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Artificial neural network application to load forecasting in a large hospital facility

机译:人工神经网络在大型医院设施负荷预测中的应用

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A Smart Grid approach to electric distribution system management needs to front uncertainties in generation and demand thus making forecasting an up-to-date area of research in electric energy systems. This works aims to propose a day-ahead load forecasting procedure for a medium voltage customer. The load forecasting is performed through the implementation of an artificial neural network (ANN). The proposed multi-layer perceptron ANN, based on backpropagation training algorithm, is able to take as inputs: loads, data concerning the type of day (e.g. weekday/holiday), time of the day and weather data (e.g. temperature, humidity). This procedure has been tested to predict the loads of a large university hospital facility located in Rome.
机译:用于配电系统管理的智能电网方法需要面对发电和需求方面的不确定性,因此要预测电能系统的最新研究领域。这项工作旨在为中压客户提出提前负荷预测程序。负载预测是通过实现人工神经网络(ANN)进行的。提出的基于反向传播训练算法的多层感知器ANN可以将以下各项作为输入:负载,与日类型有关的数据(例如工作日/节假日),一天中的时间和天气数据(例如温度,湿度)。已对该程序进行了测试,以预测位于罗马的大型大学医院设施的负荷。

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