Application of ALO-ELM on Electricity Demand Forecasting under Spot Power Market

Yan Shi,Wenzhe Zhang, FuMin Sang, Lei Zhao,Tao Wang

2022 4TH INTERNATIONAL CONFERENCE ON SMART POWER & INTERNET ENERGY SYSTEMS, SPIES(2022)

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摘要
The electricity demand of power system and power market change with the development of economy, short-term electricity demand forecasting play a very important role in spot power Market. In this paper, the Ant Lion Optimizer (ALO) is introduced to improve the input weights and hidden-layer Matrix of extreme learning machine (ELM), after the parameters of ELM are optimized by ALO, then input nodes, hidden layer nodes and output nodes are determined, so an electricity demand forecasting model based on ALO-ELM combined algorithm is established. The proposed method is illustrated based on the historical load data of a city in China. The results show that the average absolute error of short-term load demand predicted by ALO-ELM model is 1.41, while that predicted by ELM is 4.34, it has shown than ALO-ELM algorithm is superior to the ELM and meet the requirements of engineering accuracy. Under the spot power market, accurately predicting the electricity demand trend and reducing the deviation of electricity expenditure have become an important means for the market players to make profits.
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关键词
Electricity demand forecasting,power market,Extreme Learning Machine (ELM),Ant Lion Optimizer (ALO),parameter optimization,model
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