Variation Characteristics Analysis and Short-Term Forecasting of Load Based on CEEMDAN

Peng Zhang, Min Wang
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Abstract

With the development of the economy and the improvement of living standards of people, electricity consumption around the world has increased dramatically. However, the load that contains many components with different characteristics is affected by many factors. How to classify and extract load characteristics and improve the accuracy of load forecasting has become a focus of attention. Based on this, this paper proposes using the Complete Ensemble Empirical Mode Decomposition with Adaptive Noise (CEEMDAN) to decompose the load and get multiple components of different time scales. The hidden characteristics of each components of load are analyzed with the four characteristic indicators. Then, the Pearson coefficient is used to analyze the multi-scale correlation between the load components and the temperature, and at the same time decompose the temperature to dig deep relationship between the load components and the temperature components. Finally, we use the Least Squares Support Vector Machine Optimized by Particle Swarm Optimization (PSO-LSSVM) to forecasting each component of the load, and select the decomposed temperature as part of the input data of the load forecasting model. The forecasting results verify the advantages of the proposed method in the aspects of load characteristic analysis and improvement of load forecasting accuracy.
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基于CEEMDAN的负荷变化特征分析及短期预测
随着经济的发展和人民生活水平的提高,世界各地的用电量急剧增加。然而,包含许多具有不同特性的部件的负载受到许多因素的影响。如何对负荷特征进行分类和提取,提高负荷预测的准确性已成为人们关注的焦点。在此基础上,本文提出了基于自适应噪声的完全集成经验模态分解(CEEMDAN)方法对负载进行分解,得到不同时间尺度的多个分量。利用这四个特征指标分析了各组成部分的隐含特性。然后,利用Pearson系数分析载荷分量与温度之间的多尺度相关性,同时对温度进行分解,深入挖掘载荷分量与温度分量之间的关系。最后,利用粒子群优化最小二乘支持向量机(PSO-LSSVM)对各负荷分量进行预测,并选择分解后的温度作为负荷预测模型的输入数据。预测结果验证了该方法在负荷特性分析和提高负荷预测精度方面的优势。
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