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Model-based Fault Detection and Diagnosis of HVAC systems using Support Vector Machine method

机译:支持向量机方法的HVAC系统基于模型的故障检测与诊断

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Preventive maintenance plays a very important role in the modern Heating, Ventilation and Air Conditioning (HVAC) systems for guaranteeing the thermal comfort, energy saving and reliability. Its key is a cost-effective Fault Detection and Diagnosis (FDD) method. To achieve this goal, this paper proposes a new method by combining the model-based FDD method and the Support Vector Machine (SVM) method. A lumped-parameter model of a single zone HVAC system is developed first, and then the characteristics of three major faults, including the recirculation damper stuck, cooling coil fouling/block and supply fan speed decreasing, are investigated by computer simulation. It is found that the supply air temperature, mixed air temperature, outlet water temperature and control signal are sensitive to the faults and can be selected as the fault indicators. Based on the variations of the system states under the normal and faulty conditions of different degrees, the faults can be detected efficiently by using the residual analysis method. Furthermore, a multi-layer SVM classifier is developed, and the diagnosis results show that this classifier is effective with high accuracy. As a result, the presented Model-Based Fault Detection and Diagnosis (MBFDD) method can help to maintain the health of the HVAC systems, reduce energy consumption and maintenance cost.
机译:预防性维护在现代供暖,通风和空调(HVAC)系统中起着非常重要的作用,以确保热舒适性,节能和可靠性。其关键是具有成本效益的故障检测与诊断(FDD)方法。为了实现这一目标,本文提出了一种基于模型的FDD方法和支持向量机(SVM)方法相结合的新方法。首先建立了单区域暖通空调系统的集总参数模型,然后通过计算机仿真研究了三个主要故障的特征,包括再循环风门卡死,冷却盘管结垢/阻塞和送风机速度降低。发现送风温度,混合空气温度,出水温度和控制信号对故障敏感,可以选择作为故障指标。根据系统状态在不同程度的正常和故障条件下的变化,可以使用残差分析方法有效地检测故障。此外,开发了一种多层SVM分类器,诊断结果表明该分类器具有很高的准确性。结果,所提出的基于模型的故障检测与诊断(MBFDD)方法可以帮助维持HVAC系统的健康状态,降低能耗和维护成本。

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