Study on Chiller Fault Detection and Diagnosis Method Based on KNN Algorithm and ANOVA

Q3 Engineering
Le Minh Nhut, L. H. Quan
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引用次数: 0

Abstract

— As the economy, population, and industry have grown in recent years, more and more water chiller systems have been installed in many buildings throughout the world. However, faults can appear during operation, leading to a reduction in the life of a system and increased energy consumption. As a result, it is necessary to identify and overcome these faults. This paper proposes a chiller fault detection and diagnosis (FDD) method based on the K-nearest neighbors (KNN) algorithm and an analysis of variance (ANOVA) to reduce the number of sensors in a real system and to improve the performance of chiller FDD. A Python program based on the KNN and ANOVA models was developed to simulate and validate the chiller fault detection and diagnosis. The results showed that the correct rates (CRs) of stages 1 and 2 in Case 1 were 99.53% and 99.60%, respectively, whereas the CRs of stages 1 and 2 in Case 2 were 99.08% and 99.48%, respectively. The highest performance of the proposed chiller FDD method was achieved when compared to the CBA method, the EBD-DBN method, and the GDW-SVDD method for Case 2 with slight-severity levels 1 and 2. Furthermore, this method was validated using real data under normal operating conditions and the condenser fouling fault of a centrifugal water-cooled chiller from the Saigon Center building in Vietnam. The results showed that the overall performance of chiller FDD was 97.61%, and the hit rate of the condenser fouling fault was 93.46%. This demonstrated that chiller FDD based on KNN and ANOVA has high reliability and can be used in industry.
基于KNN算法和方差分析的冷水机组故障检测与诊断方法研究
近年来,随着经济、人口和工业的增长,越来越多的冷水机组系统被安装在世界各地的许多建筑物中。然而,在运行过程中可能出现故障,导致系统寿命缩短,能耗增加。因此,有必要识别和克服这些缺陷。为了减少实际系统中传感器的数量,提高制冷机故障检测与诊断的性能,提出了一种基于k近邻算法和方差分析的制冷机故障检测与诊断方法。开发了基于KNN和方差分析模型的Python程序,对冷水机组故障检测和诊断进行了仿真验证。结果显示,病例1的1期和2期诊断正确率分别为99.53%和99.60%,而病例2的1期和2期诊断正确率分别为99.08%和99.48%。与CBA方法、EBD-DBN方法和GDW-SVDD方法相比,在轻度严重等级为1和2的情况2中,所提出的冷水机FDD方法的性能最高。并以越南西贡中心的一台离心式水冷冷水机组的冷凝器结垢故障为例,在正常运行条件下对该方法进行了验证。结果表明,机组FDD整体性能为97.61%,冷凝器结垢故障命中率为93.46%。这表明基于KNN和方差分析的冷水机FDD具有较高的可靠性,可以在工业中应用。
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来源期刊
CiteScore
2.80
自引率
0.00%
发文量
25
期刊介绍: International Journal of Mechanical Engineering and Robotics Research. IJMERR is a scholarly peer-reviewed international scientific journal published bimonthly, focusing on theories, systems, methods, algorithms and applications in mechanical engineering and robotics. It provides a high profile, leading edge forum for academic researchers, industrial professionals, engineers, consultants, managers, educators and policy makers working in the field to contribute and disseminate innovative new work on Mechanical Engineering and Robotics Research.
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