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Energy load predictions for buildings based on a total demand perspective

机译:基于总需求角度的建筑物能源负荷预测

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The outline of this work was to develop models for single family buildings, based on a total energy demand perspective, i.e., building- climate-inhabitants. The building-climate part was included by using a commercial dynamic energy simulation software. Whereas the influence from the inhabitants was implemented in terms of a predicted load for domestic equipment and hot water preparation, based on a reference building. The estimations were processed with neural network techniques. All models were based on access to measured diurnal data from a limited time period, ranging from 10 to 35 days. The annual energy predictions were found to be improved, compared to models based on only a building-climate perspective, when the domestic load was included. For periods with a small heating demand, i.e., May- September, the average accuracy was 7% and 4% for the heating and total energy load, respectively, whereas for the rest of the year the accuracy was on average 3% for both heating and total energy load.
机译:这项工作的概述是根据总能源需求的观点,即建筑气候居民,为单户住宅建筑开发模型。通过使用商业动态能源模拟软件来包括建筑气候部分。来自居民的影响是根据参考建筑物,根据家用设备和热水制备的预计负荷来实现的。估计值是用神经网络技术处理的。所有模型均基于在有限的时间段(从10到35天)内访问测得的每日数据。与仅基于建筑气候角度的模型(包括家庭负荷)相比,发现年度能源预测得到了改善。对于供热需求较小的时段(即5月至9月),供暖和总能量负荷的平均准确度分别为7%和4%,而在今年剩余的时间内,两种供暖的平均准确度均为3%和总的能量负荷。

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