Srinivasan Iyengar, Stephen Lee, David E. Irwin, P. Shenoy, B. Weil
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引用次数: 3

摘要

在现代社会中,建筑物消耗的能源占总能源的40%以上,提高建筑物的能源效率可以显著减少我们的能源足迹。在本文中,我们介绍了WattScale,这是一种数据驱动的方法,用于从城市或地区的大量建筑中识别最不节能的建筑。与之前使用点估计的最小二乘等方法不同,WattScale使用贝叶斯推理来通过估计影响建筑物的参数分布来捕获日常能源使用的随机性。此外,它还将它们与特定人群中的类似房屋进行比较。WattScale还集成了故障检测算法,以识别能源效率低下的潜在原因。我们使用来自不同地理位置的真实数据验证了我们的方法,这表明了它在各种环境中的适用性。WattScale有两种执行模式- (i)个人和(ii)基于区域,我们使用两个案例研究来强调这一点。对于单个执行模式,我们给出了一个包含超过10,000栋建筑的城市的结果,并表明超过一半的建筑在某种程度上是低效的,这表明能源改善措施具有巨大的潜力。此外,我们提供了低效率的可能原因,并发现41%,23.73%和0.51%的家庭分别有较差的建筑围护结构,供暖和制冷系统故障。对于基于区域的执行模式,我们表明,由于最近有代表性的能源数据集可用,WattScale可以扩展到美国数百万个家庭。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WattScale
Buildings consume over 40% of the total energy in modern societies, and improving their energy efficiency can significantly reduce our energy footprint. In this article, we present WattScale, a data-driven approach to identify the least energy-efficient buildings from a large population of buildings in a city or a region. Unlike previous methods such as least-squares that use point estimates, WattScale uses Bayesian inference to capture the stochasticity in the daily energy usage by estimating the distribution of parameters that affect a building. Further, it compares them with similar homes in a given population. WattScale also incorporates a fault detection algorithm to identify the underlying causes of energy inefficiency. We validate our approach using ground truth data from different geographical locations, which showcases its applicability in various settings. WattScale has two execution modes—(i) individual and (ii) region-based, which we highlight using two case studies. For the individual execution mode, we present results from a city containing >10,000 buildings and show that more than half of the buildings are inefficient in one way or another indicating a significant potential from energy improvement measures. Additionally, we provide probable cause of inefficiency and find that 41%, 23.73%, and 0.51% homes have poor building envelope, heating, and cooling system faults, respectively. For the region-based execution mode, we show that WattScale can be extended to millions of homes in the U.S. due to the recent availability of representative energy datasets.
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