Review of Fault Detection and Diagnosis Studies on Residential HVAC Systems

K. Ejenakevwe, Li Song
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引用次数: 1

Abstract

Heating, Ventilation and Air Conditioning (HVAC) control and energy usage management has been identified as a promising way of improving building energy efficiency and thus contributing to solving the energy challenges of the world. However, a critical aspect of reducing HVAC energy usage is fault detection and diagnosis (FDD). Several studies have been conducted on FDD in HVAC systems with less focus on residential HVAC systems. One reason identified for this reduced attention with residential HVAC is that state-of-the-art FDD tools greatly depend on data available through the building automation system (BAS), and this detailed data is not typically available in the residential sector. Meanwhile, using sensors for developing FDD-enabled HVAC systems is not cost-efficient due to the cost associated with required sensors compared to the energy savings realized, thus making residential FDD less attractive. However, studies have shown that faults cause an additional 20.7TWh of energy consumption from residential HVACs across the US, annually. Thus, this paper gives a critical review of various studies that have been done on FDD in residential HVAC systems and proposes a data analytical approach, which if actualized, could reduce the sensor requirements for FDD in residential HVAC, thus addressing the cost barrier.
住宅暖通空调系统故障检测与诊断研究综述
供暖、通风和空调(HVAC)控制和能源使用管理已被确定为提高建筑能源效率的一种有前途的方式,从而有助于解决世界能源挑战。然而,减少暖通空调能耗的一个关键方面是故障检测和诊断(FDD)。在暖通空调系统中进行了一些关于FDD的研究,但较少关注住宅暖通空调系统。住宅暖通空调关注度降低的一个原因是,最先进的FDD工具在很大程度上依赖于通过建筑自动化系统(BAS)提供的数据,而这些详细的数据通常在住宅领域是不可用的。与此同时,使用传感器开发支持FDD的HVAC系统并不符合成本效益,因为与实现的节能相比,所需传感器的成本相关,从而降低了住宅FDD的吸引力。然而,研究表明,故障导致美国住宅hvac每年额外消耗20.7太瓦时的能源。因此,本文对住宅暖通空调系统中FDD的各种研究进行了批判性回顾,并提出了一种数据分析方法,如果实现,可以减少住宅暖通空调中FDD的传感器需求,从而解决成本障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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