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A quadraticν ν -support vector regression approach for load forecasting
by
Yanhe Jia
, Zheming Gao
, Fengming Lin
, Shuaiguang Zhou
, Yiwen Wang
in
Electric load forecasting
/ Feature weighting
/ Kernel-free support vector regression
/ Machine learning
/ Weighted support vector regression
2025
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Do you wish to request the book?
A quadraticν ν -support vector regression approach for load forecasting
by
Yanhe Jia
, Zheming Gao
, Fengming Lin
, Shuaiguang Zhou
, Yiwen Wang
in
Electric load forecasting
/ Feature weighting
/ Kernel-free support vector regression
/ Machine learning
/ Weighted support vector regression
2025
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A quadraticν ν -support vector regression approach for load forecasting
Journal Article
A quadraticν ν -support vector regression approach for load forecasting
2025
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Overview
Abstract This article focuses on electric load forecasting, which is a challenging task in the energy industry. In this paper, a novel kernel-freeν ν -support vector regression model is proposed for electric load forecasting. The proposed model produces a reduced quadratic surface for nonlinear regression. A feature weighting strategy is adopted to estimate the relevance of the features in the load history. To reduce the effects of outliers in the load history, a weight is assigned to represent the relative importance of each data point. Some computational experiments are conducted on some public benchmark data sets to show the superior performance of the proposed model over some widely used regression models. The results of some extensive computational experiments on the electric load data from the Global Energy Forecasting Competition 2012 and the ISO New England demonstrate better average accuracy of the proposed model.
Publisher
Springer
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