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Net-zero Building Cluster Simulations and On-line Energy Forecasting for Adaptive and Real-Time Control and Decisions.

机译:零净建筑集群模拟和在线能量预测,用于自适应和实时控制与决策。

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摘要

Buildings consume about 41.1% of primary energy and 74% of the electricity in the U.S. Moreover, it is estimated by the National Energy Technology Laboratory that more than 1/4 of the 713 GW of U.S. electricity demand in 2010 could be dispatchable if only buildings could respond to that dispatch through advanced building energy control and operation strategies and smart grid infrastructure. In this study, it is envisioned that neighboring buildings will have the tendency to form a cluster, an open cyber-physical system to exploit the economic opportunities provided by a smart grid, distributed power generation, and storage devices. Through optimized demand management, these building clusters will then reduce overall primary energy consumption and peak time electricity consumption, and be more resilient to power disruptions. Therefore, this project seeks to develop a Net-zero building cluster simulation testbed and high fidelity energy forecasting models for adaptive and real-time control and decision making strategy development that can be used in a Net-zero building cluster.;The following research activities are summarized in this thesis: 1) Development of a building cluster emulator for building cluster control and operation strategy assessment. 2) Development of a novel building energy forecasting methodology using active system identification and data fusion techniques. In this methodology, a systematic approach for building energy system characteristic evaluation, system excitation and model adaptation is included. The developed methodology is compared with other literature-reported building energy forecasting methods; 3) Development of the high fidelity on-line building cluster energy forecasting models, which includes energy forecasting models for buildings, PV panels, batteries and ice tank thermal storage systems 4) Small scale real building validation study to verify the performance of the developed building energy forecasting methodology. The outcomes of this thesis can be used for building cluster energy forecasting model development and model based control and operation optimization. The thesis concludes with a summary of the key outcomes of this research, as well as a list of recommendations for future work.
机译:在美国,建筑物消耗约41.1%的一次能源和74%的电力。此外,据美国国家能源技术实验室估计,如果仅建筑物,则2010年美国713 GW电力需求中的1/4以上可以分配。可以通过先进的建筑能源控制和运营策略以及智能电网基础设施来响应该调度。在这项研究中,可以预见,相邻建筑物将倾向于形成集群,这是一个开放的网络物理系统,可以利用智能电网,分布式发电和存储设备提供的经济机会。通过优化的需求管理,这些建筑群将减少总体一次能源消耗和高峰时段的电力消耗,并能更有效地应对电力中断。因此,本项目旨在开发可用于零净建筑群的自适应零实时控制和决策策略开发的零净建筑群模拟测试台和高保真度能源预测模型。本文的主要工作有以下几方面:1)开发用于建筑群控制和运行策略评估的建筑群仿真器。 2)利用主动系统识别和数据融合技术开发一种新颖的建筑能耗预测方法。在这种方法中,包括了一种用于建筑能源系统特性评估,系统激励和模型自适应的系统方法。将开发的方法与其他文献报告的建筑能耗预测方法进行比较; 3)开发高保真在线建筑群能量预测模型,其中包括建筑物,光伏板,电池和冰柜蓄热系统的能量预测模型4)小规模真实建筑物验证研究,以验证已开发建筑物的性能能源预测方法。本文的成果可用于建筑群能源预测模型的开发以及基于模型的控制和运行优化。本文最后总结了这项研究的主要成果,并提出了对未来工作的建议清单。

著录项

  • 作者

    Li, Xiwang.;

  • 作者单位

    Drexel University.;

  • 授予单位 Drexel University.;
  • 学科 Civil engineering.;Engineering.;Energy.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 295 p.
  • 总页数 295
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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