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Toward Failure Mode and Effect Analysis for Heating, Ventilation and Air-Conditioning

机译:用于加热,通风和空调的故障模式和效果分析

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Fault Detection, Diagnostics and Prognostics (FDD&P) is attracting a lot of attention from building operators and researchers because it can help greatly improve the performance of building operations by reducing energy consumption for heating, ventilation and air-conditioning (HVAC) while improving occupant comfort at the same time. However, FDD&P for building operations remains with many challenges due to special operation environments of HVAC systems. These challenges include "tolerance or ignorance" of failures in long-haul operations, lack of operation regulations, and even lack of documents for HVAC failure mode and effect analysis (FMEA), which is a systematic method of identifying and preventing system, product and process problems. To address some of these challenges, we propose to develop a FMEA for HVAC by exploring work orders generated by building energy management systems (BEMS) using a data mining approach. With the developed HVAC FMEA, it is possible to conduct pre-FDD&P procedures to improve HVAC maintenance and to select the high impact failures in order to acquire the operation data for selected failures and develop machine learning-based predictive models to predict a failure before it occurs and isolate the root component of a given failure. In this paper we report some preliminary results in developing an HVAC FMEA tool from a large number of work orders obtained from a BEMS in routine operations. The developed HVAC FMEA will be used as a guidance tool for data gathering and developing data-driven models for building HVAC FDD&P.
机译:故障检测,诊断和预测(FDD&P)吸引了建筑运营商和研究人员的大量关注,因为它可以通过减少加热,通风和空调(HVAC)的能耗来极大地提高建筑运营的性能,同时改善乘客舒适同时。然而,由于HVAC系统的特殊操作环境,FDD&P仍然存在许多挑战。这些挑战包括长途行动中失败的“耐受性或无知”,缺乏运营规定,甚至缺乏用于HVAC失效模式和效果分析(FMEA)的文件,这是一种识别和预防系统,产品和系统的系统方法过程问题。为了解决一些这些挑战,我们建议通过使用数据挖掘方法探索通过建立能源管理系统(BEMS)生成的工作订单来开发HVAC的FMEA。通过开发的HVAC FMEA,可以进行FDD和P程序,以改善HVAC维护,并选择高冲击失败,以便获取所选故障的操作数据,并开发基于机器学习的预测模型,以预测它之前的失败发生并隔离给定失败的根部分量。在本文中,我们报告了一些初步导致从常规操作中的BEMS获得的大量工作订单开发HVAC FMEA工具。开发的HVAC FMEA将用作数据收集的引导工具,并开发用于构建HVAC FDD&P的数据驱动模型。

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