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A Hybrid Approach to Load Forecast at a Micro Grid level through Machine Learning algorithms

机译:通过机器学习算法在微电网级别进行负荷预测的混合方法

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Electric power systems’ operation has been facing new challenges. Intermittent renewable energy production and the consumption side uncertainty has been increasing, not only due to the integration of renewable sources but also flexible loads such as plug-in electric vehicles charging and storage devices. For these reasons, electricity load forecasting is crucial, in the sense of being able to determine the stability of the generation system and maintenance of scalable loads. This paper addresses the forecasts of electricity demand in a Micro Grid context and presents the novel HALOFMI methodology, which includes a Micro Grid scenario, selection and reduction of features and subsequently feeding these entries to the Artificial Neural Network. Final measures include validating the results attained from the developed 24-hour load forecast model defined throughout the work, based on performance metrics.
机译:电力系统的操作一直面临新的挑战。间歇性可再生能源生产和消费侧不确定性一直在增加,而不仅仅是由于可再生源的整合,而且是柔性负载,如插入式电动车辆充电和存储设备。出于这些原因,电力负荷预测是至关重要的,能够确定生成系统的稳定性和可扩展负载的维护意义。本文涉及微电网背景中的电力需求预测,并提出了新的HalofMI方法,包括微网方案,选择和减少特征,以及随后向人工神经网络馈送这些条目。最终措施包括根据性能指标验证在整个工作中定义的开发的24小时负载预测模型中获得的结果。

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