Very Short Term Load Forecasting Using Cartesian Genetic Programming Evolved Recurrent Neural Networks (CGPRNN)
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @InProceedings{Khan:2013:ICMLA,
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author = "Gul Muhammad Khan and Faheem Zafari and
S. Ali Mahmud",
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title = "Very Short Term Load Forecasting Using Cartesian
Genetic Programming Evolved Recurrent Neural Networks
(CGPRNN)",
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booktitle = "12th International Conference on Machine Learning and
Applications (ICMLA 2013)",
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year = "2013",
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month = "4-7 " # dec,
-
volume = "2",
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pages = "152--155",
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keywords = "genetic algorithms, genetic programming, Cartesian
Genetic Programming, Cartesian Genetic Programming
evolved Recurrent Neural Network (CGPRNN), Very Short
Term Load forecast (VSTLF)",
-
DOI = "doi:10.1109/ICMLA.2013.181",
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abstract = "Forecasting the electrical load requirements is an
important research objective for maintaining a balance
between the demand and generation of electricity. This
paper uses a neuro-evolutionary technique known as
Cartesian Genetic Programming evolved Recurrent Neural
Network (CGPRNN) to develop a load forecasting model
for very short term of half an hour. The network is
trained using historical data of one month on half
hourly basis to predict the next half hour load based
on the 12 and 24 hours data history. The results
demonstrate that CGPRNN is superior to other networks
in very short term load forecasting in terms of its
accuracy achieving 99.57 percent. The model was
developed and evaluated on the data collected from the
UK Grid station.",
-
notes = "Also known as \cite{6786098}",
- }
Genetic Programming entries for
Gul Muhammad Khan
Faheem Zafari
Sahibzada Ali Mahmud
Citations