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Methods of Training of Neural Networks for Short Term Load Forecasting in Smart Grids

机译:智能电网中短期负荷预测的神经网络训练方法

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Modern systems of voltage control in distribution grids need load forecast. The paper describes forecasting methods and concludes that using of artificial neural networks for this problem is preferable. It shows that for the complex real networks particle swarm method is faster and more accurate than traditional back propagation method.
机译:配电网中的现代电压控制系统需要负荷预测。本文介绍了预测方法,并得出结论,使用人工神经网络解决此问题是可取的。结果表明,对于复杂的真实网络,粒子群算法比传统的反向传播方法更快,更准确。

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