Current methods to determine the energy efficiency of buildings require on-site visits of certified energy auditors which makes the process slow, costly, and geographically incomplete. To accelerate the identification of promising retrofit targets on a large scale, we propose to estimate building energy efficiency from widely available and remotely sensed data sources only, namely street view, aerial view, footprint, and satellite-borne land surface temperature (LST) data. After collecting data for almost 40,000 buildings in the United Kingdom, we combine these data sources by training multiple end-to-end deep learning models with the objective to classify buildings as energy efficient (EU rating A-D) or inefficient (EU rating E-G). After evaluating the trained models quantitatively as well as qualitatively, we extend our analysis by studying the predictive power of each data source in an ablation study. We find that the end-to-end deep learning model trained on all four data sources achieves a macro-averaged F1 score of 64.64% and outperforms the k-NN and SVM-based baseline models by 14.13 to 12.02 percentage points, respectively. Thus, this work shows the potential and complementary nature of remotely sensed data in predicting energy efficiency and opens up new opportunities for future work to integrate additional data sources.
翻译:目前确定建筑物能源效率的方法要求经认证的能源审计员进行现场视察,使这一过程缓慢、昂贵和地理上不完全。为了加快大规模地确定有希望的翻新目标,我们提议仅从广泛可得和遥感的数据来源,即街道视图、空中观察、足迹和卫星载地表温度(LST)数据来估计能源效率的建立;在收集了联合王国近40 000座建筑物的数据之后,我们通过培训多端到端的深层次学习模型,将这些数据来源结合起来,目的是将建筑物分类为能源效率(EUA-D评级)或低效率(EE-G评级)。在从数量和质量上评价经过培训的模型之后,我们扩大我们的分析范围,在一项减缩研究中研究每个数据来源的预测能力。我们发现,经过培训的所有四个数据来源的端到端深层学习模型都取得了一个宏观平均的F1分64.64%,并且比基于k-NN和SVM的基线模型分别高出14.13%至12.02个百分点。因此,这项工作表明今后在预测能源效率和预测新的数据来源方面有可能和相互补充。