基于负荷发展的时间趋势,利用实时数据流处理进行超短期预测,并结合短期负荷预测结果,对分段点的实时预测结果进行校正,其中短期负荷预测结果包含是否因素和负荷周期特性的影响。该方法具有快速的分割和预测能力,避免了重复建模,提高了预测速度;对分割点进行实时校正和处理,提高了历史信息的利用率,减少了分割点的误差,使预测精度保持在较好的水平。采用实际负荷数据对所提模型的有效性进行了验证,验证结果表明,所提模型的负荷预测精度和速度均优于几种传统的超短期负荷预测算法,且可减小负荷拐点处的预测误差,并能适应天气的突然变化。
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Improved Data Stream On-Line Segmentation Based Ultra Short-Term Load Forecasting
To improve both realtime performance and accuracy of ultra short-term load forecasting and to cope with the higher requirement of power grid on realtime load forecasting, based on improved data stream on-line segmentation an ultra short-term load forecasting method is proposed. Based on the time trend of load development, the realtime data stream processing is utilized in the proposed method to perform ultra short-term forecasting, then combining with the results of short-term load forecasting, which contain the whether factors and the effect of load cycle property, the realtime forecasting result at the segmentation point is corrected. The fast segmentation and forecasting ability of the proposed method avoid repeat modeling and improve the speed of forecasting; the realtime correction and handling of the segmentation point increase historical information utilization and decrease the error of segmentation point, thus the forecasting accuracy can be maintained at a better level. Actual load data is adopted to validate the effectiveness of the proposed model, and validation results show that both load forecasting accuracy and speed by the proposed model have an advantage over those by several conventional ultra short-term load forecasting algorithms, besides the forecasting error at the inflection point of load can be decreased and the proposed method can also adapt to the sudden change of the weather.
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来源期刊
电网技术
电网技术 Engineering-Mechanical Engineering
CiteScore
7.30
自引率
0.00%
发文量
13735
期刊介绍: "Power System Technology" (monthly) was founded in 1957. It is a comprehensive academic journal in the field of energy and power, supervised and sponsored by the State Grid Corporation of China. It is published by the Power System Technology Magazine Co., Ltd. of the China Electric Power Research Institute. It is publicly distributed at home and abroad and is included in 12 famous domestic and foreign literature databases such as the Engineering Index (EI) and the National Chinese Core Journals. The purpose of "Power System Technology" is to serve the national innovation-driven development strategy, promote scientific and technological progress in my country's energy and power fields, and promote the application of new technologies and new products. "Power System Technology" has adhered to the publishing characteristics of combining "theoretical innovation with applied practice" for many years, and the scope of manuscript selection covers the fields of power generation, transmission, distribution, and electricity consumption.
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