Natural Gas Demand Forecasting Model Based on LASSO and Polynomial Models and Its Application: A Case Study of China
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- Ling Hou & Huichao Chen, 2024. "The Prediction of Medium- and Long-Term Trends in Urban Carbon Emissions Based on an ARIMA-BPNN Combination Model," Energies, MDPI, vol. 17(8), pages 1-19, April.
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Keywords
natural gas demand; Lasso model; combined forecasting; cross-validation method;All these keywords.
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