Prediction of the natural gas consumption in chemical processing facilities with genetic programming
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- @Article{Kovacic:2016:GPEM,
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author = "Miha Kovacic and Franjo Dolenc",
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title = "Prediction of the natural gas consumption in chemical
processing facilities with genetic programming",
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journal = "Genetic Programming and Evolvable Machines",
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year = "2016",
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volume = "17",
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number = "3",
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pages = "231--249",
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keywords = "genetic algorithms, genetic programming, Natural gas
consumption prediction, Chemical processing,
Modelling",
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ISSN = "1389-2576",
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URL = "http://link.springer.com/article/10.1007/s10710-016-9264-x?wt_mc=internal.event.1.SEM.ArticleAuthorOnlineFirst",
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DOI = "doi:10.1007/s10710-016-9264-x",
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size = "19 pages",
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abstract = "Cinkarna Ltd. is a chemical processing company in
Slovenia and the country's largest manufacturer of
titanium oxides (TiO2). Chemical processing and
titanium oxide manufacturing in particular requires
high natural gas consumption, and it is difficult to
accurately pre-order gas from suppliers. In accordance
with the Energy Agency of the Republic of Slovenia
regulations, each natural gas supplier regulates and
determines the charges for the differences between the
ordered (predicted) and the actually supplied
quantities of natural gas. Yearly charges for these
differences total 1.11 percent of supplied natural gas
costs (average 50960 EUR per year). This paper presents
natural gas consumption prediction and the minimization
of associated costs. The data on daily temperature,
steam boilers, sulphuric acid and TiO2 production was
collected from January 2012 until November 2014. Based
on the collected data, a linear regression and a
genetic programming model were developed. Compared to
the specialist's prediction of natural gas consumption,
the linear regression and genetic programming models
reduce the charges for the differences between the
ordered and the actually supplied quantities by 3.00
and 5.30 times, respectively. Also, from January until
November 2014 the same genetic programming model was
used in practice. The results show that in a similar
gas consumption regime the differences between the
ordered and the actually supplied quantities are
statistically significant, namely, they are 3.19 times
lower (t test, p < 0.05) than in the period in which
the specialist responsible for natural gas consumption
made the predictions.",
- }
Genetic Programming entries for
Miha Kovacic
Franjo Dolenc
Citations