Long-term Electric Peak Load Forecasting for Power System Planning: a Comparative Study
نویسنده
چکیده
GDP The gross domestic product POP The population GDP CAP The gross domestic product per capita LOSS The system power losses (MW) EP Electricity consumption (Multiplication of electricity consumption by population) LF Load factor R/S Cost of one kWh (milliamps/kWh) (cost of Energy).
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