基于混沌理论的电价预测模型

Zhengjun Liu, Hongming Yang, M. Lai
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引用次数: 17

摘要

提出了一种基于混沌理论的电价预测模型。首先用混沌理论验证了电价的混沌特性。提取了吸引子的Lyapunov指数和分形维数。由此可见,电价具有混沌特性,这为利用混沌理论对电价进行短期预测提供了依据。然后由电价及其相关因素即系统负荷和可用发电量时间序列构成的多变量时间序列重构出精确的相空间。通过跟踪相空间中相邻相点的变化趋势,建立了基于递归神经网络的全球和局部电价预测模型,成功地预测了新英格兰电力市场的电价
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Electricity price forecasting model based on chaos theory
This paper proposes an electricity price forecasting model based on chaos theory. First the chaotic feature of electricity price is verified with the chaos theory. The Lyapunov exponents and the fractal dimensions of the attractors are extracted. Here it can be seen that the electricity price possesses chaotic characteristics, providing the basis for performing the short-term forecast of electricity price with the help of the chaos theory. Then an accurate phase space is reconstructed by multivariable time series constituted by electricity price and its correlated factors, i.e., the system load and the available generating capacity time series. By tracing the evolving trend of the adjacent phase points in the phase space, the global and local electricity price forecasting models based on the recurrent neural network are established, with which the electricity prices in the New England electricity market are successfully predicted
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