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Fault diagnosis method for building VRF system based on convolutional neural network: Considering system defrosting process and sensor fault coupling

机译:基于卷积神经网络构建VRF系统的故障诊断方法:考虑系统除霜过程和传感器故障耦合

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摘要

Establishing fault diagnosis models for HVAC systems to reduce building energy waste and restore buildings to their intended levels of performance is very necessary. While, it is a challenging task to establish a multi-fault decoupling diagnostic model for a variable refrigerant flow system, especially considering the system?s unsteady defrosting process and sensor faults. In view of this, this study carried out 27 sets of experiments and obtained 58850 fault and 10889 normal operational data samples to analyze the impact of the unsteady defrosting process and developed a multi-fault decoupling fault diagnostic model considering defrosting and sensor fault based on convolutional neural network. The confusion matrix, geometric mean accuracy (GMA), false alarm rate (FAR) and other indicators are used to comprehensively evaluate model diagnosis results. The results show that the proposed convolutional neural network (CNN) model has excellent performance in multifault coupling diagnosis considering defrosting and sensor biases. The recognition accuracy of the CNN model for each fault are all higher than 97.5%. The GMA of the CNN model is as high as 98.46%, which is higher than 20.04%, 11.565% and 6.36% compared to the decision model, the support vector machine model and the multilayer perceptron model. In addition, the FAR of CNN model is only 0.58%, which is 8.93%, 4.05% and 1.62% lower than the other three models.
机译:为HVAC系统建立故障诊断模型,以减少建筑能量浪费和恢复建筑物的预期性能水平是非常必要的。虽然,建立可变制冷剂流量系统的多故障解耦诊断模型是一个具有挑战性的任务,特别是考虑到系统的不稳定除霜过程和传感器故障。鉴于此,本研究进行了27套实验,并获得了58850个故障和10889个正常运行数据样本,以分析不稳定除霜过程的影响,并在基于卷积的情况下考虑除霜和传感器故障的多故障解耦故障诊断模型神经网络。混淆矩阵,几何平均精度(GMA),误报率(远)和其他指示器用于全面评估模型诊断结果。结果表明,考虑除霜和传感器偏差,所提出的卷积神经网络(CNN)模型具有出色的多行耦合诊断性能。每个故障的CNN模型的识别准确性均高于97.5%。与决策模型相比,CNN模型的GMA高达98.46%,高于20.04%,11.565%和6.36%,支持向量机模型和多层的Perceptron模型。此外,CNN模型的远期仅为0.58%,比其他三种型号低8.93%,4.05%和1.62%。

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