Composite Modeling for Adaptive Short-term Load Forecasting
نویسندگان
چکیده
Composite load model is developed for 1-24 hours ahead prediction of hourly electric loads. The load model is composed of three components : the nominal load, the type load and the residual load. The nominal load is modeled such that the Kalman filter can be used and the parameters of the model are adapted by the exponentially weighted recursive least squares method. The type load component is extracted for weekend load prediction and updated by an exponential smoothing method. The residual load is predicted by the autoregressive model and the parameters of the model are estimated using the recursive least squares method. Test results are shown using a utility data for two different years. keywords Load forecasting, adaptive filters.
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