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The Optimization Selection of Correlative Factors for Long-Term Power Load Forecasting

机译:长期电力负荷预测相关因子的优化选择

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In order to reflect the influence of each element on the load forecasting result, an Artificial Neural Network (ANN) Based approach for long-term load forecasting is investigated. Based on the theory of artificial neural network, a three-layer back propagation(BP) network is proposed. The idea is to forecast medium and long term load using the ability of ANN to nonlinear system. Seven factors are selected as inputs for the proposed ANN. The factors include GDP, heavy industry production, light industry production, agriculture production, primary industry, secondary industry, tertiary industry. Elimination method is used for the optimization selection of correlative factors, and forecasting accuracy is discussed. Simulation results show that predicting precision is elevated notably. after using elimination method, So the method brought forward is feasible and effective.
机译:为了反映每个元素对负荷预测结果的影响,研究了基于人工神经网络(ANN)的长期负荷预测方法。 基于人工神经网络理论,提出了一种三层反向传播(BP)网络。 该想法是使用ANN到非线性系统的能力预测中期和长期负荷。 七个因素被选为拟议的ANN的投入。 这些因素包括国内生产总值,重工业生产,轻工业生产,农业生产,主要产业,二级行业,第三产业。 消除方法用于优化相关因子的选择,并讨论预测精度。 仿真结果表明,预测精度显着提升。 使用消除方法后,所以提出的方法是可行和有效的。

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