短期负荷预测:基于局部温度敏感信息的特征空间学习

Huanda Lu, Kangsheng Liu
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引用次数: 1

摘要

提出了一种基于特征提取和神经网络的短期负荷预测混合方法。众所周知,温度信息对负荷预测非常重要,但文献中没有采用温度敏感信息的局部结构。该模型采用集成架构处理局部温度敏感信息。首先,将输入负荷数据集以无监督的k-means算法聚类成多个温度相似天数子集,然后计算每个子集的最大温度因子,并将时间点(5分钟,288天)划分为多个时间范围,在每个时间范围内,利用fourier基系统提取负荷数据的特征(系数),然后利用人工神经网络学习特征空间中的函数。最后利用线性规划对整个预测负荷曲线进行平滑处理。实证结果表明,我们的混合方法比原始的通用支持向量回归具有更好的预测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-term load forecasting: Learning in the feature space based on local temperature sensitive information
A novel hybrid method based on feature extraction and neural network for short-term load forecasting was presented. It is well known that temperature information is very important for load forecasting, but the local structure of temperature sensitive information is not adopted in the literature. The proposed model adopts an integrated architecture to handle the local temperature sensitive information. Firstly, the input load data set is clustered into several temperature similar days subsets by the k-means algorithm in an unsupervised manner, Then compute max temperature factor in each subsets and split the time point (5 minutes, 288/day) into several time range, in each time range, we extract the features (coefficients) from load data using flourier basis system, and then learn the function in the feature space using artificial neural network. Finally, we smooth the whole forecasted load curve using linear programming. The empirical results indicate that our hybrid method results in better forecasting performance than the original generic support vector regression.
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