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Feature Extraction from Building Submetering Networks Using Deep Learning

机译:使用深度学习建立提交网络的特征提取

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摘要

The understanding of the nature and structure of energy use in large buildings is vital for defining novel energy and climate change strategies. The advances on metering technology and low-cost devices make it possible to form a submetering network, which measures the main supply and other intermediate points providing information of the behavior of different areas. However, an analysis by means of classical techniques can lead to wrong conclusions if the load is not balanced. This paper proposes the use of a deep convolutional autoencoder to reconstruct the whole consumption measured by the submeters using the learnt features in order to analyze the behavior of different building areas. The display of weights and information of the latent space provided by the autoencoder allows us to obtain precise details of the influence of each area in the whole building consumption and its dependence on external factors such as temperature. A submetering network is deployed in the León University Hospital building in order to test the proposed methodology. The results show different correlations between environmental variables and building areas and indicate that areas can be grouped depending on their function in the building performance. Furthermore, this approach is able to provide discernible results in the presence of large differences with respect to the consumption ranges of the different areas, unlike conventional approaches where the influence of smaller areas is usually hidden.
机译:了解大型建筑中能源使用的性质和结构对于定义新的能源和气候变化策略至关重要。计量技术和低成本设备的进步使得可以形成示例性网络,该网络测量提供不同区域行为信息的主要供应和其他中间点。然而,如果负载不平衡,则通过古典技术的分析可能会导致错误的结论。本文提出了使用深度卷积的AutoEncoder来重建时,使用所学的特征来重建由提子表测量的整个消耗,以便分析不同建筑区域的行为。由AutoEncoder提供的潜在空间的权重和信息的显示允许我们在整个建筑物消耗中获得每个区域的影响的精确细节及其对温度等外部因素的依赖性。提交网络在莱昂大学医院建筑中部署,以测试提出的方法。结果显示了环境变量和建筑区域之间的不同相关性,并指示可以根据其在建筑物性能方面的功能进行分组。此外,与通常隐藏的不同区域的消耗范围不同,这种方法能够提供较大差异在不同区域的消耗范围内的差异。

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