Wind Power Forecasting Using Dynamic Bayesian Models
نویسندگان
چکیده
Introduction Due to the cleanness and low cost of wind energy, wind farms are designed to produce as much energy as possible. Wind depends on external atmospheric conditions. For energy control centers is difficult to schedule wind power energy due to its intermittency.
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