WEI WENTIAN, LI ZHENGFEI, WANG YUZHOU, et al. Boosting-based Refrigerant Charge Fault Diagnosis Integration Model of Variable Refrigerant Flow System. [J]. Journal of refrigeration, 2020, 41(2).
WEI WENTIAN, LI ZHENGFEI, WANG YUZHOU, et al. Boosting-based Refrigerant Charge Fault Diagnosis Integration Model of Variable Refrigerant Flow System. [J]. Journal of refrigeration, 2020, 41(2). DOI: 10.3969/j.issn.0253-4339.2020.02.070.
Variable refrigerant flow (VRF) air-conditioning systems are widely used in various public buildings. If a fault occurs
it will result in reducing comfort and increasing energy consumption. The refrigerant charging level is an important parameter affecting the efficient operation of the air-conditioning system. In this paper
a fault diagnosis model based on Boosting integrated algorithm is proposed by taking refrigerant charge fault as the research object. Five basic classifiers
such as logistic regression
decision tree
random forest
support vector machine and BP neural network
are integrated. Chi-square test was used for feature selection
and the diagnostic model was established with experimental data for cooling and heating modes. The results show that the Boosting-based integrated model can efficiently detect the fault of VRF refrigerant charge
and the accuracy rate of the model is up to 96.8%. Compared with the traditional fault detection method
the proposed model greatly improves the response speed
accuracy and practicability of the diagnostic model.