A whole-building data-driven fault detection and diagnosis approach for public buildings in hot climate regions

Q1 Engineering
Ashraf Alghanmi , Akilu Yunusa-Kaltungo
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引用次数: 0

Abstract

Fault detection and diagnosis (FDD) approaches comprise three main pillars: model-based, knowledge-based, and data-driven strategies. Data-driven approaches prioritise operational data and do not necessitate in-depth understanding of the system's background; yet, significant amounts of data is required, which often poses challenges to researchers. Since simulated data is inexpensive and can run numerous faults types with varying severities and time periods, it has been used in data-driven FDD analysis. However, the majority of FDD approaches are implemented at the system level of buildings. However, most buildings have numerous systems with distinct features. Furthermore, using individualised system-level analysis makes it difficult to see system-to-system relationships. Currently, there is a significant underrepresentation of research that investigate the applications of FDD models under whole-building scenarios, so as to identify a wider range of energy consumption related faults in buildings. Furthermore, since data-driven approaches significantly depend on the quantities of training data, it becomes challenging to diagnose faults that have limited features. As a result, this study diagnoses numerous building systems faults, including single and simultaneous faults with limited features. This is implemented within the context of the whole-building energy performance of religious buildings in hot climatic areas, employing data-driven FDD methodologies. Various multi-class classification approaches were investigated to classify both the normal condition and faulty classes. Furthermore, feature extraction methodologies were compared to quantify their potential for improving the diagnosis. In addition to the classification evaluation metrics, one-way ANOVA and Tukey-Kramer tests were implemented to examine the significance of the reported performance differences. RF classifier obtained highest classification accuracy during validation and testing with about 90%, indicating a promising performance in whole-building faults analysis. The adoption of feature extraction techniques did not improve classification performance, thereby emphasising that some classifiers may perform better with high-dimensional datasets.

Abstract Image

一种基于整栋建筑数据驱动的高温地区公共建筑故障检测与诊断方法
故障检测与诊断(FDD)方法包括三大支柱:基于模型的策略、基于知识的策略和基于数据的策略。数据驱动方法优先考虑运行数据,不需要深入了解系统背景;但需要大量数据,这往往给研究人员带来挑战。由于模拟数据成本低廉,且可运行不同严重程度和时间段的多种故障类型,因此已被用于数据驱动的 FDD 分析。然而,大多数 FDD 方法都是在建筑物的系统层面实施的。然而,大多数楼宇都有许多各具特色的系统。此外,使用个性化的系统级分析很难看到系统与系统之间的关系。目前,对整个建筑场景下的 FDD 模型应用进行研究,以识别建筑中更广泛的能耗相关故障的研究明显不足。此外,由于数据驱动方法在很大程度上依赖于训练数据的数量,因此对特征有限的故障进行诊断具有挑战性。因此,本研究诊断了大量楼宇系统故障,包括特征有限的单个和同时故障。本研究采用数据驱动的 FDD 方法,对炎热气候地区宗教建筑的整栋建筑能源性能进行诊断。研究了各种多类分类方法,以对正常状态和故障类别进行分类。此外,还对特征提取方法进行了比较,以量化其改进诊断的潜力。除了分类评估指标外,还实施了单向方差分析和 Tukey-Kramer 检验,以检验所报告的性能差异的显著性。在验证和测试过程中,射频分类器获得了最高的分类准确率,约为 90%,表明其在整个建筑物故障分析中具有良好的性能。采用特征提取技术并没有提高分类性能,这说明某些分类器在处理高维数据集时可能会有更好的表现。
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来源期刊
Energy and Built Environment
Energy and Built Environment Engineering-Building and Construction
CiteScore
15.90
自引率
0.00%
发文量
104
审稿时长
49 days
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