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Building Energy Modeling: A Data-Driven Approach.

机译:建筑能耗建模:一种数据驱动方法。

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摘要

Buildings consume nearly 50% of the total energy in the United States, which drives the need to develop high-fidelity models for building energy systems. Extensive methods and techniques have been developed, studied, and applied to building energy simulation and forecasting, while most of work have focused on developing dedicated modeling approach for generic buildings. In this study, an integrated computationally efficient and high-fidelity building energy modeling framework is proposed, with the concentration on developing a generalized modeling approach for various types of buildings. First, a number of data-driven simulation models are reviewed and assessed on various types of computationally expensive simulation problems. Motivated by the conclusion that no model outperforms others if amortized over diverse problems, a meta-learning based recommendation system for data-driven simulation modeling is proposed. To test the feasibility of the proposed framework on the building energy system, an extended application of the recommendation system for short-term building energy forecasting is deployed on various buildings. Finally, Kalman filter-based data fusion technique is incorporated into the building recommendation system for on-line energy forecasting. Data fusion enables model calibration to update the state estimation in real-time, which filters out the noise and renders more accurate energy forecast. The framework is composed of two modules: off-line model recommendation module and on-line model calibration module. Specifically, the off-line model recommendation module includes 6 widely used data-driven simulation models, which are ranked by meta-learning recommendation system for off-line energy modeling on a given building scenario. Only a selective set of building physical and operational characteristic features is needed to complete the recommendation task. The on-line calibration module effectively addresses system uncertainties, where data fusion on off-line model is applied based on system identification and Kalman filtering methods. The developed data-driven modeling framework is validated on various genres of buildings, and the experimental results demonstrate desired performance on building energy forecasting in terms of accuracy and computational efficiency. The framework could be easily implemented into building energy model predictive control (MPC), demand response (DR) analysis and real-time operation decision support systems.
机译:在美国,建筑物消耗了近50%的总能源,这驱使人们需要开发用于建筑物能源系统的高保真模型。已经开发,研究了广泛的方法和技术,并将其应用于建筑能耗模拟和预测,而大多数工作都集中在为通用建筑开发专用的建模方法上。在这项研究中,提出了一个集成的计算有效的高保真建筑能耗建模框架,重点是针对各种类型的建筑物开发通用的建模方法。首先,针对各种类型的计算昂贵的仿真问题,审查并评估了许多数据驱动的仿真模型。基于没有模型能够在各种问题上摊销的情况下胜过其他模型的结论,提出了一种基于元学习的数据驱动仿真模型推荐系统。为了测试所提出的框架在建筑能源系统上的可行性,在各种建筑物上部署了用于短期建筑能源预测的推荐系统的扩展应用。最后,将基于卡尔曼滤波器的数据融合技术结合到建筑物推荐系统中,以进行在线能量预测。数据融合使模型校准能够实时更新状态估计,从而滤除噪声并提供更准确的能量预测。该框架由两个模块组成:离线模型推荐模块和在线模型校准模块。具体而言,离线模型推荐模块包括6种广泛使用的数据驱动的仿真模型,这些模型由元学习推荐系统进行排名,用于给定建筑场景下的离线能源建模。仅需要一组可选的建筑物物理和操作特征即可完成推荐任务。在线校准模块有效地解决了系统不确定性,其中基于系统识别和卡尔曼滤波方法对离线模型进行数据融合。所开发的数据驱动的建模框架已在各种类型的建筑物上得到验证,并且实验结果证明了在准确性和计算效率方面对建筑物能源预测的预期性能。该框架可以轻松实现到建筑能源模型预测控制(MPC),需求响应(DR)分析和实时运营决策支持系统中。

著录项

  • 作者

    Cui, Can.;

  • 作者单位

    Arizona State University.;

  • 授予单位 Arizona State University.;
  • 学科 Civil engineering.;Energy.;Industrial engineering.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 164 p.
  • 总页数 164
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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