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Improved Short-Term Load Forecasting Based on Two-Stage Predictions with Artificial Neural Networks in a Microgrid Environment

机译:微电网环境中基于人工神经网络的两阶段预测的改进短期负荷预测

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Short-Term Load Forecasting plays a significant role in energy generation planning, and is specially gaining momentum in the emerging Smart Grids environment, which usually presents highly disaggregated scenarios where detailed real-time information is available thanks to Communications and Information Technologies, as it happens for example in the case of microgrids. This paper presents a two stage prediction model based on an Artificial Neural Network in order to allow Short-Term Load Forecasting of the following day in microgrid environment, which first estimates peak and valley values of the demand curve of the day to be forecasted. Those, together with other variables, will make the second stage, forecast of the entire demand curve, more precise than a direct, single-stage forecast. The whole architecture of the model will be presented and the results compared with recent work on the same set of data, and on the same location, obtaining a Mean Absolute Percentage Error of 1.62% against the original 2.47% of the single stage model.
机译:短期负荷预测在能源发电计划中发挥着重要作用,并且在新兴的智能电网环境中尤其获得动力,该环境通常会出现高度分散的场景,在这种情况下,由于通讯和信息技术的出现,可以获得详细的实时信息例如在微电网的情况下。为了在微电网环境中进行第二天的短期负荷预测,本文提出了一种基于人工神经网络的两阶段预测模型,该模型首先估计要预测的当日需求曲线的峰值和谷值。这些以及其他变量将使第二阶段的整个需求曲线预测比直接的单阶段预测更为精确。将介绍该模型的整个体系结构,并将结果与​​最近在同一数据集和同一位置上进行的工作进行比较,得出的平均绝对百分比误差为1.62%,而单阶段模型的原始值为2.47%。

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