Early warning signals of failures in building management systems

Q3 Engineering
J. J. Mesa-Jiménez, L. Stokes, Qingping Yang, V. Livina
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引用次数: 2

Abstract

In the context of sensor data generated by Building Management Systems (BMS), early warning signals are still an unexplored topic. The early detection of anomalies can help preventing malfunctions of key parts of a heating, cooling and air conditioning (HVAC) system that may lead to a range of BMS problems, from important energy waste to fatal errors in the worst case. We analyse early warning signals in BMS sensor data for early failure detection. In this paper, the studied failure is a malfunction of one specific Air Handling Unit (AHU) control system that causes temperature spikes of up to 30 degrees Celsius due to overreaction of the heating and cooling valves in response to an anomalous temperature change caused by the pre-heat coil in winter period in a specific area of a manufacturing facility. For such purpose, variance, lag-1 autocorrelation function (ACF1), power spectrum (PS) and variational autoencoder (VAE) techniques are applied to both univariate and multivariate scenarios. The univariate scenario considers the application of these techniques to the control variable only (the one that displays the failure), whereas the multivariate analysis considers the variables affecting the control variable for the same purpose. Results show that anomalies can be detected up to 32 hours prior to failure, which gives sufficient time to BMS engineers to prevent a failure and therefore, an proactive approach to BMS failures is adopted instead of a reactive one.
楼宇管理系统故障的早期预警信号
在楼宇管理系统(BMS)产生的传感器数据的背景下,早期预警信号仍然是一个未被探索的话题。异常的早期检测可以帮助防止加热、冷却和空调(HVAC)系统的关键部件出现故障,这些故障可能导致一系列BMS问题,从重要的能源浪费到最坏情况下的致命错误。我们分析了BMS传感器数据中的预警信号,用于早期故障检测。在本文中,所研究的故障是一个特定的空气处理单元(AHU)控制系统的故障,由于加热和冷却阀的过度反应,导致温度峰值高达30摄氏度,以响应由预热盘管引起的异常温度变化,在冬季期间,在制造设施的特定区域。为此,方差、lag-1自相关函数(ACF1)、功率谱(PS)和变分自编码器(VAE)技术被应用于单变量和多变量场景。单变量场景只考虑将这些技术应用于控制变量(显示故障的那个),而多变量分析则考虑出于相同目的影响控制变量的变量。结果表明,异常可以在故障发生前32小时检测到,这为BMS工程师提供了足够的时间来防止故障,因此,采用主动方法来处理BMS故障,而不是被动方法。
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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来源期刊
International Journal of Metrology and Quality Engineering
International Journal of Metrology and Quality Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
1.70
自引率
0.00%
发文量
8
审稿时长
8 weeks
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