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Short-term electricity load forecasting of buildings in microgrids
Highlights Load forecasting for micro-grids is more challenging than the conventional power system load forecasting. Electricity load of a building in a micro-grid is more volatile than that of a power system. The SRWNN model can efficiently capture non-smooth behavior of building load. The superiority of SRWNN forecasting model over WNN increments as the volatility increases.
Abstract Electricity load forecasting plays a key role in operation of power systems. Since the penetration of distributed and renewable generation is increasingly growing in many countries, Short-Term Load Forecast (STLF) of micro-grids is also becoming an important task. A precise STLF of the micro-grid can enhance the management of its renewable and conventional resources and improve the economics of energy trade with electricity markets. As a consequence of the highly non-smooth and volatile behavior of the load time series in a micro-grid, its STLF is even a more complex process than that of a power system. For this purpose, a new prediction method is proposed in this paper, in which a Self-Recurrent Wavelet Neural Network (SRWNN) is applied as the forecast engine. Moreover, the Levenberg–Marquardt (LM) learning algorithm is implemented and adapted to train the SRWNN. In order to demonstrate the efficiency of the proposed method, it is examined on real-world hourly data of an educational building within a micro-grid. Comparisons with other load prediction methods are provided.
Short-term electricity load forecasting of buildings in microgrids
Highlights Load forecasting for micro-grids is more challenging than the conventional power system load forecasting. Electricity load of a building in a micro-grid is more volatile than that of a power system. The SRWNN model can efficiently capture non-smooth behavior of building load. The superiority of SRWNN forecasting model over WNN increments as the volatility increases.
Abstract Electricity load forecasting plays a key role in operation of power systems. Since the penetration of distributed and renewable generation is increasingly growing in many countries, Short-Term Load Forecast (STLF) of micro-grids is also becoming an important task. A precise STLF of the micro-grid can enhance the management of its renewable and conventional resources and improve the economics of energy trade with electricity markets. As a consequence of the highly non-smooth and volatile behavior of the load time series in a micro-grid, its STLF is even a more complex process than that of a power system. For this purpose, a new prediction method is proposed in this paper, in which a Self-Recurrent Wavelet Neural Network (SRWNN) is applied as the forecast engine. Moreover, the Levenberg–Marquardt (LM) learning algorithm is implemented and adapted to train the SRWNN. In order to demonstrate the efficiency of the proposed method, it is examined on real-world hourly data of an educational building within a micro-grid. Comparisons with other load prediction methods are provided.
Short-term electricity load forecasting of buildings in microgrids
Chitsaz, Hamed (author) / Shaker, Hamid (author) / Zareipour, Hamidreza (author) / Wood, David (author) / Amjady, Nima (author)
Energy and Buildings ; 99 ; 50-60
2015-04-10
11 pages
Article (Journal)
Electronic Resource
English
Short-term Electricity Load Forecasting of Buildings in Microgrids
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