基于内部系统动力学分析的暖通空调制冷机故障预测

K. Padmanabh, Ahmad Al-Rubaie, John Davies, Sandra Stincic, A. Aljasmi
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引用次数: 1

摘要

供暖、通风和空调(HVAC)系统的冷水机是一种复杂而昂贵的多部件设备,并非不受故障影响。在故障发生之初就预测甚至识别故障,可以减少损害的规模,减轻潜在的经济和运营损失。本文提出了一种系统的方法,用于分析来自冷水机组的多个数据流,以便在数据中检测到潜在故障时识别它们。数据流从冷水机组物联网生态系统中的传感器接收,以监控对其运行至关重要的众多过程和参数。冷水机组有内置机制,当关键传感器值超过指定限值时产生警报。这些报警的某种组合是导致冷水机故障的原因,因此,我们提出的方法需要首先使用多传感器数据融合来预测这些报警。因此,在这个物联网生态系统中,我们的预测模型有两个级别的传感器融合:传感器级别和派生警报级别。最终目标是确定“时间-时间到下一个警报”(TA)。TTA模型是利用时移传感器值建立的。由于冷水机组故障是传感器报警的功能,并且两者都是二元的,因此采用逻辑电路的特殊技术来模拟组合逻辑电路来预测冷水机组的故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Prediction in HVAC Chillers by Analysis of Internal System Dynamics
The Chiller of a Heating, Ventilation, and Air-Conditioning (HVAC) system is a complex and expensive multicomponent appliance that is not impervious to failure. Predicting, or even identifying, a fault at its inception, can reduce the scale of the damage and mitigate the potential losses to be incurred, both financial and operational. This paper presents a systematic approach for the analysis of multiple streams of data from chillers to identify potential failures as soon as they become detectable from the data. The data streams are received from sensors in the IoT ecosystem of chillers to monitor the multitude of processes and parameters that are vital to their operation. Chillers have built-in mechanisms to generate alarms when key sensor values go beyond designated limits. A certain combination of these alarms is responsible for chiller failure, therefore, our proposed method needs to first predict these alarms using multi-sensor data fusion. Thus, in this IoT ecosystem there are two levels of sensor fusion for our predictive models: at the sensor level and at the derived alarms level. The final objective is to determine “time-time-to-next-alarm” TA). The model for TTA is built using time-shifted sensor values. Since chiller failure is a function of sensor alarms, and both are binary in nature, a special technique of logistic circuits is used to mimic the combination logical circuit to predict the failure of the chiller.
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