Development of a Holistic Data-Driven Detection and Diagnosis Approach for Operational Faults in Public Buildings

Ashraf Alghanmi, A. Yunusa‐Kaltungo, R. Edwards
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Abstract

The data-driven approach prioritises operational data and does not require in-depth knowledge of system background; nevertheless, it requires considerable amounts of data. Obtaining faulty building data is a significant challenge for researchers. As a result, employing simulated data can be beneficial in data-driven faults detection and diagnosis (FDD) analysis because it is inexpensive and can run multiple sorts of faults with varying severities and time periods. The predominant implementation of FDD techniques within the building sector is done at the system level. However, as useful as system-level analysis is, typical buildings are comprised of multiple systems with their peculiar characteristics. Also, individualised system level-based analysis makes it challenging and sometimes impossible to visualise system-to-system interactions. However, there is a glaring underrepresentation of literatures that explore the development of whole building models that diagnose faults over the entire building energy performance sphere. Therefore, this paper presents a work to detect and diagnose building systems (HVAC, lighting, exhaust fan) faults in whole building energy performance within hot climate areas, using energy consumption and weather data. The detection process on the main building meter was conducted using LSTM-Autoencoders, and different multi-class classification methods were compared for the diagnosis phase. Moreover, feature extraction approaches were included in the comparison to quantify their performance in improving the diagnosis.
公共建筑运行故障整体数据驱动检测与诊断方法的开发
数据驱动的方法优先考虑操作数据,不需要深入了解系统背景;然而,它需要大量的数据。获取错误的建筑数据是研究人员面临的重大挑战。因此,在数据驱动的故障检测和诊断(FDD)分析中使用模拟数据是有益的,因为它成本低廉,并且可以运行不同严重程度和时间段的多种故障。FDD技术在建筑领域的主要实施是在系统级别完成的。然而,与系统级分析一样有用的是,典型的建筑物是由具有其独特特征的多个系统组成的。此外,个性化的基于系统级别的分析使得可视化系统到系统的交互具有挑战性,有时甚至是不可能的。然而,有一个明显的代表性不足的文献,探索整个建筑模型的发展,诊断故障在整个建筑能源性能领域。因此,本文提出了一项利用能耗和天气数据检测和诊断炎热气候地区整个建筑能源性能中的建筑系统(暖通空调、照明、排气扇)故障的工作。采用LSTM-Autoencoders对主建筑仪表进行检测,并对诊断阶段不同的多类分类方法进行比较。此外,特征提取方法被纳入比较,以量化其在提高诊断方面的表现。
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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