A Short-Term User Load Forecasting with Missing Data
Abstract
Short-term load forecasting is an important component of grid economic dispatching and the forecasting error directly affects the economy of grid operation. Different from wide area power grid, it is more difficult to implement short-term user load forecasting, especially existing missing data. The feature model about user load is constructed by analyzing the static, dynamic and distributed characteristics of user load. Then, based on gradient boosted decision trees and similar training samples, a short-term user load filling and forecasting model is proposed. Through predicting different types of user load in short-term, to analyze filling model about missing load data is helpful to improve the accuracy of short-term user load forecasting. And, the forecasting accuracy and its stability of the proposed model are validated.
Keywords
Short-term load forecasting, Missing data, Gradient boosted decision trees
DOI
10.12783/dtetr/icmeit2018/23448
10.12783/dtetr/icmeit2018/23448
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