利用从低压负荷曲线获得的信息进行短期负荷预测

J. Sousa, L. Neves, H. Jorge
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引用次数: 10

摘要

最近的负荷预测研究往往是基于使用神经网络来预测一个特定的变量(最大需求、有功功率或小时消耗量),使用同一变量的过去值和其他被证明会影响预测值的外生因素。这项工作旨在探索神经网络中不同的输入模式,并结合来自不同消费者类别的负载概况的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-term load forecasting using information obtained from low voltage load profiles
Recent researches in load forecasting are quite often based on the use of neural networks in order to predict a specific variable (maximum demand, active electric power or hourly consumption) using past values of the same variable and other exogenous factors proved to influence the value being predicted. This work aims to explore different input patterns in neural networks incorporating information derived from load profiles of different consumers' classes.
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