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Application of Neural Networks for Short Term Load Forecasting in Power System of North Macedonia

机译:神经网络在北马其顿电力系统短期负荷预测中的应用

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Air temperature, type of the day and humidity are factors that have significant impact on electricity consumption and power system load on a short term. In the paper, neural networks are successfully applied for load forecasting on a short term in a power system of Republic of North Macedonia. The training of neural network is performed on real input data. The forecast is obtained on the basis on the trained network and learned relationship through training process.
机译:空气温度,白天的类型和湿度是短期内会严重影响电力消耗和电力系统负载的因素。在本文中,神经网络已成功应用到北马其顿共和国电力系统中的短期负荷预测中。神经网络的训练是在真实的输入数据上执行的。预测是在经过训练的网络和通过训练过程学习到的关系的基础上获得的。

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