Genetic Programming with Rough Sets Theory for Modeling Short-term Load Forecasting
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @InProceedings{Wang:2008:ICNC,
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author = "Wen-chuan Wang and Chun-tian Cheng and Lin Qiu",
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title = "Genetic Programming with Rough Sets Theory for
Modeling Short-term Load Forecasting",
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booktitle = "Fourth International Conference on Natural
Computation, ICNC '08",
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year = "2008",
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month = oct,
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volume = "6",
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pages = "306--310",
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keywords = "genetic algorithms, genetic programming, China,
GuiZhou power grid, electric power operation,
evolutional algorithm, load demand, rough sets theory,
short-term load forecasting, load forecasting, power
grids, rough set theory",
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DOI = "doi:10.1109/ICNC.2008.141",
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abstract = "The accurate and robust short-term load forecasting
(STLF) plays a significant role in electric power
operation. The accuracy of STLF is greatly related to
the selected the main relevant influential factors.
However, how to select appropriate influential factor
is a difficult task because of the randomness and
uncertainties of the load demand and its influential
factors. In this paper, a novel method of genetic
programming (GP) with rough sets (RS) theory is
developed to model STLF to improve the accuracy and
enhance the robustness of load forecasting results. RS
theory is employed to process large data and eliminate
redundant information in order to find relevant factors
to the short-term load, which are used as sample sets
to establish forecasting model by means of GP
evolutional algorithm. The presented model is applied
to forecast short-term load using the actual data from
GuiZhou power grid in China. The forecasted results are
compared with BP artificial neural Network with RS
theory, and it is shown that the presented forecasting
method is more accurate and efficient.",
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notes = "Also known as \cite{4667850}",
- }
Genetic Programming entries for
Wen-Chuan Wang
Chun-Tian Cheng
Lin Qiu
Citations