Considering Multiple Factors to Forecast CO2 Emissions: A Hybrid Multivariable Grey Forecasting and Genetic Programming Approach
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- @Article{lin:2018:Energies,
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author = "Chun-Cheng Lin and Rou-Xuan He and Wan-Yu Liu",
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title = "Considering Multiple Factors to Forecast {CO2}
Emissions: A Hybrid Multivariable Grey Forecasting and
Genetic Programming Approach",
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journal = "Energies",
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year = "2018",
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volume = "11",
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number = "12",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "1996-1073",
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URL = "https://www.mdpi.com/1996-1073/11/12/3432",
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DOI = "doi:10.3390/en11123432",
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abstract = "Development of technology and economy is often
accompanied by surging usage of fossil fuels. Global
warming could speed up air pollution and cause floods
and droughts, not only affecting the safety of human
beings, but also causing drastic economic changes.
Therefore, the trend of carbon dioxide emissions and
the factors affecting growth of emissions have drawn a
lot of attention in all countries in the world. Related
studies have investigated many factors that affect
carbon emissions such as fuel consumption, transport
emissions, and national population. However, most of
previous studies on forecasting carbon emissions hardly
considered more than two factors. In addition,
conventional statistical methods of forecasting carbon
emissions usually require some assumptions and
limitations such as normal distribution and large
dataset. Consequently, this study proposes a two-stage
forecasting approach consisting of multivariable grey
forecasting model and genetic programming. The
multivariable grey forecasting model at the first stage
enjoys the advantage of introducing multiple factors
into the forecasting model, and can accurately make
prediction with only four or more samples. However,
grey forecasting may perform worse when the data is
nonlinear. To overcome this problem, the second stage
is to adopt genetic programming to establish the error
correction model to reduce the prediction error. To
evaluating performance of the proposed approach, the
carbon dioxide emissions in Taiwan from 2000 to 2015
are forecasted and analysed. Experimental comparison on
various combinations of multiple factors shows that the
proposed forecasting approach has higher accuracy than
previous approaches.",
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notes = "also known as \cite{en11123432}",
- }
Genetic Programming entries for
Chun-Cheng Lin
Rou-Xuan He
Wan-Yu Liu
Citations