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HVAC Fault Diagnosis System Using Rough Set Theory and Support Vector Machine

机译:HVAC故障诊断系统使用粗糙集理论和支持向量机

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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. The fault diagnosis on HVAC system is a difficult problem due to the complex structure of the HVAC and the presence of multi-excite sources. As the HVAC system fault information has inaccurate and uncertainty characteristic, A new kind of fault diagnosis system based on Rough Set Theory (RST) and Support Vector Machine (SVM) is presented in this paper. The hybrid model is integrated the advantages of RST effectively dealing with the uncertainty information and SVM’s greater generalization performance. The HVAC diagnosis experiment demonstrated that the solution can reduce the cost and raise the efficiency of diagnosis, and verified the feasibility of engineering application. As a result, the presented hybrid fault diagnosis method can help to maintain the health of the HVAC systems, reduce energy consumption and maintenance cost.
机译:预防性维护在现代加热,通风和空调(HVAC)系统中起着非常重要的作用,以保证热舒适,节能和可靠性。由于HVAC的复杂结构和多激发源的存在,HVAC系统的故障诊断是难题。由于HVAC系统故障信息具有不准确和不确定的特性,本文提出了一种基于粗糙集理论(RST)和支持向量机(SVM)的新型故障诊断系统。混合模型集成了RST有效处理不确定性信息和SVM更大的泛化性能的优点。 HVAC诊断实验表明,该解决方案可以降低成本并提高诊断效率,并验证了工程应用的可行性。结果,所呈现的混合性故障诊断方法可以帮助保持HVAC系统的健康,降低能耗和维护成本。

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