Analysis and Modeling for China’s Electricity Demand Forecasting Using a Hybrid Method Based on Multiple Regression and Extreme Learning Machine: A View from Carbon Emission
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Wei-Chiang Hong | Dongxiao Niu | Yi Liang | Wei‐Chiang Hong | D. Niu | Yi Liang | Ye Cao | Ye Cao
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