The forecasting of energy consumption in China is a key requirement for achieving national energy security and energy planning. In this study, multi-variable linear regression (MLR) and support vector regression (SVR) were utilized with a gated recurrent unit (GRU) artificial neural network of Chinese energy to establish a forecasting model. The derived model was validated through four economic variables; the gross domestic product (GDP), population, imports, and exports. The performance of various forecasting models was assessed via MAPE and RMSE, and three scenarios were configured based on different sources of variable data. In predicting Chinese energy consumption from 2015 to 2021, results from the established GRU model of the highest ...
Abstract:- By undertaking a cointegration analysis with annual data over the period 1985~2005 in Chi...
Water-energy nexus has been a popular topic of rese arch in recent years. The relationships between ...
To scientifically predict the future energy demand of Shandong province, this study chose the past e...
AbstractIn view of the complexity and nonlinear characteristics of Chinese energy consumption system...
Accurately predicting energy consumption (EC) is a difficult task, owing to its inherent complexity ...
Energy is vital for the sustainable development of China. Accurate forecasts of annual energy demand...
For social development, energy is a crucial material whose consumption affects the stable and sustai...
Energy demand forecast has an important practical significance for the sustainable development of th...
Effective electricity consumption forecasting is extremely significant for enterprises' electricity ...
The world’s highest energy consumer (HC) countries currently constitute around 62% of the world ener...
In recent years, the phenomenon of wind and solar energy abandoned in Xinjiang’s new energy has beco...
In the digitalization of industry and the industry 4.0 environment, it is important to master the ac...
AbstractThis study proposes a new hybrid forecasting methodology for short-term energy efficiency pr...
Because South Korea's industries depend heavily on imported energy sources (fifth largest importer o...
In the process of economic development, the consumption of energy leads to environmental pollution. ...
Abstract:- By undertaking a cointegration analysis with annual data over the period 1985~2005 in Chi...
Water-energy nexus has been a popular topic of rese arch in recent years. The relationships between ...
To scientifically predict the future energy demand of Shandong province, this study chose the past e...
AbstractIn view of the complexity and nonlinear characteristics of Chinese energy consumption system...
Accurately predicting energy consumption (EC) is a difficult task, owing to its inherent complexity ...
Energy is vital for the sustainable development of China. Accurate forecasts of annual energy demand...
For social development, energy is a crucial material whose consumption affects the stable and sustai...
Energy demand forecast has an important practical significance for the sustainable development of th...
Effective electricity consumption forecasting is extremely significant for enterprises' electricity ...
The world’s highest energy consumer (HC) countries currently constitute around 62% of the world ener...
In recent years, the phenomenon of wind and solar energy abandoned in Xinjiang’s new energy has beco...
In the digitalization of industry and the industry 4.0 environment, it is important to master the ac...
AbstractThis study proposes a new hybrid forecasting methodology for short-term energy efficiency pr...
Because South Korea's industries depend heavily on imported energy sources (fifth largest importer o...
In the process of economic development, the consumption of energy leads to environmental pollution. ...
Abstract:- By undertaking a cointegration analysis with annual data over the period 1985~2005 in Chi...
Water-energy nexus has been a popular topic of rese arch in recent years. The relationships between ...
To scientifically predict the future energy demand of Shandong province, this study chose the past e...