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http://dx.doi.org/10.5370/KIEE.2016.65.7.1144

24-Hour Load Forecasting For Anomalous Weather Days Using Hourly Temperature  

Kang, Dong-Ho (Dept. of Information & Electronics Eng., Graduate School, Uiduk University)
Park, Jeong-Do (Div. of Energy and Electrical Engineering, Uiduk University)
Song, Kyung-Bin (School of Electrical Engineering, Soongsil University)
Publication Information
The Transactions of The Korean Institute of Electrical Engineers / v.65, no.7, 2016 , pp. 1144-1150 More about this Journal
Abstract
Short-term load forecasting is essential to the electricity pricing and stable power system operations. The conventional weekday 24-hour load forecasting algorithms consider the temperature model to forecast maximum load and minimum load. But 24-hour load pattern forecasting models do not consider temperature effects, because hourly temperature forecasts were not present until the latest date. Recently, 3 hour temperature forecast is announced, therefore hourly temperature forecasts can be produced by mathematical techniques such as various interpolation methods. In this paper, a new 24-hour load pattern forecasting method is proposed by using similar day search considering the hourly temperature. The proposed method searches similar day input data based on the anomalous weather features such as continuous temperature drop or rise, which can enhance 24-hour load pattern forecasting performance, because it uses the past days having similar hourly temperature features as input data. In order to verify the effectiveness of the proposed method, it was applied to the case study. The case study results show high accuracy of 24-hour load pattern forecasting.
Keywords
Short-term load forecasting; Similar day; Hourly temperature; Anomalous weather days;
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