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Domestic demand predictions considering influence of external environmental parameters

机译:考虑外部环境参数影响的国内需求预测

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A precise prediction of domestic demand is very important for establishing home energy management system and preventing the damage caused by overloading. In this work, active and reactive power consumption prediction model based on historical power usage data and external environment parameter data (temperature and solar radiation) is presented for a typical Southern Norwegian house. In the presented model, a neural network is adopted as a main prediction technique and historical domestic load data of around 2 years are utilized for training and testing purpose. Temperature and global irradiation (which illustrates the solar radiation level quantitatively) are employed as external parameters. From the results, the efficiency of predictions are evaluated and compared. It can be observed from the numerical results that predictions using historical power data together with external data perform better than the case where only power usage data are adopted.
机译:对国内需求的精确预测对于建立家庭能源管理系统并防止通过过载造成的损害非常重要。在这项工作中,对于典型的南部挪威房屋,提出了基于历史电力使用数据和外部环境参数数据(温度和太阳辐射)的主动和无功功耗预测模型。在呈现的模型中,采用神经网络作为主要预测技术,历史国内负荷数据约为2年的培训和测试目的。温度和全局辐射(以定量的太阳辐射水平)用作外部参数。从结果中,评估预测效率并进行比较。可以从数值结果观察到,使用历史电力数据与外部数据一起比采用电力使用数据的情况更好地使用历史电力数据。

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