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https://hdl.handle.net/1959.11/61482
Title: | Hybrid filter-wrapper feature selection for short-term load forecasting |
Contributor(s): | Hu, Zhongyi (author); Bao, Yukun (author); Xiong, Tao (author); Chiong, Raymond (author) |
Publication Date: | 2015 |
DOI: | 10.1016/j.engappai.2014.12.014 |
Handle Link: | https://hdl.handle.net/1959.11/61482 |
Abstract: | | Selection of input features plays an important role in developing models for short-term load forecasting (STLF). Previous studies along this line of research have focused pre-dominantly on filter and wrapper methods. Given the potential value of a hybrid selection scheme that includes both filter and wrapper methods in constructing an appropriate pool of features, coupled with the general lack of success in employing filter or wrapper methods individually, in this study we propose a hybrid filter–wrapper approach for STLF feature selection. This proposed approach, which is believed to have taken full advantage of the strengths of both filter and wrapper methods, first uses the Partial Mutual Information based filter method to filter out most of the irrelevant and redundant features, and subsequently applies a wrapper method, implemented via a firefly algorithm, to further reduce the redundant features without degrading the forecasting accuracy. The well-established support vector regression is selected as the modeler to implement the proposed hybrid feature selection scheme. Real-world electricity load datasets from a North-American electric utility and the Global Energy Forecasting Competition 2012 have been used to test the performance of the proposed approach, and the experimental results show its superiority over selected counterparts.
Publication Type: | Journal Article |
Source of Publication: | Engineering Applications of Artificial Intelligence, v.40, p. 17-27 |
Publisher: | Elsevier Ltd |
Place of Publication: | United Kingdom |
ISSN: | 1873-6769 0952-1976 |
Fields of Research (FoR) 2020: | 4602 Artificial intelligence |
Peer Reviewed: | Yes |
HERDC Category Description: | C1 Refereed Article in a Scholarly Journal |
Appears in Collections: | Journal Article School of Science and Technology
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