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Validation of a Bayesian-based method for defining residential archetypes in urban building energy models

机译:基于贝叶斯方法在城市建筑能源模型中定义住宅原型的验证

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Urban Building Energy Modeling (UBEM) is an emerging method for exploring energy efficiency solutions at urban or district scales. More versatile than statistical models, physical bottom-up UBEMs allow planners to quantitatively assess retrofit strategies and energy supply options, leading to more effective policies and management of energy demand. The most common approach for formulating an UBEM involves segmenting a building stock into archetypes, characterizing each type, and validating the model by comparing its output to aggregated measured energy consumption. This paper presents a more detailed methodology for setting up UBEMs while faced with incomplete information about the buildings. The procedure calls for defining unknown or uncertain parameters in archetype descriptions as probability distributions and, if available, using measured energy data to update these distributions by Bayesian calibration. The methodology is validated on residential houses in Cambridge, Massachusetts. Distributions for uncertain parameters are initially generated using a training set of 399 homes with monthly electricity and gas consumption records and then applied to a larger test set of 2263 homes. The procedure is applied both for monthly and annual metered energy usage data. Results show that both annual and monthly Bayesian calibration lead to significantly better annual energy use intensity (EUI) fits compared to traditional deterministic archetype definitions. As expected, an UBEM calibrated with monthly metered data more truthfully mimics monthly EUI distributions than one based on annual data, revealing the benefit of calibrating UBEMs using the smallest measurement time step available. (C) 2016 Elsevier B.V. All rights reserved.
机译:城市建筑能源模型(UBEM)是一种新兴的方法,用于探索城市或地区规模的能源效率解决方案。自底向上的物理UBEM比统计模型更通用,使计划人员可以定量评估改造策略和能源供应方案,从而制定更有效的能源需求政策和管理。制定UBEM的最常见方法是将建筑材料细分为原型,对每种类型进行特征化,然后通过将其输出与汇总的测量能耗进行比较来验证模型。当面对有关建筑物的不完整信息时,本文提出了一种用于建立UBEM的更详细的方法。该过程要求在原型描述中将未知或不确定的参数定义为概率分布,并在可能的情况下使用测得的能量数据通过贝叶斯校准更新这些分布。该方法已在马萨诸塞州剑桥市的住宅中得到验证。不确定性参数的分布最初是使用399套房屋的训练集生成的,其中包含每月的用电量和燃气消耗记录,然后将其应用于更大的2263套房屋的测试集。该程序适用于每月和每年的计量能源使用数据。结果表明,与传统的确定性原型定义相比,年度和每月贝叶斯校准均可显着提高年度能源使用强度(EUI)拟合度。不出所料,用月度计量数据校准的UBEM比按年数据更真实地模拟了月度EUI分配,这显示了使用可用的最小测量时间步长来校准UBEM的好处。 (C)2016 Elsevier B.V.保留所有权利。

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