季节型负荷具有增长性和波动性的二重趋势,并且呈现出复杂的非线性特征,同时又受到多种随机干扰因素的影响,难以用单一的预测模型做出准确的预测。提出一种基于粗糙集的灰色支持向量机预测系统,将该系统应用于季节型负荷预测中,与单一的GM(1,1)方法和BP神经网络法相比,得到了较高的预测精度。
Because of the dual trends (increase and fluctuation) and their complex nonlinearity, the seasonal load which is also subject to multiple stochastic interference factors is difficult to be forecasted with single model. To solve the problem, a forecast system using rough set-based grey Support Vector Machine is proposed and was applied to seasonal load forecast. The system is accurate in forecast in comparison with the single GM ( 1,1 ) method and BP neural network method.