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Fault diagnosis of HVAC: Air delivery and terminal systems

机译:HVAC的故障诊断:送风和终端系统

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Supply/return fans and Variable Air Volume (VAV) boxes are key components of Heating Ventilation and Air Conditioning (HVAC) systems. Fans deliver conditioned air to rooms and VAV boxes control airflow rates to satisfy human thermal comfort and ventilation requirements. Faults in these components and their sensors may lead to high energy consumption and poor thermal comfort. Identifying failure modes and their severities is thus critical in guiding maintenance crew to know what, where and how severe the faults are. Diagnosing faults of components and sensors is difficult because (1) component faults and sensor faults may have similar effects and thus hard to distinguish; (2) capturing both failure modes and fault severities may generate many system states, leading to high computational requirements; and (3) capturing variable loads in models leads to additional decision logic complexity. A component fault may cause multiple measured variables to change. A sensor fault only causes one variable to change, leading to violations of relationship among variables. Thus, the two kinds of faults are distinguished. To reduce computational requirements, failure modes are identified first and fault severities are then estimated based on the identified failure mode. This also has the beneficial effect improving the condition number of the fault severity estimation problem. To estimate states while tracking variable loads, a new online learning algorithm for estimating the hidden Markov model parameters is developed. Experimental results show that failure modes and fault severities are identified with high accuracy as quantified by the F-measure that integrates the precision and recall.
机译:送风/回风风扇和可变风量(VAV)盒是供暖通风和空调(HVAC)系统的关键组件。风扇将经过调节的空气输送到房间,VAV箱控制气流速率,以满足人体对热舒适性和通风的要求。这些组件及其传感器的故障可能导致高能耗和差的热舒适性。因此,确定故障模式及其严重性对于指导维护人员了解故障的严重程度,位置和严重程度至关重要。部件和传感器的故障诊断很困难,因为(1)部件故障和传感器故障可能具有相似的影响,因此难以区分; (2)捕获故障模式和故障严重性可能会生成许多系统状态,从而导致较高的计算要求; (3)在模型中捕获可变负载会导致决策逻辑更加复杂。组件故障可能导致多个测量变量发生变化。传感器故障只会导致一个变量发生变化,从而导致变量之间的关系冲突。因此,区分了两种故障。为了减少计算需求,首先确定故障模式,然后根据确定的故障模式估计故障严重性。这也具有改善故障严重性估计问题的条件数的有益效果。为了在跟踪可变负载的同时估计状态,开发了一种新的在线学习算法,用于估计隐马尔可夫模型参数。实验结果表明,通过结合精度和召回率的F度量,可以高精度地识别故障模式和故障严重性。

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