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An Online Data-Driven Fault Diagnosis Method for Air Handling Units by Rule and Convolutional Neural Networks

机译:规则和卷积神经网络的空气处理单元的在线数据驱动故障诊断方法

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摘要

The stable operation of air handling units (AHU) is critical to ensure high efficiency and to extend the lifetime of the heating, ventilation, and air conditioning (HVAC) systems of buildings. In this paper, an online data-driven diagnosis method for AHU in an HVAC system is proposed and elaborated. The rule-based method can roughly detect the sensor condition by setting threshold values according to prior experience. Then, an efficient feature selection method using 1D convolutional neural networks (CNNs) is proposed for fault diagnosis of AHU in HVAC systems according to the system’s historical data obtained from the building management system. The new framework combines the rule-based method and CNNs-based method (RACNN) for sensor fault and complicated fault. The fault type of AHU can be accurately identified via the offline test results with an accuracy of 99.15% and fast online detection within 2 min. In the lab, the proposed RACNN method was validated on a real AHU system. The experimental results show that the proposed RACNN improves the performance of fault diagnosis.
机译:空气处理单元(AHU)的稳定运行至关重要,以确保高效率,并延长建筑物的加热,通风和空调(HVAC)系统的寿命。本文提出了HVAC系统中AHU的在线数据驱动诊断方法和阐述。基于规则的方法可以通过根据现有经验设置阈值来大致粗略地检测传感器状态。然后,提出了一种使用1D卷积神经网络(CNNS)的有效特征选择方法,用于根据系统的历史系统在HVAC系统中的故障诊断,根据系统的历史数据从建筑物管理系统获得的历史数据。新框架将基于规则的方法和基于CNNS的方法(RACNN)结合了传感器故障和复杂故障。可以通过离线测试结果准确地识别AHU的故障类型,精度为99.15%,在2分钟内快速在线检测。在实验室中,建议的racnn方法在真正的ahu系统上验证。实验结果表明,拟议的racnn提高了故障诊断的性能。

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