The grey prediction model with convolution integral GMC (1, n) is a multiple grey model with exact solutions. To further improve prediction accuracy and describe better the relationship between cause and effect, we introduce nonlinear parameters into GMC (1, n) model and additionally apply a convolution integral to produce an improved forecasting model here designated as NGMC (1, n). The model solving process applied the least-squares method to evaluate the structure parameters of the model: convolution was used to obtain an exact solution with this improved grey model. The nonlinear optimisation took the parameters as the decision variables with the objective of minimising forecasting errors. The GMC (1, 2) and NGMC (1, 2) models were used...
Presently, China is the largest CO2 emitting country in the world, which accounts for 28% of the CO2...
AbstractThe demand for energy supply has been increasing dramatically in recent years in the global....
GM(1,1) is a univariate grey prediction model with incomplete structural information, in which the r...
The relationship between pollutant discharge and economic growth has been a major research focus in ...
This article analyzed and forecasted fossil carbon dioxide emissions in Malaysia and Singapore from ...
Accurate estimations can provide a solid basis for decision-making and policy-making that have exper...
AbstractAlthough the grey forecasting models have been successfully utilized in many fields and demo...
This paper analyses the relationship between carbon dioxide emissions with the energy consumption fr...
In recent years, the nonhomogeneous grey model has received much attention owing to its flexibility ...
The forecast of carbon dioxide (CO2) emissions has played a significant role in drawing up energy de...
As a tool for analyzing time series, grey prediction models have been widely used in various fields ...
With the rapid development of China’s manufacturing, energy consumption has increased rapidly, and t...
AbstractIn this paper, a Grey Neural Network and Input-Output Combined Forecasting Model (GNF-IO) wa...
As is known, natural gas consumption has been acted as an extremely important role in energy market ...
According to the characters of few economic forecasting data and complicated action mechanism, this ...
Presently, China is the largest CO2 emitting country in the world, which accounts for 28% of the CO2...
AbstractThe demand for energy supply has been increasing dramatically in recent years in the global....
GM(1,1) is a univariate grey prediction model with incomplete structural information, in which the r...
The relationship between pollutant discharge and economic growth has been a major research focus in ...
This article analyzed and forecasted fossil carbon dioxide emissions in Malaysia and Singapore from ...
Accurate estimations can provide a solid basis for decision-making and policy-making that have exper...
AbstractAlthough the grey forecasting models have been successfully utilized in many fields and demo...
This paper analyses the relationship between carbon dioxide emissions with the energy consumption fr...
In recent years, the nonhomogeneous grey model has received much attention owing to its flexibility ...
The forecast of carbon dioxide (CO2) emissions has played a significant role in drawing up energy de...
As a tool for analyzing time series, grey prediction models have been widely used in various fields ...
With the rapid development of China’s manufacturing, energy consumption has increased rapidly, and t...
AbstractIn this paper, a Grey Neural Network and Input-Output Combined Forecasting Model (GNF-IO) wa...
As is known, natural gas consumption has been acted as an extremely important role in energy market ...
According to the characters of few economic forecasting data and complicated action mechanism, this ...
Presently, China is the largest CO2 emitting country in the world, which accounts for 28% of the CO2...
AbstractThe demand for energy supply has been increasing dramatically in recent years in the global....
GM(1,1) is a univariate grey prediction model with incomplete structural information, in which the r...