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A multi-scale calibration approach for process-oriented aggregated building energy demand models

机译:以过程为导向的聚集建筑能源需求模型的多尺度校准方法

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Long-term energy planning relies largely on projections of future energy demand and hourly load profiles. Aggregate building models are increasingly being utilized to characterize the sensitivity of current and future building stocks to changes in climate, population, and building technology on city-to-regionalto-national scales. Due to challenges in the availability of data, those analyses have been limited to projection of energy demand at a single scale, usually state or country, while long-term planning power system models and production cost models might operate at different spatial scales such as energy regions which are focused on ensuring adequate generation infrastructure. We propose and evaluate a novel method to calibrate an aggregate building energy demand model (PNNL's BEND model) against the best available data at the spatial scale of balancing authorities. This approach extends previous work on aggregated building energy demand by facilitating analysis of building energy demand across scales, in particular policy and operational decision-making scales. We show that the bias-corrected model estimates building electric loads reasonably well compared with estimates from a statistical model, but has the additional feature of flexibility across spatial scales. While the calibration approach is presently U.S.-centric and associated with U.S. energy regions, it can be extrapolated to other worldwide regions with similar scale challenges between policy and operational implementation decision making. We discuss the significant challenges involved in formulating and calibrating a complex physical model based on simulations of roughly 100,000 individual buildings against available aggregate regional electric load data and highlight areas for potential future work and improved data collection. (C) 2019 Elsevier B.V. All rights reserved.
机译:长期能源规划在很大程度上依赖于未来能源需求和每小时负载型材的预测。越来越多地利用总建筑模型来表征当前和未来的建筑物股票对气候,人口和建筑技术的变化的敏感性,城市到地区 - 国家鳞片。由于数据的可用性挑战,这些分析仅限于单一规模,通常是国家或国家的能源需求的投影,而长期规划电力系统模型和生产成本模型可能在不同的空间尺度(如能量)上运行专注于确保充分发电基础设施的地区。我们提出并评估了一种新颖的方法来校准聚合建设能源需求模型(PNNL弯曲模型),以防止平衡当局的空间规模的最佳可用数据。这种方法通过促进分析尺度的建筑能源需求,特别是政策和操作决策量表来扩展到以前的建筑能源需求。我们表明,与统计模型的估计相比,偏置模型估计建筑电负载合理良好,但在空间尺度上具有额外的灵活性特征。虽然校准方法目前是以美国为中心的,并且与美国能源区相关联,但它可以将其推断到其他全球区域,并在政策和运营实施决策之间具有类似规模挑战的地区。我们讨论了基于大约10万个单独建筑物的模拟,讨论了拟合和校准复杂物理模型的重大挑战,这是针对可用的聚合区域电力负载数据和突出显示潜在未来工作和改进数据收集的突出显示区域。 (c)2019 Elsevier B.v.保留所有权利。

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