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Fault, detection and diagnosis for building cooling system with a tree-structured learning method

机译:基于树型学习方法的建筑冷却系统故障,检测与诊断

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摘要

In order to save energy and improve the performance of building environment regulation, there is an increasing need for fault detection and diagnosis (FDD). This paper investigates the effectiveness of tree-structured learning method for FDD of building cooling system. Researchers have been tackling building FDD task with a wide variety of techniques, such as analytical model-based, signal-based and knowledge-based methods. Recently data-driven method has shown its advantage in dealing with complex systems with random penetrations. Existing work on data-driven FDD merely formulates the task as a pure fault type classification problem, whereas fault severity levels and their inter-dependence have long been ignored. We propose a novel data-driven strategy that adopts structured labeling to include the dependence information and describe the severity levels in a large margin learning framework. A Tree-structured Fault Dependence Kernel (TFDK) method is derived and a corresponding on-line learning algorithm is developed for streaming data. As an improvement of traditional classification methods (e.g. SVM), TFDK encodes tree-structured fault dependence in its feature mapping, and takes regularized misclassification cost as learning objective. Following the ASHRAE Research Project 1043 (RP-1043), the strategy is applied to the FDD of a 90-ton centrifugal water-cooled chiller. Experimental results show that compared to previous data-driven methods, TFDK can greatly improve the FDD performance as well as recognize the fault severity levels with high accuracy. (C) 2016 Elsevier B.V. All rights reserved.
机译:为了节省能源并改善建筑环境调节的性能,对故障检测和诊断(FDD)的需求日益增长。本文研究了树形学习方法对建筑制冷系统FDD的有效性。研究人员一直在使用多种技术来构建FDD任务,例如基于分析模型,基于信号和基于知识的方法。最近,数据驱动方法已显示出其在处理具有随机渗透的复杂系统中的优势。数据驱动的FDD的现有工作仅将任务表述为纯故障类型分类问题,而故障严重性级别及其相互依赖性长期以来一直被忽略。我们提出了一种新的数据驱动策略,该策略采用结构化标签以包括依赖项信息并在大幅度学习框架中描述严重性级别。推导了树型故障相关核(TFDK)方法,并开发了一种相应的在线学习算法来处理流数据。作为对传统分类方法(例如SVM)的改进,TFDK在其特征映射中对树状结构的故障相关性进行编码,并以正规化的误分类成本为学习目标。继ASHRAE研究项目1043(RP-1043)之后,该策略被应用于90吨离心水冷式冷却器的FDD。实验结果表明,与以前的数据驱动方法相比,TFDK可以大大提高FDD性能,并能以较高的准确度识别故障严重程度。 (C)2016 Elsevier B.V.保留所有权利。

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