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Low-income load profile development using occupancy and occupants' activities in residential households

机译:利用居民家庭中居住人数和居住者活动的低收入负荷曲线

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Occupants' activities and dynamic presence together with characteristic variables linked with energy loads/usage within domestic dwellings are not reflected in many applications presently implemented in modeling load and energy profiles. This study makes use of an artificial neural networks system (ANN) for load and energy profile prediction. For this investigation characteristic variables such as active occupancy, occupants' interactions with residential buildings, and low-income level are considered. The performance of the proposed forecasting model in terms of low-income recipients category was evaluated based on statistical measures. Based on the outcome, the model presented a good correlation and mean square error (MSE).
机译:当前在建模负荷和能量分布图时实现的许多应用中并未反映出乘员的活动和动态存在,以及与住宅中的能量负荷/使用相关的特征变量。这项研究利用人工神经网络系统(ANN)进行负荷和能量分布预测。在本调查中,考虑了一些特征变量,例如活跃居住,居住者与住宅建筑物的互动以及低收入水平。根据统计指标评估了拟议的预测模型在低收入接收者类别方面的表现。基于结果,该模型显示出良好的相关性和均方误差(MSE)。

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