基于相空间重构、支持向量回归和参数整定系统的短期负荷预测

Wenyu Zhang, Jinxing Che, Jianzhou Wang, Jinzhao Liang
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引用次数: 2

摘要

预测用电量是系统规划、运行和决策的重要指标。为了提高预测的准确性,我们采用集成架构对预测进行优化。基于基于测试样本误差估计准则的人工鱼群算法(AFSAS-TEE)和支持向量回归(SVR)两种机器学习技术的集成,提出了一种新的未来电力负荷预测模型。将相空间重构(PSR)技术应用于具有混沌负荷序列的非线性动态系统分析,提出了一种用于时间序列预测的自动选择SVR参数的AFSAS-TEE调谐系统。用澳大利亚电网的实际数据验证了该模型的有效性,并将实际数据与神经网络方法进行了比较。
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Short-Term Load Forecasting by Integration of Phase Space Reconstruction,  Support Vector Regression and Parameter Tuning System
Forecasting electricity consumption is an important index for system planning, operation and decision making. In order to improve the accuracy of the forecasting, we apply an integrated architecture to optimize the prediction. Based on an integration of two machine learning techniques: artificial fish swarm algorithm search approach based on test-sample error estimate criterion (AFSAS-TEE) and support vector regression (SVR), we proposed a novel forecasting model for future electricity load forecasting. On the one hand the theory of phase space reconstruction (PSR) technique was used for nonlinear dynamic system analysis with the chaotic load series and on the other hand a AFSAS-TEE tuning system is proposed to choose the parameters of SVR automatically in time series prediction. The effectiveness of the proposed model is demonstrated with actual data taken from the Australia Power Grid, and the actual data are compared with the presented and neural networks (NN) methods.
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