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Data-Driven Methodology for Energy and Peak Load Reduction of Residential HVAC Systems

机译:数据驱动方法用于住宅HVAC系统的能量和峰值负荷减少

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Residential buildings in the United States are responsible for the consumption of approximately 38% of electricity, and for much of the fluctuations in the power demands on the electric grid, particularly in hot climates. Residential Heating, Ventilation, and Air Conditioning (HVAC) systems are one of the largest electricity users of homes in these regions. "Smart" technologies, including electric grid-connected devices and home energy monitoring systems are increasingly available and installed in buildings, enabling new, data-driven methodologies for the operation of smarter, more sustainable building systems. This research investigates the use of residential energy use data and smart connected thermostat data to continuously monitor the health and performance of residential HVAC systems. Using field-collected HVAC energy consumption and performance data to develop a process-history based model, the results of this research suggest that the use of this methodology can save up to 6% of annual energy use of residential buildings.
机译:美国的住宅建筑负责消费大约38%的电力,并且在电网上的电力需求中的大部分波动,特别是在热气氛中。住宅供热,通风和空调(HVAC)系统是这些地区最大的电力用户之一。 “智能”技术,包括电网连接的设备和家庭能源监控系统越来越多地可用并安装在建筑物中,实现新的数据驱动的方法,用于操作更智能,更可持续的建筑系统。本研究调查了使用数据和智能连接的温控器数据的使用,连续监测住宅HVAC系统的健康和性能。使用现场收集的HVAC能量消耗和性能数据来开发基于过程历史的模型,该研究的结果表明,使用这种方法可以节省高达6%的年度能源建筑物的能源。

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