基于灰色关联分析和支持向量机的短期电力负荷预测

Wei Sun, Xinfu Pang, Wei Liu, Yibao Wang, Changfeng Luan
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引用次数: 0

摘要

电力负荷短期预测是保证电力系统平稳、高效运行的重要保障,是建设新型电力系统数字化、智能化的重要基础。由于电力系统短期负荷受多种因素(如气候、时间等)的影响,电力系统负荷具有很强的随机性和波动性,同时又具有周期性。因此,传统的电力负荷预测方法已不再适用。为了提高短期电力负荷预测的准确性,本文提出了一种基于灰色关联分析和k均值聚类的支持向量机(SVM)短期电力负荷预测方法。首先,利用灰色关联分析方法提取历史日中的相似日,形成相似日的粗糙集;其次,对相似天数的粗糙集进行K-means聚类分类,得到最终的相似天数集;第三,训练支持向量机以确定最终的预测日负荷。最后,用中国某城市的实际用电量数据对所提出的方法进行了验证,结果表明了该方法的有效性。
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Short-term Power Load Forecasting Based on Grey Relational Analysis and Support Vector Machine
Short-term power load forecasting is an important guarantee to ensure the smooth and efficient operation of power systems, and an important basis for building new digital and intelligent power systems. Given that short-term power system load is affected by various factors (e.g., climate, time), power system load has strong randomness and volatility while being periodic. Hence, the traditional power load forecasting method is no longer applicable. To improve the accuracy of short-term power load forecasting, this paper proposes a support vector machine (SVM) short-term power load forecasting method based on grey relational analysis and K-means clustering. First, similar days in historical days are extracted by using the grey relational analysis method to form a rough set of similar days. Second, the rough set of similar days is classified by K-means clustering, and the final set of similar days is obtained. Third, SVM is trained to determine the final predicted daily load. Lastly, the proposed method is verified by the actual electricity consumption data of a city in China, and the results show the effectiveness of this method.
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